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An Experimental Evaluation of Grouping Definitions for Moving Entities

Published: 05 November 2019 Publication History

Abstract

One important pattern analysis task for trajectory data is to find a group: a set of entities that travel together over a period of time. In this paper, we compare four definitions of groups by conducting extensive experiments using various data sets. The grouping definitions are different by one or more of three different characteristics: whether they use the measured sample points or the continuous movement, how distance is used to decide if entities are in the same group, and whether the duration of the group is measured cumulatively or as one contiguous time interval. We are interested in the differences between the definitions and comparisons to human annotated data, if available. We concentrate on pedestrian data and on different crowd densities. Furthermore, we analyze the robustness of the definitions and their dependence on different sampling rates. We use two different types of trajectory data sets: synthetic trajectories from a crowd simulation model, and real-life trajectories extracted from video surveillance. We present the results of the quantitative evaluations. For experiments with real-life trajectories, we augment them with a qualitative evaluation using videos that show groups in the trajectories with a color coding.

References

[1]
Aris Anagnostopoulos, Michail Vlachos, Marios Hadjieleftheriou, Eamonn Keogh, and Philip Yu. 2006. Global distance-based segmentation of trajectories. In Proc. of the 12th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. 34--43.
[2]
Mattias Andersson, Joachim Gudmundsson, Patrick Laube, and Thomas Wolle. 2008. Reporting Leaders and Followers among Trajectories of Moving Point Objects. GeoInformatica 12, 4 (2008), 497--528.
[3]
Stefania Bandini, Andrea Gorrini, and Giuseppe Vizzari. 2014. Towards an integrated approach to crowd analysis and crowd synthesis: A case study and first results. Pattern Recognition Letters 44 (2014), 16--29.
[4]
Marc Benkert, Bojan Djordjevic, Joachim Gudmundsson, and Thomas Wolle. 2010. Finding Popular Places. International Journal of Computational Geometry & Applications 20, 1 (2010), 19--42.
[5]
Marc Benkert, Joachim Gudmundsson, Florian Hübner, and Thomas Wolle. 2008. Reporting flock patterns. Computational Geometry 41, 3 (2008), 111--125.
[6]
Kevin Buchin, Maike Buchin, Joachim Gudmundsson, Maarten Löffler, and Jun Luo. 2011. Detecting Commuting Patterns by Clustering Subtrajectories. International Journal of Computational Geometry & Applications 21, 3 (2011), 253--282.
[7]
Kevin Buchin, Maike Buchin, Marc van Kreveld, and Jun Luo. 2011. Finding long and similar parts of trajectories. Computational Geometry 44, 9 (2011), 465--476.
[8]
Kevin Buchin, Maike Buchin, Marc van Kreveld, Bettina Speckmann, and Frank Staals. 2015. Trajectory grouping structure. Journal of Computational Geometry 6, 1 (2015), 75--98.
[9]
Maike Buchin, Anne Driemel, Marc van Kreveld, and Vera Sacristán. 2011. Segmenting trajectories: A framework and algorithms using spatiotemporal criteria. Journal of Spatial Information Science 3, 1 (2011), 33--63.
[10]
Frances Colles, Russell Cain, Thomas Nickson, Adrian Smith, Stephen Roberts, Martin Maiden, Daniel Lunn, and Marian Stamp Dawkins. 2016. Monitoring chicken flock behaviour provides early warning of infection by human pathogen Campylobacter. Biological Sciences 283, 1822 (2016), 20152323.
[11]
Fernando de Lucca Siqueira and Vania Bogorny. 2011. Discovering Chasing Behavior in Moving Object Trajectories. Transactions in GIS 15, 5 (2011), 667--688.
[12]
Marcus Doherr, Tim Carpenter, David Wilson, and Ian Gardner. 1999. Evaluation of temporal and spatial clustering of horses with Corynebacterium pseudotuber-culosis infection. American Journal of Veterinary Research 60, 3 (1999), 284--291.
[13]
Martin Ester, Hans-Peter Kriegel, Jörg Sander, and Xiaowei Xu. 1996. A Density-Based Algorithm for Discovering Clusters in Large Spatial Databases with Noise. In Proc. of the 2nd International Conference on Knowledge Discovery and Data Mining (KDD-96). 226--231.
[14]
Joachim Gudmundsson, Patrick Laube, and Thomas Wolle. 2012. Computational Movement Analysis. In Handbook of Geographic Information, Wolfgang Kresse and David Danko (Eds.). Springer, 725--741.
