CVJun 11, 2022

Overcoming Annotation Bottlenecks in Underwater Fish Segmentation: A Robust Self-Supervised Learning Approach

arXiv:2206.05390v25 citationsh-index: 52
Originality Incremental advance
AI Analysis

This addresses the annotation bottleneck for researchers and practitioners in marine biology and underwater monitoring, offering an incremental improvement over existing self-supervised methods.

The paper tackles the problem of fish segmentation in underwater videos by introducing a self-supervised learning approach that eliminates the need for manual annotation, achieving segmentation accuracy comparable to fully-supervised methods on datasets like DeepFish, Seagrass, and YouTube-VOS.

Accurate fish segmentation in underwater videos is challenging due to low visibility, variable lighting, and dynamic backgrounds, making fully-supervised methods that require manual annotation impractical for many applications. This paper introduces a novel self-supervised learning approach for fish segmentation using Deep Learning. Our model, trained without manual annotation, learns robust and generalizable representations by aligning features across augmented views and enforcing spatial-temporal consistency. We demonstrate its effectiveness on three challenging underwater video datasets: DeepFish, Seagrass, and YouTube-VOS, surpassing existing self-supervised methods and achieving segmentation accuracy comparable to fully-supervised methods without the need for costly annotations. Trained on DeepFish, our model exhibits strong generalization, achieving high segmentation accuracy on the unseen Seagrass and YouTube-VOS datasets. Furthermore, our model is computationally efficient due to its parallel processing and efficient anchor sampling technique, making it suitable for real-time applications and potential deployment on edge devices. We present quantitative results using Jaccard Index and Dice coefficient, as well as qualitative comparisons, showcasing the accuracy, robustness, and efficiency of our approach for advancing underwater video analysis

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