Spectral Unmixing and Mapping of Coral Reef Benthic Cover - Robotics Institute Carnegie Mellon University

Spectral Unmixing and Mapping of Coral Reef Benthic Cover

Rohan Zeng, Eric J. Hochberg, Alberto Candela, and David S. Wettergreen
Conference Paper, Proceedings of IEEE International Geoscience and Remote Sensing Symposium, July, 2024

Abstract

Coral reefs are an important ecosystem to the local communi- ties and indigenous wildlife that rely on them. However, reefs have greatly degraded in recent decades with the remaining at increasing risk of loss. Quantitatively mapping these reefs would provide a resource for us to monitor changes and un- derstand their health. We explore methods leveraging limited spectral data and resources for efficient global scale model- ing of coral reefs. We then evaluate performance on a Deep Neural Network and our previously developed Deep Condi- tional Dirichlet Model. Regions of high uncertainty based on the model output prediction are used to determine informa- tive in situ sampling. An ergodic planner is implemented to generate a path through these regions to acquire samples that best improve the coral map. The result is a resource efficient learning based pipeline that augments existing spectral data and maps coral reefs globally to improve our understanding of their condition.

BibTeX

@conference{Zeng-2024-140902,
author = {Rohan Zeng and Eric J. Hochberg and Alberto Candela and David S. Wettergreen},
title = {Spectral Unmixing and Mapping of Coral Reef Benthic Cover},
booktitle = {Proceedings of IEEE International Geoscience and Remote Sensing Symposium},
year = {2024},
month = {July},
publisher = {IEEE},
keywords = {coral reef, unmixing, remote sensing, limited data, ergodic planning},
}