SeagrassFinder: Deep Learning for Eelgrass Detection and Coverage Estimation in the Wild
Journal:
arXiv
Published Date:
Dec 20, 2024
Abstract
Seagrass meadows play a crucial role in marine ecosystems, providing benefits
such as carbon sequestration, water quality improvement, and habitat provision.
Monitoring the distribution and abundance of seagrass is essential for
environmental impact assessments and conservation efforts. However, the current
manual methods of analyzing underwater video data to assess seagrass coverage
are time-consuming and subjective. This work explores the use of deep learning
models to automate the process of seagrass detection and coverage estimation
from underwater video data. We create a new dataset of over 8,300 annotated
underwater images, and subsequently evaluate several deep learning
architectures, including ResNet, InceptionNetV3, DenseNet, and Vision
Transformer for the task of binary classification on the presence and absence
of seagrass by transfer learning. The results demonstrate that deep learning
models, particularly Vision Transformers, can achieve high performance in
predicting eelgrass presence, with AUROC scores exceeding 0.95 on the final
test dataset. The application of underwater image enhancement further improved
the models' prediction capabilities. Furthermore, we introduce a novel approach
for estimating seagrass coverage from video data, showing promising preliminary
results that align with expert manual labels, and indicating potential for
consistent and scalable monitoring. The proposed methodology allows for the
efficient processing of large volumes of video data, enabling the acquisition
of much more detailed information on seagrass distributions in comparison to
current manual methods. This information is crucial for environmental impact
assessments and monitoring programs, as seagrasses are important indicators of
coastal ecosystem health. This project demonstrates the value that deep
learning can bring to the field of marine ecology and environmental monitoring.