GB2486638A - Predicting Crowd Distribution - Google Patents
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Abstract
The application relates to a crowd monitoring algorithm which calculates a future population distribution, which can be used to provide an early warning facility to alert authority of a crowd distribution becoming dangerous. A method and apparatus is provided for processing a distribution of a population 4 distributed over a region of interest 2, the region 2 being divided into cells. The method comprises measuring, at two different points in time, values of a measure of population intensity in each cell and, for a cell, determining a vector of values, each value in the vector being a function of the intensity values measured in that cell and the population intensity values measured in a different cell. A matrix is then determined using the determined vector(s) and the population intensity values measured at one of the different points in time. Using the matrix, and the value of the population intensity measured in a cell at either of the different points in time, a value for the measure of population intensity in that cell for a future time is predicted.
Description
PROCESSING DISTRIBUTIONS
FIELD OF THE INVENTION
The present invention relates to the processing of a distribution of a population.
BACKGROUND
Techniques exist for the long-term processing of distributions of large populations i.e. finite or infinite collections of items under consideration. Also, techniques exist for the analysis of the behaviour of individuals or small groups of people over short timescales (for example tracking techniques) or over long timescales (for example long-term surveillance techniques).
However, the monitoring of large groups of people over relatively short timescales tends not to be adequately provided by the aforementioned techniques.
Nevertheless, situations occur, for example at public gatherings or following major disasters, where there is a requirement for monitoring of large groups of people over relatively short timescales, for example to enable authorities to make time critical decisions about where crowd flows or densities are unsafe or threatening.
Moreover, there is a requirement for the ability to predict crowd dispersion at future times so that pre-emptive decisions may be taken by authorities, for example to ensure the safety or security of the crowd.
SUMMARY OF THE INVENTION
In a first aspect the present invention provides a method for processing a distribution of a population, the population being distributed over a region of interest, the region of interest being divided into a plurality of cells, the method comprising: measuring, at two different points in time, respective values of a measure of population intensity in each cell of a plurality of the cells; for a cell in the plurality, determining a vector of values, wherein each value in the vector is a function of the population intensity values measured in that cell at the two different points in time and the population intensity values measured in a different cell at the two different points in time; determining a matrix using the determined vector(s) of values and using the population intensity values measured at one of the two different points in time in the cells for which the vectors of values were determined; and predicting, using the determined matrix and using the value of the population intensity measured in a cell in the plurality at either of the two different points in time, a value for the measure of population intensity in that cell for a point in time different to the two different points in time.
The step of determining a matrix may be performed using the population intensity values measured at the earlier of the two different points in time in the cells for which the vectors of values were determined.
A value in a vector of values may be a flux value determined using the formula: Fl = -1-(zxin(t)-zX1n1(t)) where: FI1 is a flux value of the flux between the an ith cell and a jth cell; and Ain(t)= m(t')-in1(t) and Am1(t)= m1(t')-in1(t) where: 1n1(t) is the measured value of the measure of population intensity in the ith cell at a time t; in(t') is the measured value of the measure of population intensity in the ith cell at a time t'; m1(t) is the measured value of the measure of population intensity in the jth cell at the time t; and ni1fr) is the measured value of the measure of population intensity in the jth cell at the time t'.
The vector of flux values may be determined as: F11(t)= (Fl1, ,Fljm) where: Fl for j {1,...,m} are flux values of the flux between the ith cell and the jth cell, wherein the jth cell is a cell in the set of cells that influence the value of the measure of population intensity in the ith cell between the two different points in time.
A vector of values may be determined as: Fl1(t) where: Am1(t) = 1n1(t')-m1(t) and Ain1(t) = m1(t')-m1(t) where: 1n1(t) is the measured value of the measure of population intensity in the ith cell at a time t; 1n1(t') is the measured value of the measure of population intensity in the ith cell at a time t'; m1(t) is the measured value of the measure of population intensity in the jth cell at the time t; and in1Q') is the measured value of the measure of population intensity in the jth cell at the time t'; and i(j) is an indicator function: jenbhd(i) I o J nbhd(i) where nbhd(i) is a set of cells that influence the value of the measure of population intensity in the ith cell between the two different points in time.
