Application of Deep Learning for Classification of Intertidal Eelgrass from Drone-Acquired Imagery

被引:5
|
作者
Tallam, Krti [1 ]
Nguyen, Nam [2 ]
Ventura, Jonathan [2 ]
Fricker, Andrew [3 ]
Calhoun, Sadie [3 ]
O'Leary, Jennifer [4 ]
Fitzgibbons, Maurica [5 ]
Robbins, Ian [6 ]
Walter, Ryan K. K. [6 ]
机构
[1] Stanford Univ, Biol Dept, Stanford, CA 94305 USA
[2] Calif Polytech State Univ San Luis Obispo, Comp Sci & Software Engn Dept, San Luis Obispo, CA 93407 USA
[3] Calif Polytech State Univ San Luis Obispo, Social Sci Dept, San Luis Obispo, CA 93407 USA
[4] Wildlife Conservat Soc, Mombasa 9947080100, Kenya
[5] Calif Polytech State Univ San Luis Obispo, Dept Food & Environm Sci, San Luis Obispo, CA 93407 USA
[6] Calif Polytech State Univ San Luis Obispo, Phys Dept, San Luis Obispo, CA 93407 USA
关键词
shallow estuarine habitat; eelgrass; drones; machine learning; coastal dynamics; climate; Morro Bay; DYNAMICS; SHALLOW; COAST; UAV; PHOTOGRAMMETRY; RESILIENCE; RECOVERY; SYSTEMS; CARBON; PATCH;
D O I
10.3390/rs15092321
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Shallow estuarine habitats are globally undergoing rapid changes due to climate change and anthropogenic influences, resulting in spatiotemporal shifts in distribution and habitat extent. Yet, scientists and managers do not always have rapidly available data to track habitat changes in real-time. In this study, we apply a novel and a state-of-the-art image segmentation machine learning technique (DeepLab) to two years of high-resolution drone-based imagery of a marine flowering plant species (eelgrass, a temperate seagrass). We apply the model to eelgrass (Zostera marina) meadows in the Morro Bay estuary, California, an estuary that has undergone large eelgrass declines and the subsequent recovery of seagrass meadows in the last decade. The model accurately classified eelgrass across a range of conditions and sizes from meadow-scale to small-scale patches that are less than a meter in size. The model recall, precision, and F1 scores were 0.954, 0.723, and 0.809, respectively, when using human-annotated training data and random assessment points. All our accuracy values were comparable to or demonstrated greater accuracy than other models for similar seagrass systems. This study demonstrates the potential for advanced image segmentation machine learning methods to accurately support the active monitoring and analysis of seagrass dynamics from drone-based images, a framework likely applicable to similar marine ecosystems globally, and one that can provide quantitative and accurate data for long-term management strategies that seek to protect these vital ecosystems.
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页数:13
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