Comparing Two Methods of Surface Change Detection on an Evolving Thermokarst Using High-Temporal-Frequency Terrestrial Laser Scanning, Selawik River, Alaska
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<p>Conceptual diagrams of the C2M and M3C2 techniques. (<b>A</b>) The shortest distances between C<span class="html-italic"><sub>a</sub></span> and M<span class="html-italic"><sub>b</sub></span> are computed and stored as attributes of C<span class="html-italic"><sub>a</sub></span>. (<b>B</b>) The point normal for <span class="html-italic">i</span> is calculated using the scale, <span class="html-italic">D</span>. A cylinder with diameter <span class="html-italic">d</span> and a user-specified maximum length is used to select points in C<span class="html-italic"><sub>b</sub></span> and C<span class="html-italic"><sub>a</sub></span> for the calculation of <span class="html-italic">i</span><sub>1</sub> and <span class="html-italic">i</span><sub>2</sub>, respectively. <span class="html-italic">L</span><sub><span class="html-italic">M</span>3<span class="html-italic">C</span>2</sub> is the distance between <span class="html-italic">i</span><sub>1</sub> and <span class="html-italic">i</span><sub>2</sub> and is stored as an attribute of <span class="html-italic">i</span>. The local and apparent roughness of C<span class="html-italic"><sub>b</sub></span> and C<span class="html-italic"><sub>a</sub></span> are calculated as <span class="html-italic">σ</span><sub>1</sub> and <span class="html-italic">σ</span><sub>2</sub>, respectively, which are used to calculate the SVCI for <span class="html-italic">i</span>. Both A and B are modified from Lague <span class="html-italic">et al.</span>[<a href="#b22-remotesensing-05-02813" class="html-bibr">22</a>].</p> ">
<p>Flow chart of terrestrial laser scanners (TLS) and GPS data acquisition, processing, analysis and comparison. Workflows for both C2M and M3C2 are identical (<b>A</b>) until the process branches for the C2M (<b>B</b>) and M3C2 (<b>C</b>) methods.</p> ">
<p>(<b>A</b>) Location map of the Selawik retrogressive thaw slump (RTS). (<b>B</b>) Oblique aerial photograph of the RTS. (<b>C</b>) Composite of several colored point clouds collected from multiple scan positions. The highlighted area is the data visible from the scan position used to collect the data set for this study. The area outlined by the long white polygon is the portion of the headwall further isolated for this study. The yellow polygon on the headwall is the area used in the empirical error analysis (Section 2.2.2). A post process GPS base station is located just outside the lower right corner of the image. The scale bar is accurate only in the direction of the x-axis (easting), because the point cloud in this image is projected orthographically. (<b>D</b>) Schematic of technique used in the localization studies presented in Section 3.4. (<b>E</b>) Schematic of technique used to generate the vertical spatial bins presented in Section 3.4.</p> ">
<p>Histograms illustrating how displacements between 2012 scans no. 3 and 4 were processed using both C2M and M3C2. Dashed lines indicate the mean of each data set. (<b>A</b>) Raw C2M displacement data before filtering. Mean displacement is −0.023 m. (<b>B</b>) Filtered C2M displacement data. The hanging gray portion indicates displacements considered insignificant and converted to zero. The black portion indicates remaining displacements after filtering. Note that C2M uses a blanket detection threshold, which is reflected in the hard transitions between the black and gray portions of the histogram. Mean displacement is −0.019 m, and 61% of the raw displacements are considered insignificant. (<b>C</b>) Raw M3C2 displacement data before filtering. Mean displacement is −0.026 m. (<b>D</b>) Filtered M3C2 displacement data. The hanging gray portion indicates displacements converted to zero. Black portion indicates remaining displacements after filtering. Note that M3C2 utilizes a spatially variable confidence interval (SVCI), which is reflected in the overlapping portions of the black and gray distributions. Mean displacement is −0.005 m, and 95% of the raw displacements are considered insignificant displacements.</p> ">
<p>(<b>A</b>) Example of a section of a point cloud colored by change from the previous epoch using the M3C2 algorithm [<a href="#b22-remotesensing-05-02813" class="html-bibr">22</a>]. Note that headwall retreat is highly spatially variable, but that most of the wall during a 12 h period does not experience significant change. (<b>B</b>) Black portions of the wall represent areas without data, either because of topographic shading or poor laser pulse returns.</p> ">
