基于改进YOLOv8n的水下鱼类目标识别轻量化模型
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S951.2;TP391.41

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国家自然科学基金(52371282)


An improved YOLOv8n based on lightweight model for underwater fish target detection
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National Superficial Fund Project (52371282)

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    摘要:

    针对复杂水下环境中鱼类目标识别精度不足、传统目标识别模型复杂度高、识别速度慢等问题,出现了一种基于改进YOLOv8n的水下鱼类目标识别模型YOLOv8n-fish。本文提出轻量级双卷积模块C2f-DualConv,以改善YOLOv8n中C2f模块的特征学习能力;基于高效的结构重参数化思想设计全新的颈部网络EffQAFPN,以平衡目标模型的识别精度和速度;采用二阶段微调方法,提升水下弱光及干扰物环境下鱼类目标识别模型的识别精度。实验结果表明,YOLOv8n-fish模型在测试集的平均精度为97.47%,较传统YOLOv8n模型提升了1.07%;而改进后模型的参数量、浮点运算量和模型内存占用量仅为原始模型的56.1%、82%和66.7%。YOLOv8n-fish模型的识别速度仅次YOLOv5n-P6,可达到121 帧/s。实验结果表明,YOLOv8n-fish模型在保持高识别精度的同时显著降低计算成本,为水产养殖的智能监测提供有效的技术支持。

    Abstract:

    In order to solve the problems of insufficient accuracy of fish target recognition in complex underwater environment, high complexity and slow recognition speed of traditional target recognition models, an underwater fish target recognition model based on improved YOLOv8n-fish was proposed. In this paper, a lightweight double-convolutional module C2f-DualConv is proposed to improve the feature learning ability of the C2f module in YOLOv8n. Based on the idea of efficient structure reparameterization, a new neck network EffQAFPN was designed to balance the recognition accuracy and speed of the target model. A two-stage fine-tuning method was used to improve the recognition accuracy of the fish target recognition model in the underwater low light and interference environment. The experimental results show that the average accuracy of the YOLOv8n-fish model in the test set is 97.47%, which is 1.07% higher than that of the traditional YOLOv8n model. However, the number of parameters, floating-point arithmetic and model memory occupation of the improved model are only 56.1%, 82% and 66.7% of the original model. The recognition speed of the YOLOv8n-fish model is second only to that of YOLOv5n-P6, which can reach 121 f/s. Experimental results show that the YOLOv8n-fish model can significantly reduce the computational cost while maintaining high recognition accuracy, and provide effective technical support for intelligent monitoring of aquaculture.

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曹宇,李佳阳,王芳.基于改进YOLOv8n的水下鱼类目标识别轻量化模型[J].上海海洋大学学报,2025,34(1):188-200.
CAO Yu, LI Jiayang, WANG Fang. An improved YOLOv8n based on lightweight model for underwater fish target detection[J]. Journal of Shanghai Ocean University,2025,34(1):188-200.

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  • 收稿日期:2024-08-18
  • 最后修改日期:2024-11-30
  • 录用日期:2024-12-02
  • 在线发布日期: 2025-01-22
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