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YOLO-Fish Class: A Taxonomic Model for Underwater Economic Fish with Excellent Performance  ( EI收录)  

文献类型:期刊文献

英文题名:YOLO-Fish Class: A Taxonomic Model for Underwater Economic Fish with Excellent Performance

作者:Liu, Mingxin[1,2]; Zhao, Zexin[1]; Li, Ruixin[3]; Lin, Cong[1,2]

机构:[1] School of Electronics and Information Engineering, Guangdong Ocean University, Zhanjiang, China; [2] Guangdong Provincial Key Laboratory of Intelligent Equipment for South China Sea Marine Ranching, Zhanjiang, 524088, China; [3] College of Naval Architecture and Shipping, Guangdong Ocean University, Zhanjiang, China

年份:2025

期号:2025

起止页码:1494

外文期刊名:Proceedings of the International Conference on Computer Supported Cooperative Work in Design, CSCWD

收录:EI(收录号:20253018860336)

语种:英文

外文关键词:Classification (of information) - Computer vision - Fish detectors - Fisheries - Information systems - Intelligent systems - Morphology - Object detection

外文摘要:In this study, we propose a novel algorithm architecture, YOLO Fish Class (YOLO-FC), for the multi-category classification of economic fish in the underwater environment. Based on the YOLOv8 object detection framework, the model can accurately classify a variety of fish in the polyculture scene. To improve the model's ability to distinguish fine-grained fish features, we introduced the Super Shuffle Attention module and the DCNv3 Plus module. The Super Shuffle Attention module enhances the ability to capture subtle features of fish, while the DCNv3 Plus module solves the problem of deformation of fish body morphology. In addition, we use the EIoU loss function to improve the training efficiency and detection accuracy. Experimental results show that compared with the existing methods, the proposed YOLO-FC shows excellent performance in mAP, precision, recall and frame rate. This study provides a solid foundation for intelligent feeding systems in aquaculture. ? 2025 IEEE.

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