<p dir="ltr">In recent years, Deep Learning (DL) methods have found extensive application in remote sensing and urban analysis. Software packages like ENVI, now offer the off-the-shelf DL Model called ENVINet-5, simplifying DL model training and spatial data extraction without requiring programming expertise. To evaluate and compare ENVINet-5's information extraction capabilities and classification performance with more conventional methods, including Spectral Angle Mapper (SAM), Random Forest (RF), and Support Vector Machine (SVM), this study conducted a comparative assessment in the rapidly developing port city of Mombasa, Kenya. The assessment used high spatial resolution WorldView-3 and medium spatial resolution Sentinel-2 images, along with diverse land cover and land use class levels. Results suggested ENVINet-5's classification performance in urban analysis using Sentinel-2 images was below expectations, with less than 60% accuracy compared to 78.0%, 89.2% and 79.9% accuracy achieved by SAM, RF, and SVM algorithms, respectively. While ENVINet-5 outperformed RF and SVM when applied to high spatial resolution 8-bit pixel depth WorldView-3 images and refined class design, high numbers of misclassified and unclassified pixels were observed. Downscaling radiometric resolution during correction in WorldView-3, coupled with the exceptionally detailed information it provides for the large-scale site, could potentially limit the capabilities of ENVINet-5.</p>
History
Table of Contents
1. Introduction -- 2. Methodology -- 3. Results -- 4. Discussion -- 5. Conclusion -- References -- Appendix A - ROI Separability Test -- Appendix B - Confusion Matrix
Awarding Institution
Macquarie University
Degree Type
Thesis MRes
Degree
Master of Research
Department, Centre or School
School of Natural Sciences
Year of Award
2024
Principal Supervisor
Maina Mbui
Additional Supervisor 1
Michael Chang
Rights
Copyright: The Author
Copyright disclaimer: https://www.mq.edu.au/copyright-disclaimer