The step of determining a matrix may comprise determining a matrix: PF11(t) o where PF11(t)= 1 fl;(t) m(t)!=o 1n1(t) The step of determining a matrix may comprise determining a matrix Dt as either: Dt =_J-Jp(o)®D(l)®....eD(t)] or Dt =_-i_(t)®t.D'']=_i_.D(t)®_-!-_.D' = t+1 = t+1= t+1= or 2t =_J_Q(t-n)®D(t-n+1)EBL...EPD(t)I or Dt DN1 J-.[Q(t)-D(t-fl_l)] or 1 -m+1 --or = 1 (t)® m.Dtu]= 1 *D(t)ED " Dt' = m+1 = m+1 -iii+1 = where: n is a number of prior time-steps to average over, with 0 «= n <t; m=t-T forT a threshold value such that 0«=T<t; and PF11Q) 0 where PF11(t)= 1 n1(t) m1fr)!=o The step of predicting a value for the measure of population intensity in that cell for a point in time different to the two different points in time may comprise determining: hi(t+s)= m(t). (2*w)5 where: * (t) = (Id D(t)) where Ic! is the identity matrix; and s is a number of time-steps.
The step of predicting a value for the measure of population intensity in that cell for a point in time different to the two different points in time may comprise determining: where: (p*)t =frdDt) where Id is the identity matrix; and s is a number of time-steps.
The measure of population intensity may be a number of people.
In a further aspect, the present invention provides a method of managing a population distribution for a population distributed over a plurality of cells, the method comprising: a method for processing a distribution of a population according to any of the above aspects; and performing an act based on the predicted values of the measure of population intensity.
In a further aspect, the present invention provides apparatus for processing a distribution of a population, the population being distributed over a region of interest, the region of interest being divided into a plurality of cells, the apparatus comprising a processor for performing a method according to any of the above aspects, and sensing means for measuring a value of a measure of population intensity in each of the plurality of the cells at two different points in time.
In a further aspect, the present invention provides apparatus for managing a population distribution for a population distributed over a plurality of cells, the apparatus comprising: an apparatus for processing a population distribution for a population according to the above aspect; and means for performing an act based on the predicted values of the measure of population intensity such that the actual value of the measure of population intensity at the point in time different to the two different points is different to the predicted value of the measure of population intensity.
In a further aspect, the present invention provides a program or plurality of programs arranged such that when executed by a computer system or one or more processors it/they cause the computer system or the one or more processors to operate in accordance with the method of any of claims the above aspects.
In a further aspect, the present invention provides a machine readable storage medium storing a program or at least one of the plurality of programs according to the above aspect.
BRIEF DESCRIPTION OF THE DRAWINGS
Figure 1 is a schematic illustration of an example crowd monitoring scenario; Figure 2 is a process flowchart showing certain steps of an embodiment of a crowd monitoring algorithm; Figure 3 is a schematic illustration of a cell lattice defined over an area of interest; Figure 4 is a schematic illustration of an example categorisation of the cell lattice over the area of interest at a particular time; Figure 5 is a schematic illustration of an example categorisation of the cell lattice over the area of interest at a different particular time; Figure 6 is a process flowchart showing certain steps of an embodiment of a flux vector determination process; and Figure 7 is a schematic illustration of the cells of the cell lattice at the different times.
DETAILED DESCRIPTION
Figure 1 is a schematic illustration (not to scale) of an example crowd monitoring scenario 1.
The crowd monitoring scenario comprises a crowd of people, hereinafter referred to as "the crowd 4", within an area of interest 2.
The number of individuals in the crowd 4, in this embodiment, is such that the monitoring of a particular individual within the crowd 4 is infeasible (e.g. due to the number or density of members in the crowd). This may conveniently be referred to herein as a "relatively large crowd". Thus in this embodiment, the people in the crowd 4 represent a population whose distribution is to be processed.
A sensor 6 generates data corresponding to the distribution of the crowd 4 in the area of interest 2 as described in more detail later below. In this embodiment, the sensor 6 is an infra-red sensor. The sensor 6 measures an infra-red intensity level in each of the cells in a cell lattice that covers area of interest 2, as described in more detail later below with reference to Figure 3.
This data is sent from the sensor 6 to a processor 8.
The generated data is processed by the processor 8 to determine a prediction of the distribution of the crowd 4 in the area of interest 2 at a future point in time, as described in more detail later below with reference to Figure 2.
Figure 2 is a process flowchart showing certain steps of an embodiment of a crowd monitoring algorithm performed using the sensor 6 and the processor 8.
At step s2, a grid of cells, or cell lattice, is defined over the area of interest 2.
Figure 3 is a schematic illustration (not to scale) of a cell lattice 10 defined over the area of interest 2. In this embodiment the cell lattice 10 is a square four-by-four grid of substantially equally sized cells.
At step s4, for initial time to and for each cell in the cell lattice 10, a value of an "observed cell mass" is estimated. In this embodiment, the observed cell mass of a cell is estimated from an infra-red intensity level measured in that cell by the sensor 6. The infra-red intensity level measured in a cell depends on the number of members of the crowd 4 within that cell. In this embodiment, the observed cell mass is an approximately linear function of the number of members of the crowd 4 within a cell. The value of the observed cell mass for a cell may be a value between zero (if there are no members of the crowd 4 in that cell) and one (if in that cell there is the maximum number of members of the crowd 4 that could feasibly be considered to fit in a cell). The observed cell mass may be considered to be a measure of the extent to which a particular cell is filled by members of the crowd 4.
