用于在自然水域环境中探测鱼类的改进型 YOLOv8n

Animals Pub Date : 2024-07-09 DOI:10.3390/ani14142022
Zehao Zhang, Yi Qu, Tan Wang, Yuan Rao, Dan Jiang, Shaowen Li, Yating Wang
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引用次数: 0

摘要

为了提高渔业调查的探测效率和降低成本消耗,基于计算机视觉的目标探测方法已成为渔业资源调查的一种新方法。然而,水下摄影的专业性和复杂性导致其探测精度较低,限制了其在渔业资源调查中的应用。为了解决这些问题,本研究提出了一种名为 BSSFISH-YOLOv8 的精确方法,用于自然水下环境中的鱼类检测。首先,用 SPD-Conv 模块替换原有的卷积模块,使模型丢失的细粒度信息更少。其次,在骨干网络中添加了动态稀疏关注技术 BiFormer,该技术可增强模型对输入特征中关键信息的关注,同时还能优化检测效率。最后,增加了一个 160 × 160 小目标检测层(STDL),提高了对较小目标的灵敏度。该模型在 mAP@50 和 mAP@50:95 两项指标上的得分率分别为 88.3% 和 58.3%,比 YOLOv8n 模型分别高出 2.0% 和 3.3%。该研究成果可应用于渔业资源调查,降低测量成本,提高检测效率,带来环境和经济效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved YOLOv8n Used for Fish Detection in Natural Water Environments
To improve detection efficiency and reduce cost consumption in fishery surveys, target detection methods based on computer vision have become a new method for fishery resource surveys. However, the specialty and complexity of underwater photography result in low detection accuracy, limiting its use in fishery resource surveys. To solve these problems, this study proposed an accurate method named BSSFISH-YOLOv8 for fish detection in natural underwater environments. First, replacing the original convolutional module with the SPD-Conv module allows the model to lose less fine-grained information. Next, the backbone network is supplemented with a dynamic sparse attention technique, BiFormer, which enhances the model’s attention to crucial information in the input features while also optimizing detection efficiency. Finally, adding a 160 × 160 small target detection layer (STDL) improves sensitivity for smaller targets. The model scored 88.3% and 58.3% in the two indicators of mAP@50 and mAP@50:95, respectively, which is 2.0% and 3.3% higher than the YOLOv8n model. The results of this research can be applied to fishery resource surveys, reducing measurement costs, improving detection efficiency, and bringing environmental and economic benefits.
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