[15]
Joachim Gudmundsson and Marc van Kreveld. 2006. Computing Longest Duration Flocks in Trajectory Data. In Proc. of the 14th Annual ACM International Symposium on Advances in Geographic Information Systems. 35--42.
[16]
Joachim Gudmundsson, Marc van Kreveld, and Frank Staals. 2013. Algorithms for hotspot computation on trajectory data. In Proc. of the 21st SIGSPATIAL International Conference on Advances in Geographic Information Systems, SIGSPATIAL 2013. 134--143.
[17]
Edward Hall. 1992. The Hidden Dimension. Anchor Books.
[18]
Yan Huang, Cai Chen, and Pinliang Dong. 2008. Modeling Herds and Their Evolvements from Trajectory Data. In Proc. of the 5th International Conference of Geographic Information Science, GIScience. 90--105.
[19]
San-Yih Hwang, Ying-Han Liu, Jeng-Kuen Chiu, and Ee-Peng Lim. 2005. Mining Mobile Group Patterns: A Trajectory-based Approach. In Proc. of the 9th Pacific-Asia Conference on Advances in Knowledge Discovery and Data Mining, PAKDD'05. 713--718.
[20]
Armand Jacobs, Cédric Sueur, Jean Louis Deneubourg, and Odile Petit. 2011. Social Network Influences Decision Making During Collective Movements in Brown Lemurs (Eulemur fulvus fulvus). International Journal of Primatology 32, 3 (2011), 721--736.
[21]
Hoyoung Jeung, Man Lung Yiu, Xiaofang Zhou, Christian Jensen, and Heng Tao Shen. 2008. Discovery of convoys in trajectory databases. Proceedings of the VLDB Endowment 1, 1 (2008), 1068--1080.
[22]
Panos Kalnis, Nikos Mamoulis, and Spiridon Bakiras. 2005. On Discovering Moving Clusters in Spatio-temporal Data. In Proc. of the Advances in Spatial and Temporal Databases, 9th International Symposium, SSTD 2005. 364--381.
[23]
Ioannis Karamouzas, Roland Geraerts, and Mark Overmars. 2009. Indicative routes for path planning and crowd simulation. In Proc. of the 4th International Conference on Foundations of Digital Games, FDG 2009. 113--120.
[24]
Angelos Kremyzas, Norman Jaklin, and Roland Geraerts. 2016. Towards social behavior in virtual-agent navigation. SCIENCE CHINA Information Sciences 59, 11 (2016), 1--17.
[25]
UCY Computer Graphics Lab. [n.d.]. Crowd Data. https://graphics.cs.ucy.ac.cy/research/downloads/crowd-data/. Last accessed: August 1, 2019.
[26]
Patrick Laube. 2014. Computational Movement Analysis. Springer.
[27]
Jae-Gil Lee, Jiawei Han, and Xiaolei Li. 2008. Trajectory Outlier Detection: A Partition-and-Detect Framework. In Proc. of the 24th International Conference on Data Engineering, ICDE 2008. 140--149.
[28]
Alon Lerner, Yiorgos Chrysanthou, and Dani Lischinski. 2007. Crowds by Example. Computer Graphics Forum 26, 3 (2007), 655--664.
[29]
Francesco Lettich, Luis Otávio Alvares, Vania Bogorny, Salvatore Orlando, Alessandra Raffaetà, and Claudio Silvestri. 2016. Detecting avoidance behaviors between moving object trajectories. Data & Knowledge Engineering 102 (2016), 22--41.
[30]
Yuxuan Li, James Bailey, and Lars Kulik. 2015. Efficient mining of platoon patterns in trajectory databases. Data & Knowledge Engineering 100 (2015), 167--187.
[31]
Yifan Li, Jiawei Han, and Jiong Yang. 2004. Clustering moving objects. In Proc. of the 10th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. 617--622.
[32]
Zhenhui Li, Bolin Ding, Jiawei Han, and Roland Kays. 2010. Swarm: Mining Relaxed Temporal Moving Object Clusters. Proceedings of the VLDB Endowment 3, 1 (2010), 723--734.
[33]
Hechen Liu and Markus Schneider. 2012. Similarity measurement of moving object trajectories. In Proc. of the 3rd ACM SIGSPATIAL International Workshop on GeoStreaming, IWGS@SIGSPATIAL 2012. 19--22.
[34]
Maurice Marx. [n.d.]. Python 2d/3d Trajectory Visualization Library. https://github.com/marximus/trackviz/. Last accessed: August 1, 2019.
[35]
Harvey Miller, Somayeh Dodge, Jennifer Miller, and Gil Bohrer. 2019. Towards an integrated science of movement: converging research on animal movement ecology and human mobility science. International Journal of Geographical Information Science 33, 5 (2019), 855--876.
[36]
Kiran Rachuri, Mirco Musolesi, Cecilia Mascolo, Peter Rentfrow, Chris Longworth, and Andrius Aucinas. 2010. EmotionSense: A Mobile Phones Based Adaptive Platform for Experimental Social Psychology Research. In Proc. of the 12th ACM International Conference on Ubiquitous Computing. 281--290.
[37]
Francesco Solera. [n.d.]. group-detection. http://imagelab.unimore.it/group-detection/. Last accessed: August 1, 2019.