At step s6, for to each cell of the cell lattice 10 is categorised according to the estimated observed cell mass for that cell. In this embodiment, a cell is categorised according to the risk of there being a danger to the members of the crowd 4 in that cell. In this embodiment, a cell is categorised as "low risk" (denoted hereinafter as "L") if the observed cell mass is between 0 and 0.25. A cell is categorised as "medium risk" (denoted hereinafter as "M") if the observed cell mass is between 0.25 and 0.5. A cell is categorised as "high risk" (denoted hereinafter as "H") if the observed cell mass is between 0.5 and 0.75. Also, a cell is categorised as "critical" (denoted hereinafter as "C") if the observed cell mass is greater or equal to than 0.75. Equivalently: L, 0 «= ni1(t)< 0.25 M, 0.25«=in1(t)<0.5 S1 H, 0.5«=1n1(t)<0.75 C, 0.75«=1n1(t) where: s is the category of the ith cell in the cell lattice 10; and 1n1(t) is the estimated density of the ith cell in the cell lattice 10 at time t.
In this embodiment, a cell is categorised as one of L, M, H, or C as described above. In other words, the range of possible cell masses from zero to one is partitioned into a number of discrete intervals, and the categorisation of any individual cell is then determined by which interval the cell's mass lies in. In other embodiments, a cell may be categorised depending on its state in a different way to that described for this embodiment. For example, in other embodiments the range of possible cell masses may be partitioned into a series of overlapping intervals, thereby making it possible that, at a certain time, a cell may have more than one categorisation. Also, in other embodiments a cell may be categorised depending upon some function of its state.
Figure 4 is a schematic illustration (not to scale) of an example categorisation of the cell lattice 10 over the area of interest 2 at a time t. Each cell of the cell lattice has been categorised as one of L, M, H, or C as described above.
At step s8, for a future time, i.e. a next time step t+1, and for each cell in the cell lattice 10, a value of the observed cell mass is estimated. The estimation of the observed cell mass in each cell is carried out for t+1 in the same way as that for time t, as described above at step s4.
At step sb, for t+1 each cell of the cell lattice 10 is categorised according to the observed cell mass estimated for that cell. The categorisation of each cell is carried out for t+1 in the same way as that for time t, as described above at step s6.
Figure 5 is a schematic illustration of an example categorisation of the cell lattice 10 over the area of interest 2 at time t+1. Each cell of the cell lattice has been categorised as one of L, M, H, or C as described above.
At step s12, for each cell, a "flux vector" is determined for each cell using a flux vector determination process, certain steps of which are described in more detail with reference to Figure 6. The description of steps s14 and s16 of the crowd monitoring algorithm will be described after the description of the flux vector determination process.
Figure 6 is a process flowchart showing certain steps of an embodiment of the flux vector determination process of step si 2.
The flux vector determination process will be described for a particular cell in the cell lattice 10, namely the ith cell. However, at step s12 the flux vector determination process is carried out for each cell in the cell lattice 10.
In the description of the flux vector determination process for the ith cell a further cell, namely the jth cell, is also used. The jth cell is a cell in the neighbourhood of the ith cell. The terminology "neighbourhood of the ith cell" is used to refer to a set of cells from which members of the crowd 4 may move into the ith cell between one time-step and the next, and/or a set of cells into which members of the crowd 4 may move from the ith cell between one time-step and the next.
At step s20, for the ith and jth cells in the cell lattice 10, the differences between the estimated observed cell masses at time-steps t and t+1 are determined.
For the /th cell, the observed cell mass estimates m1 (t) and m1 (t + i) for two consecutive time steps t and ti-i are known (from steps s4 and s8 respectively). Likewise, for a jth cell, the observed cell mass estimates m1(t) and m1(t+1) are known.
Using these values, the differences in the estimated observed cell masses between time-steps t and ti-i are zxmfr)= ,n(t+1)-m1(t) and -11 -Ain1(t)=m1(tH-1)-in1(t) for the ith and jth cells respectively. Ain(t) and Am1(t) are the values of the total flux in or out of the ith and jth cells respectively.
Positive flux values indicate an increase in the relevant cell's mass over the interval (i.e. a net inward flux) and negative flux values indicate a decrease in the relevant cell's mass over the interval (i.e. a net outward flux).
