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arXiv 提交日期: 2025-12-09
📄 Abstract - Towards Visual Re-Identification of Fish using Fine-Grained Classification for Electronic Monitoring in Fisheries

Accurate fisheries data are crucial for effective and sustainable marine resource management. With the recent adoption of Electronic Monitoring (EM) systems, more video data is now being collected than can be feasibly reviewed manually. This paper addresses this challenge by developing an optimized deep learning pipeline for automated fish re-identification (Re-ID) using the novel AutoFish dataset, which simulates EM systems with conveyor belts with six similarly looking fish species. We demonstrate that key Re-ID metrics (R1 and mAP@k) are substantially improved by using hard triplet mining in conjunction with a custom image transformation pipeline that includes dataset-specific normalization. By employing these strategies, we demonstrate that the Vision Transformer-based Swin-T architecture consistently outperforms the Convolutional Neural Network-based ResNet-50, achieving peak performance of 41.65% mAP@k and 90.43% Rank-1 accuracy. An in-depth analysis reveals that the primary challenge is distinguishing visually similar individuals of the same species (Intra-species errors), where viewpoint inconsistency proves significantly more detrimental than partial occlusion. The source code and documentation are available at: this https URL

顶级标签: computer vision biology systems
详细标签: re-identification fine-grained classification fisheries monitoring vision transformer electronic monitoring 或 搜索:

面向渔业电子监测:利用细粒度分类实现鱼类视觉重识别 / Towards Visual Re-Identification of Fish using Fine-Grained Classification for Electronic Monitoring in Fisheries


1️⃣ 一句话总结

本研究开发了一个优化的深度学习流程,利用特定数据增强和困难样本挖掘技术,显著提升了在模拟渔业电子监控视频中对六种外观相似鱼类的自动重识别准确率,并发现视觉变换器模型比传统卷积网络表现更优,主要挑战在于区分同物种内外观相似的个体。


源自 arXiv: 2512.08400