<p>Comparison of C2M and M3C2 RTS headwall retreat rates and the localization analyses from Section 3.4. Negative values indicate retreat of the landform. In both 2011 (<b>A</b>) and 2012 (<b>B</b>), the C2M and M3C2 methods show similar patterns; however, during epochs of consistent low magnitude change (segments I, III, and V), the C2M technique overpredicts the RTS headwall retreat rate when compared to M3C2. How each technique identifies insignificant change is the root of this difference. Both M3C2 and C2M resolve a strong diel signal in 2011 (segment II) and a weaker diel signal in 2012 (segment IV). These differences are likely due to the general weather patterns observed in 2011 (clear and warm) and 2012 (cool, wet and cloudy). The localization analyses (<a href="#f3-remotesensing-05-02813" class="html-fig">Figure 3(D)</a>) show that individual areas on the headwall cannot always approximate the overall retreat rate of the entire headwall. When all of the localization analyses are considered together, they approximate the M3C2 retreat record.</p> ">
<p>Conceptual diagram exploring scenarios when either M3C2 or C2M would be more appropriate topographic change detection tools. (<b>A</b>) A scenario where a surface changes from flat to undulatory, M3C2 may provide a better change detection analysis, because it is not biased by close points. (<b>B</b>) A scenario where the relative displacement between two measurement epochs is larger than the undulations in the surface and where <span class="html-italic">D</span>, the surface normal estimation scale, is smaller than the undulations. This causes some M3C2 displacements to reach across undulations. Under this scenario, C2M is still biased by close points, but it may provide a better analysis of topographic change than M3C2. Using M3C2 with <span class="html-italic">D</span> larger than the undulations in C<span class="html-italic"><sub>b</sub></span> would cause it to calculate displacements as if C<span class="html-italic"><sub>b</sub></span> were flat, which could correct this problem.</p> ">
<p>(<b>A</b>) Stacked plots from a section of the 2011 headwall that show both spatial and temporal changes in the RTS headwall retreat rate. Each epoch is artificially offset for clarity. The same diel pattern is visible here as in <a href="#f6-remotesensing-05-02813" class="html-fig">Figure 6(A)</a>. (<b>B</b>) Example of a spatially binned 2011 point cloud that captures nighttime change. Arrows indicate the general aspects with elevated retreat rates. (<b>C</b>) Example of a spatially binned 2011 point cloud that captures daytime change. Arrows indicate the general aspects with elevated retreat rates. The spatial and temporal information preserved in these plots suggests that shifts in the timing and location of the greatest retreat rates on the headwall are due to insolation.</p> ">
Abstract
:1. Introduction
1.1. Change Detection via TLS
1.1.1. C2M Analyses
1.1.2. M3C2 Analyses
1.2. Objective
1.3. Site Description and Significance
2. Methods
2.1. Data Acquisition and Processing
2.2. Change Detection Method I: C2M
2.2.1. Additive RMS Error Analysis
2.2.2. Empirical Error Analysis
2.2.3. Application of the Error Analysis Results
2.3. Change Detection Method II: M3C2
2.3.1. Error Analysis: Spatially Variable Confidence Interval
2.3.2. Application of the M3C2 SVCI
3. Results and Discussion
3.1. Comparison of Error Analysis Methods
3.2. Comparison of Change Detection Methods
3.3. Comparison of Cumulative Change
3.4. Capturing Spatial and Temporal Variability in RTS Headwall Retreat Rate
3.5. Unconstrained Sources of Uncertainty
4. Conclusions
Acknowledgments
- Conflict of InterestThe authors declare no conflict of interest.
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Year | GPS (2σ) (m) | Instrumental * (1σ) (m) | Georeferencing (2σ) (m) | RMS Error (2σ) (m) | Empirical Error (m) | M3C2 SVCI (2σ) (m) |
---|---|---|---|---|---|---|
2011 | 0.008 | 0.01 | 0.015 | 0.02 | 0.028 | 0.052 |
2012 | 0.014 | 0.01 | 0.022 | 0.03 | 0.019 | 0.069 |
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Barnhart, T.B.; Crosby, B.T. Comparing Two Methods of Surface Change Detection on an Evolving Thermokarst Using High-Temporal-Frequency Terrestrial Laser Scanning, Selawik River, Alaska. Remote Sens. 2013, 5, 2813-2837. https://doi.org/10.3390/rs5062813
Barnhart TB, Crosby BT. Comparing Two Methods of Surface Change Detection on an Evolving Thermokarst Using High-Temporal-Frequency Terrestrial Laser Scanning, Selawik River, Alaska. Remote Sensing. 2013; 5(6):2813-2837. https://doi.org/10.3390/rs5062813
Chicago/Turabian StyleBarnhart, Theodore B., and Benjamin T. Crosby. 2013. "Comparing Two Methods of Surface Change Detection on an Evolving Thermokarst Using High-Temporal-Frequency Terrestrial Laser Scanning, Selawik River, Alaska" Remote Sensing 5, no. 6: 2813-2837. https://doi.org/10.3390/rs5062813
APA StyleBarnhart, T. B., & Crosby, B. T. (2013). Comparing Two Methods of Surface Change Detection on an Evolving Thermokarst Using High-Temporal-Frequency Terrestrial Laser Scanning, Selawik River, Alaska. Remote Sensing, 5(6), 2813-2837. https://doi.org/10.3390/rs5062813