The movement of cell mass from the ith cell relative to the jth cell is A1n1(t)-Am,(t). This value is the change in mass of the ith cell relative to the change in mass of the jth cell. If this relative change in mass value is positive then the relative movement of mass is towards the /th cell from the jth cell.
Conversely, if this relative change in mass value is negative, the relative movement of mass is away from the ith cell towards the jth cell.
At steps s22, the combined mass of the /th and jth cells at each of the time-steps t and ti-i are determined as and M(t + i)n m(t + i)+ m1(t -i-i) respectively.
At step s24, an overall external flux for the ith and jth cell pair is determined as AAI =(m1(t+1)+m,(t+1))-(in1(t)+m1(t)). Equivalently, the overall external flux for the ith and jth cell pair may be determined as AMU =M(t+1)-M(t).
AM is equivalent to the overall gain or loss of cell mass not attributable to movement between the ith and jth cells. In this embodiment, this value is equally accounted for by each cell. In other words, in this embodiment over the interval each of the ith and jth cells have an external flux value of -1-AM...
At step s26, a net relative flux between the ith and jth cells is determined.
The following formulae are used: in1(t+1)=m1(t)+1Mf +Fl in.(t+J)=m.(t)+-AM.. +Fl 2 where Fl is the flux to the ith cell from the]th cell, Fl1 is the flux to the]th cell from the ith cell, and Fl11 = -Fly.
Thus, the net relative flux between the ith and]th cells is determined as: Fl nin1(t+1)-1n1(t)-iAiVç = 1n10 + i)-in1(t)-(m1 (t + i)+ m(t + 0)-(m1 (t)+ tn1(t)) 1 (A/n1 (t) -Am1 Q)) Also, the net relative flux between the]th and ith cells is determined as: Fl11 =2-(sin, (t)-Sin1 (t)) The relationship between the various cell masses and fluxes between the two consecutive time-steps is illustrated in Figure 7.
Figure 7 is a schematic illustration (not to scale) of the /th cell 12 and the ]th cell 14 at the time-steps t and t+1. Figure 7 illustrates the cell masses of the ith cell 12 and the]th cell 14 at the time-steps t and t+1 (i.e. the cell masses in1Q), m1(t), m1(t+1), and m1(t+1) ), a net relative flux between the ith cell 12 and the]th cell 14, (indicated in Figure 7 byFl), and an external flux from each of the ith and]th cells (each indicated by At steps s28, the total flux for the ith cell is determined as the vector: p1, (t) = (Fl1, ,Fl17) where Fl for j {1,...,m} are as described above, and the indexes] label each of the cells within the neighbourhood of the /th cell 12.
Equivalently, the total flux for the ith cell is the vector: (t) = [2-(ml (t) -Atn (t))J 2 jenbhd(i) with the index j e nbhd(i) labelling the set of cells that are within the neighbourhood of the ith cell 12. This vector describes the approximate local dynamics in the ith cell 12. The total flux for the ith cell 12, Fl(t), approximates the crowd dynamics around the ith cell 12.
Using the above described flux vector determination process, a total flux vector is determined for each cell in the cell lattice 10. The set of flux vectors together approximate the overall dynamics of the crowd 4 over the area of interest 2.
Returning now to the description of the crowd monitoring algorithm of Figure 2, at step si 4 an internal dispersion matrix for the cell lattice 10 defined over the area of interest 2 is determined by combining the total flux vectors determined at step s12 together into a single matrix. This is performed as follows.
Firstly, the total flux vectors calculated at step si 2 for the neighbourhood of each cell in cell lattice 10 are extended so that they each account for flux within the whole of area of interest 2. The extended total flux vector for the kth cell is: k (t) = [1k 1 (Atnk(t)-AJn, where the kth and /th cells are any two cells within cell lattice 10, and where IkQ) is an indicator function: fi lEflbhd(k) k � lEnbhd(k) Secondly, the extended total flux vectors for each of the cells in cell alt) lattice 10 are arranged as an n x n matrix: , where n is the number of Fi(t) cells in a row (or column) of the cell lattice 10.
This matrix describes all of the observed internal movements of cell mass between the time-steps t and t-'-l, with the (k,l)th element of the matrix describing the estimated one time-step flux between the kth and /th cells, i.e. the quantity of the current mass in the kth cell that will be gained from or lost to the /th cell by the next time-step).
-14 -The fluxes in this matrix are divided by the relevant current cell masses to determine the internal dispersion matrix D(t): PF11Q) o lnk(t)=o where ?fiik(t)_ 1 (t) Jnk(t)!=o tnk(t) At step sI 6, the distribution of the crowd 4 in the area of interest 2 at a future time-step is predicted.