[38]
Francesco Solera, Simone Calderara, and Rita Cucchiara. 2016. Socially Constrained Structural Learning for Groups Detection in Crowd. IEEE Transactions on Pattern Analysis and Machine Intelligence 38, 5 (2016), 995--1008.
[39]
Lu An Tang, Yu Zheng, Jing Yuan, Jiawei Han, Alice Leung, Wen-Chih Peng, and Thomas La Porta. 2013. A framework of traveling companion discovery on trajectory data streams. ACM Transactions on Intelligent Systems and Technology 5, 1 (2013), 3:1--3:34.
[40]
Marc van Kreveld, Maarten Löffler, Frank Staals, and Lionov Wiratma. 2018. A Refined Definition for Groups of Moving Entities and Its Computation. International Journal of Computational Geometry & Applications 28, 2 (2018), 181--196.
[41]
Wouter van Toll, Norman Jaklin, and Roland Geraerts. 2015. Towards Believable Crowds: A Generic Multi-level Framework for Agent Navigation. In ICT.OPEN 2015. 10.
[42]
Marcos Vieira, Petko Bakalov, and Vassilis Tsotras. 2009. On-line discovery of flock patterns in spatio-temporal data. In Proc. of the 17th ACM SIGSPATIAL International Symposium on Advances in Geographic Information Systems, ACMGIS 2009. 286--295.
[43]
Uri Wilensky. [n.d.]. NetLogo. http://ccl.northwestern.edu/netlogo. Last accessed: August 1, 2019.
[44]
Uri Wilensky and William Rand. 2015. An introduction to agent-based modeling: modeling natural, social, and engineered complex systems with NetLogo. MIT Press.
[45]
Lionov Wiratma. [n.d.]. Visualization of Grouping Definitions. https://tiny.cc/groupingvideos/. Last accessed: August 1, 2019.
[46]
Lionov Wiratma, Maarten Löffler, and Frank Staals. 2018. An Experimental Comparison of Two Definitions for Groups of Moving Entities (Short Paper). In Proc. of the 10th International Conference on Geographic Information Science, GIScience 2018. 64:1--64:6.
[47]
Shuai Yi. [n.d.]. Pedestrian Walking Path Dataset. https://www.dropbox.com/s/7y90xsxq0l0yv8d/cvpr2015_pedestrianWalkingPathdataset.rar. Last accessed: August 1, 2019.
[48]
Shuai Yi, Hongsheng Li, and Xiaogang Wang. 2015. Understanding pedestrian behaviors from stationary crowd groups. In Proc. of the IEEE Conference on Computer Vision and Pattern Recognition, CVPR 2015. 3488--3496.
[49]
Guan Yuan, Penghui Sun, Jie Zhao, Daxing Li, and Canwei Wang. 2017. A review of moving object trajectory clustering algorithms. Artificial Intelligence Review 47, 1 (2017), 123--144.
[50]
Kai Zheng, Yu Zheng, Nicholas Jing Yuan, Shuo Shang, and Xiaofang Zhou. 2014. Online Discovery of Gathering Patterns over Trajectories. IEEE Transactions on Knowledge and Data Engineering 26, 8 (2014), 1974-1988.
[51]
Jie Zhu, Wei Jiang, An Liu, Guanfeng Liu, and Lei Zhao. 2017. Effective and efficient trajectory outlier detection based on time-dependent popular route. World Wide Web 20, 1 (2017), 111--134.

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cover image ACM Conferences
SIGSPATIAL '19: Proceedings of the 27th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems
November 2019
648 pages
Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than the author(s) must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected].

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Published: 05 November 2019

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Author Tags

  1. Trajectories
  2. collective motion
  3. experimental comparison
  4. groups

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SIGSPATIAL '19 Paper Acceptance Rate 34 of 161 submissions, 21%;
Overall Acceptance Rate 257 of 1,238 submissions, 21%

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  • (2023)Extracting Persistent Clusters in Dynamic Data via Möbius InversionDiscrete & Computational Geometry10.1007/s00454-023-00590-171:4(1276-1342)Online publication date: 11-Oct-2023
  • (2023)Density Approximation for Moving GroupsAlgorithms and Data Structures10.1007/978-3-031-38906-1_45(675-688)Online publication date: 28-Jul-2023
  • (2020)SCPPACM Transactions on Spatial Algorithms and Systems10.1145/34234057:1(1-30)Online publication date: 29-Oct-2020
  • (2020)Online discovery of co-movement patterns in mobility dataInternational Journal of Geographical Information Science10.1080/13658816.2020.183456235:4(819-845)Online publication date: 23-Nov-2020

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