Reef-Insight: A Framework for Reef Habitat Mapping with Clustering Methods Using Remote Sensing
<p>One Tree Island reef (located at 23°30′30″ S, 152°05′30″ E) in the Capricorn–Bunker group in relation to the Queensland coastline (taken from [<a href="#B50-information-14-00373" class="html-bibr">50</a>]).</p> "> Figure 2
<p>Mosaic of One Tree Island reef taken from the Allen Coral Atlas [<a href="#B51-information-14-00373" class="html-bibr">51</a>].</p> "> Figure 3
<p>Proposed framework for applying clustering methods (k-means, GMM, AGNES, and DBSCAN) to remote sensing data for coral reef mapping.</p> "> Figure 4
<p>The elbow method to evaluate the number of clusters (components) for k-means using WCSS and BIC, respectively.</p> "> Figure 5
<p>Evaluating <span class="html-italic">k</span> in k-means clustering.</p> "> Figure 6
<p>Benthic maps produced with the four different clustering methods.</p> "> Figure 7
<p>Geomorphic maps produced with the four different clustering methods.</p> "> Figure 8
<p>Preliminary coral map results—GMM. (<b>a</b>) Benthic map preliminary result overlay; (<b>b</b>) benthic map preliminary result; (<b>c</b>) geomorphic map preliminary result overlay; (<b>d</b>) geomorphic map preliminary result overlay.</p> "> Figure 9
<p>Benthic map results—Allen Coral Atlas. (<b>a</b>) Benthic map from the Allen Coral Atlas [<a href="#B51-information-14-00373" class="html-bibr">51</a>]; (<b>b</b>) k-means benthic map; (<b>c</b>) GMM benthic map.</p> "> Figure 10
<p>Geomorphic map results—Allen Coral Atlas. (<b>a</b>) Geomorphic map from Allen Coral Atlas [<a href="#B51-information-14-00373" class="html-bibr">51</a>]; (<b>b</b>) k-means geomorphic map; (<b>c</b>) GMM geomorphic map.</p> ">
Abstract
:1. Introduction
2. Methodology
2.1. Study Area
2.2. Data
2.3. Benthic and Geomorphic Regions in Reef
2.4. Clustering Techniques
2.4.1. K-Means Clustering
2.4.2. GMM
2.4.3. Agglomerative Clustering
2.4.4. DBSCAN
2.5. Framework
3. Results
3.1. K-Means and GMM Clustering
3.2. Comparison of Selected Clustering Results
3.3. Comparison with Allen Coral Atlas
4. Discussion
5. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Barve, S.; Webster, J.M.; Chandra, R. Reef-Insight: A Framework for Reef Habitat Mapping with Clustering Methods Using Remote Sensing. Information 2023, 14, 373. https://doi.org/10.3390/info14070373
Barve S, Webster JM, Chandra R. Reef-Insight: A Framework for Reef Habitat Mapping with Clustering Methods Using Remote Sensing. Information. 2023; 14(7):373. https://doi.org/10.3390/info14070373
Chicago/Turabian StyleBarve, Saharsh, Jody M. Webster, and Rohitash Chandra. 2023. "Reef-Insight: A Framework for Reef Habitat Mapping with Clustering Methods Using Remote Sensing" Information 14, no. 7: 373. https://doi.org/10.3390/info14070373