Using the current and immediately previous distributions of cell mass in the area of interest 2, i.e. in(t+1) and m(t) respectively, and the estimation of the dynamics of the crowd 4, i.e. the internal dispersion matrix D(t), an estimation of the distribution of cell mass at a future time-step, for example in(t + 2), tn(t + 3) or in general in(T) at some future time T, is determined.
A predicted mass distribution for the kth cell within cell lattice 10 at time t+1 is determined by: Jnk(t +i)= Jnk(t)+ FI(t) Thus, using the above definition of the internal dispersion matrix D(t), an equation for the predicted future mass of each cell ñ1(t + i) in matrix form is: + i) = in(t)+ rn(t). D(t) = rn(t)' (Id D(t)) where Id is the identity matrix. For reasons of clarity, the following definition is made: (Id®D(t))=D*(t). Thus: 1 *.. 11(n)' 1 (Ant1 (t) -Atn (t)) 2m1(t) I Q)* 1 (A (t) -Ant1 (t)) *.. 1 2in(t) D*(t) is an estimate of the (current) dynamics of the crowd 4. Thus, an estimate for a future mass of each cell (at the time-step t+2) is: inQ + 2) niQ + 1). D * (t) = (Jn(t) D * (t)). D * (t) More generally, future population distribution estimates s steps into the future (i.e. at the time-step t+s) are obtained from the most recently observed distribution and the current best estimate of the underlying dynamics using the formula: ni(t+s)= rn(t). cQ*(t)) Thus, a prediction of the future distribution of the mass of the crowd 4 is provided. In particular, a prediction of the value of the cell mass of each cell at a future time-step t+s is provided. This prediction for each cell may be categorised as L, M, H or C as described above at steps s6 and slO.
Thus, a method for modelling movements of large groups based on observable population parameters is advantageously provided. Moreover, the prediction of future movements and distribution of the large groups is advantageously provided.
In this embodiment, the calculations to estimate future population distributions are performed for a fixed number s of time steps into the future.
Any incidence of a predicted cell mass being within an interval classified as being of interest or concern (i.e. the "critical" category) is flagged to an operator.
This tends to provide an "early warning" facility that can be used to alert authority of a crowd distribution becoming dangerous at a future time. This in turn allows for pre-emptive action to be taken to alleviate the risk of the dangerous crowd distribution. In other words, the ability to monitor a large group of people and predict where and when the distribution or movement of the crowd might require intervention is provided.
Furthermore, the modelling of movements of large groups and the prediction of future movements and distribution of the large groups may be advantageously performed in real-time. This facilitates the pre-emptive performance of any actions intended to avoid dangerous situations. Moreover, this tends to permit the application of this process in situations where the dynamics of the crowd is itself changing, because the model is updated based on subsequent observation.
An optional process of updating the internal dispersion matrix D(t) with any subsequent observations made of the crowd 4 using the sensor 6 may be incorporated into the crowd monitoring algorithm as follows.
The internal dispersion matrix D(t) provides an approximation of the internal dynamics based on a limited quantity of observed evidence at a current and preceding time-step. A better approximation tends to be provided by updating D(t) at each time step as a new set of cell masses in(t) are observed using the sensor 6. In this embodiment, the process of updating the internal dispersion matrix D(t) at each time-step is performed as follows.
As described above, at a particular time-step the determined cell masses at time-steps t and ti-I, i.e. in(t) and m(t + i), are used to determine the differences in the estimated observed cell masses between time-steps t and ti-I for each cell i, i.e. Am1(t). In turn, these values are used to produce flux vectors, F11Q). The flux vectors F11(t) are used to determine an estimate of the internal dispersion matrix D(t).
Thus, at each time step an estimate of the internal dispersion matrix, D(t) is determined. For example, at the time-step ti-i the estimates D(o), D(i) , D(t) may have been made for the internal dispersion matrix at the current and previous time-steps.
A more accurate internal dispersion matrix for predicting the distribution of the cell mass at future time-steps may, in certain situations, be provided by an updated internal dispersion matrix, Dt which is determined as: D' where e denotes matrix addition.
Each element of Dt is an average local flux vector over the t +1 estimates that have so far been made.
Advantageously, the matrix Dt may be determined recursively as: D' = t+1 = t+1= t+1= Using Dt to predict future cell masses may, in certain situations, be more accurate or more convenient than using the non-updated estimate of the is internal dispersion matrix, D(t).
Alternative instantiations may be more suitable to particular operational contexts. For example, calculating the dispersion matrix from those estimates of D(t) over some set number n of prior time-steps, where 0 «= n <t. In this case, the internal flux estimates I3(t-n),D(t-n+1) ,D(t) are used, with the updated internal dispersion matrix Dt having the form: When n t this formula for Dt is similar to that given above.
