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Video-Based Hierarchical Species Classification for Longline Fishing Monitoring

机译:基于视频的分层物种延长钓鱼监控分类

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The goal of electronic monitoring (EM) of longline fishing is to monitor the fish catching activities on fishing vessels, either for the regulatory compliance or catch counting. Hierarchical classification based on videos allows for inexpensive and efficient fish species identification of catches from longline fishing, where fishes are under severe deformation and self-occlusion during the catching process. More importantly, the flexibility of hierarchical classification mitigates the laborious efforts of human reviews by providing confidence scores in different hierarchical levels. Some related works either use cascaded models for hierarchical classification or make predictions per image or predict one overlapping hierarchical data structure of the dataset in advance. However, with a known non-overlapping hierarchical data structure provided by fisheries scientists, our method enforces the hierarchical data structure and introduces an efficient training and inference strategy for video-based fisheries data. Our experiments show that the proposed method outperforms the classic flat classification system significantly and our ablation study justifies our contributions in CNN model design, training strategy, and the video-based inference schemes for the hierarchical fish species classification task.
机译:延绳钓捕捞的电子监测(EM)的目标是监测渔船上的鱼类捕捞活动,用于监管合规或捕获计数。基于视频的分层分类允许从延绳钓捕捞的捕捞量识别廉价且有效的鱼类识别,而鱼类在捕获过程中受到严重变形和自动阻塞的影响。更重要的是,分层分类的灵活性通过提供不同分层水平的置信分数来减轻人类审查的艰苦努力。一些相关的作品使用级联模型进行分级分类或者每张图像进行预测或预先预测数据集的一个重叠分层数据结构。然而,通过渔业科学家提供的已知的非重叠分层数据结构,我们的方法强制执行分层数据结构,并为基于视频的渔业数据引入有效的培训和推理策略。我们的实验表明,该方法显着优于经典的平面分类系统,我们的消融研究证明了我们在CNN模型设计,培训策略和分层鱼类分类任务中基于视频推断方案的贡献。

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