Advantageously, when n!= t, the matrix Dt may still be determined recursively using the formula: DtDt1®1[p(t)ED(t1)] -n+1 --Alternatively, a particular time-step T when the underlying dynamics are believed to have changed may be identified as a critical threshold for which earlier internal flux estimates are considered irrelevant, where 0 «= T <t. In this case, the internal dispersion matrices used are D(T),D(T+1),....,D(t), and the updated internal dispersion matrix Dt has the form: = 1 -m+1 --where m=t-T When T = 0 this formula for D is similar to that given above.
Advantageously, the matrix Dtmay be determined recursively as: = 1 (t)em.D']= 1.D(t) " = in+l = in+1 m+1 The estimation of the future population distribution s time-steps into the future (i.e. at the time-step t+s) that is determined at step s16 as described above may alternatively be obtained from the most recently observed distribution and the current best estimate of the underlying dynamics using the formula: where: (2*)t =(IdeDt) for any of the possible formulations of Dt defined above.
Advantageously, the matrix p*)t may, in suitable applications, provide a more accurate approximation about the future cell mass distribution than the non-updated matrix D*.
The equation niQ + s) = niQ). ((p *y) may be equivalently represented + = (((2*fl)T. rn(t). This formulation advantageously allows for easier implementation of the crowd monitoring algorithm (depending on the software used).
Moreover, representing the dynamics of the crowd 4 as a Markovian state machine tends to be facilitated. This advantageously allows for the applications of existing techniques for analysing the long term behaviour of state machines and existing techniques for predicting when the current dynamics of a system are tending towards unsafe configurations. For example, techniques that identify and propose actions to avoid dangerous or unwanted states could be applied to avoid dangerous or unwanted crowd distributions.
Such techniques may alert an authority to situations where, without intervention, crowd density is likely to become unsafe or unwanted.
Apparatus, including the processor 8, for performing the method steps of Figure 2 and/or Figure 6 may be provided by configuring or adapting any suitable apparatus, for example one or more computers or other processing apparatus or processors, and/or providing additional modules. The apparatus may comprise a computer, a network of computers, or one or more processors, for implementing instructions and using data, including instructions and data in the form of a computer program or plurality of computer programs stored in or on a machine readable storage medium such as computer memory, a computer disk, ROM, PROM etc., or any combination of these or other storage media.
It should be noted that certain of the process steps depicted in the flowcharts of Figure 2 and/or Figure 6 and described above may be omitted or such process steps may be performed in differing order to that presented above and shown in Figures 2 and Figure 6. Furthermore, although all the process steps have, for convenience and ease of understanding, been depicted as discrete temporally-sequential steps, nevertheless some of the process steps may in fact be performed simultaneously or at least overlapping to some extent temporally.
In the above embodiments, a crowd of people is monitored. However in other embodiments, a relatively large population or amount of any entity may be monitored and the future distributions of those entities may be predicted.
In the above embodiments, the area of interest only comprises the crowd. However, in other embodiments the area of interest (of any size or shape) may additionally include other elements, for example terrain features or objects that in some way affect, limit, or restrict the movement of the crowd in some parts or all of the area of interest.
In the above embodiments, the area of interest is two-dimensional.
However, in other embodiments the area of interest is three-dimensional.
In the above embodiments, the crowd move within the area of interest.
However, in other embodiments some or all of the members of the crowd may move out of the area of interest. Also in other embodiments new members of the crowd may move into the area of interest. In these embodiments, the flux across the boundary of the area of interest is incorporated, for example by representing the flux across external boundaries as the flux between each boundary cell and a virtual cell or cells representing the external environment, calculated in a similar way to the internal flux estimates described above.
In the above embodiments, the crowd moves in an irregular manner.
However, in other embodiments the crowd moves in a regular manner.
In the above embodiments, a single sensor is used to take measurements of the crowd. However, in other embodiments more than one sensor or other appropriate device is used to take measurements of the crowd. -21 -
In the above embodiments, the sensor is an infra-red sensor which is used to measure an infra-red intensity level. However, in other embodiments the sensor is a different appropriate type of sensor which is used to measure a different appropriate parameter.
In the above embodiments, the cell lattice is a four-by-four square grid of cells. However, in other embodiments the cell lattice comprises any number of the same or differently sized cells arranged in any appropriate configuration.
In the above embodiments, the cell lattice covers entirely the area of interest. However, in other embodiments the cell lattice covers the area of interest partially. Moreover, in other embodiments the cell lattice comprises more than one discrete sub-lattice of cells.
In the above embodiments, the data corresponding to the distribution of the crowd that is generated using the sensor is the observed cell mass, i.e. the proportion of the cell that is "full". However, in other embodiments different appropriate data is used, for example the number of individual members of the crowd in each cell.
In the above embodiments, measurements of the cell mass are taken at discrete points in time, for example, the time-steps t, ti-i,etc. However, in other embodiments, measurements of the cell mass may be taken continuously.
Also, in other embodiments the internal dispersion matrix, D(t) may be determined continuously. Also, in other embodiments the updated internal dispersion matrix, Dt may be determined and updated continuously.
In the above embodiments, a cell is categorised as low-risk, medium risk, high-risk, or critical depending on the values of observed cell mass estimated for that cell. However, in other embodiments a cell is categorised in a different way, for example in other embodiments there are more or fewer differently named categories, and/or there are different cell mass ranges for the different categories. Also, in other embodiments one or more cells may have different categorisation criteria from other cells. In other embodiments, the cells are not -22 -categorised. For example, in other embodiments the number or density of members of the crowd in each cell may be measured and predicted directly.
In the above embodiments, the flux between the ith and jth cell was determined between the time-steps t and t+1. However, in other embodiments other time-step intervals may be used. For example, the flux between the ith and jth cell may be determined between the time-steps t and t+2, and measurements in the cells at ti-i may be ignored. In this case the neighbourhood of the cells may be increased to account for the extended time period in which members of the crowd may move, and hence the extended distance over which members of the crowd may travel.
In the above embodiments, the neighbourhood of a cell is defined to be the set of cells from which members of the crowd may move into that cell between one time-step and the next, and/or a set of cells into which members of the crowd may move from that cell between one time-step and the next.
However, in other embodiments, a different appropriate definition of "neighbourhood" may be used. For example, in other embodiments a neighbourhood of a cell may be the set of cells that abut that cell.
In the above embodiments, the overall external flux AM (i.e. the overall gain or loss of cell mass from the /th and jth cells that is not attributable to movement between the ith and jth cells) is equally accounted for by each of the ith and jth cells. In other words, each of the ith and jth cells are assigned an external flux value of 2-AM... However, in other embodiments, the overall external flux AMU is not equally accounted for by each of the ith and jth cells.
For example, in other embodiments, a greater portion of the external flux is attributed to the ith cell than the jth cell, or vice versa.
Claims (15)
- CLAIMS1. A method for processing a distribution of a population, the population (4) being distributed over a region of interest (2), the region of interest (2) being divided into a plurality of cells, the method comprising: measuring, at two different points in time, respective values of a measure of population intensity in each cell of a plurality of the cells; for a cell in the plurality, determining a vector of values, wherein each value in the vector is a function of the population intensity values measured in that cell at the two different points in time and the population intensity values measured in a different cell at the two different points in time; determining a matrix using the determined vector(s) of values and using the population intensity values measured at one of the two different points in time in the cells for which the vectors of values were determined; and predicting, using the determined matrix and using the value of the population intensity measured in a cell in the plurality at either of the two different points in time, a value for the measure of population intensity in that cell for a point in time different to the two different points in time.
- 2. A method according to claim 1, wherein the step of determining a matrix is performed using the population intensity values measured at the earlier of the two different points in time in the cells for which the vectors of values were determined.
- 3. A method according to claim 1 or 2, wherein a value in a vector of values is a flux value determined using the formula: F!.. =-(tvn.(t)-tvn.(t)) U 2 -24 -where: FI1 is a flux value of the flux between the an ith cell and a jth cell; and Am1(t)=m1(t')-1n1(t) and Am1(t)=m1(t')-1n1(t) where: is the measured value of the measure of population intensity in the ith cell (12) at a time t; 1n1(t') is the measured value of the measure of population intensity in the ith cell (12) at a time t'; 1n1(t) is the measured value of the measure of population intensity in the jth cell (14) at the time t; and is the measured value of the measure of population intensity in the jth cell (14) at the time t'.
- 4. A method according to claim 3, wherein the vector of flux values is determined as: Fl(t)= (Fl1, ,Fl17) where: Fl11 for J E {1,...,m} are flux values of the flux between the ith cell (12) and the jth cell (14), wherein the jth cell (14) is a cell in the set of cells that influence the value of the measure of population intensity in the ith cell (12) between the two different points in time.
- 5. A method according to any of claims 1 to 4, wherein a vector of values is determined as: Fl(t)=[11(J1(Am1(t)_Amj(t))J where: Anz1(t) = in1(t')-m1fr) and Ain1(t) = m1(t')-1n1(t) -25 -where: 1n1(t) is the measured value of the measure of population intensity in the ith cell (12) at a time t; 1n1(t') is the measured value of the measure of population intensity in the ith cell (12) at a time t'; 1n1(t) is the measured value of the measure of population intensity in the jth cell (14) at the time t; and 1n1(t') is the measured value of the measure of population intensity in the jth cell (14) at the time t'; and i(j) is an indicator function: ri / E nbhdQ) L0 J nbhdv where nbhd(i) is a set of cells that influence the value of the measure of population intensity in the /th cell (12) between the two different points in time.
- 6. A method according to claim 5, wherein the step of determining a matrix comprises determining a matrix: PF11(t) 0 where PF11(t)n F1:(t) m1(t)!=o
- 7. A method according to claim 6, wherein the step of determining a matrix comprises determining a matrix Dt as either: Dt =__p(o)D(i)....®D(t)] or D' =_J_[(t)®t.D'']=_J_.D(t)u_!-_.D'' = t+i = t+1= t+i= or -1(tn)D(tn+1)D(t)] or Dt Dt' as_L4p(t)®_D(t_n_1)] or -m+1 --or Dt= 1 1 Dl = in+1 = in+1 = in+1 = where: n is a number of prior time-steps to average over, with 0 «= n ct; m=t-T forT a threshold value such that O«=Tczt; and PFJ1(t) 0 where PF11(t)= 1 F1J(t) m1(t)!=0
- 8. A method according to claim 6 or 7, wherein the step of predicting a value for the measure of population intensity in that cell for a point in time different to the two different points in time comprises determining: th(t+s)= rn(t).(2*(t)) where: D * (t) = (ci D(t)) where fri is the identity matrix; and S is a number of time-steps.-27 -
- 9. A method according to claim 7 or claim 8 when dependent on claim 7, wherein the step of predicting a value for the measure of population intensity in that cell for a point in time different to the two different points in time comprises determining: where: (q *)t = (Id Dt) where Ic! is the identity matrix; and s is a number of time-steps.
- 10. A method according to any of claims I to 9 wherein the measure of population intensity is a number of people.
- 11. A method of managing a population distribution for a population (4) distributed over a plurality of cells, the method comprising: performing a method for processing a distribution of a population according to any of claims 1 to 10; and performing an act based on the predicted values of the measure of population intensity.
- 12. Apparatus for processing a distribution of a population (4), the population (4) being distributed over a region of interest (2), the region of interest (2) being divided into a plurality of cells, the apparatus comprising a processor (8) for performing a method according to any of claims 1 to 11 and sensing means (6) for measuring a value of a measure of population intensity in each of the plurality of the cells at two different points in time.
- 13. Apparatus for managing a population distribution for a population (4) distributed over a plurality of cells, the apparatus comprising: an apparatus for processing a distribution for a population (4) according to claim 12; and means for performing an act based on the predicted values of the measure of population intensity such that the actual value of the measure of population intensity at the point in time different to the two different points in time is different to the predicted value of the measure of population intensity.
- 14. A program or plurality of programs arranged such that when executed by a computer system or one or more processors it/they cause the computer system or the one or more processors to operate in accordance with the method of any of claims Ito 11.
- 15. A machine readable storage medium storing a program or at least one of the plurality of programs according to claim 14.
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GB1021336.1A GB2486638A (en) | 2010-12-16 | 2010-12-16 | Predicting Crowd Distribution |
PCT/EP2011/071908 WO2012080037A1 (en) | 2010-12-16 | 2011-12-06 | Processing distributions of a population over a region of interest divided into a plurality of cells |
US13/994,400 US20130268230A1 (en) | 2010-12-16 | 2011-12-06 | Processing distributions |
EP11790999.4A EP2652675A1 (en) | 2010-12-16 | 2011-12-06 | Processing distributions of a population over a region of interest divided into a plurality of cells |
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DE112013002233B4 (en) * | 2012-04-26 | 2018-05-17 | International Business Machines Corporation | System, method and program product for providing population-sensitive weather forecasts |
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US20100042364A1 (en) * | 2008-08-15 | 2010-02-18 | International Business Machines Corporation | Monitoring Virtual Worlds to Detect Events and Determine Their Type |
WO2010116916A1 (en) * | 2009-04-06 | 2010-10-14 | 株式会社エヌ・ティ・ティ・ドコモ | Communication system, information analyzing apparatus, and information analyzing method |
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US20100042364A1 (en) * | 2008-08-15 | 2010-02-18 | International Business Machines Corporation | Monitoring Virtual Worlds to Detect Events and Determine Their Type |
WO2010116916A1 (en) * | 2009-04-06 | 2010-10-14 | 株式会社エヌ・ティ・ティ・ドコモ | Communication system, information analyzing apparatus, and information analyzing method |
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DE112013002233B4 (en) * | 2012-04-26 | 2018-05-17 | International Business Machines Corporation | System, method and program product for providing population-sensitive weather forecasts |
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