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基于CAI-YOLO算法的鲫鱼病害图像识别方法

武慧霞 冯全 赵建

渔业现代化2026,Vol.53Issue(2):128-139,12.
渔业现代化2026,Vol.53Issue(2):128-139,12.DOI:10.26958/j.cnki.1007-9580.2026.02.013

基于CAI-YOLO算法的鲫鱼病害图像识别方法

A Carassius auratus disease image recognition method based on the CAI-YOLO algorithm

武慧霞 1冯全 1赵建2

作者信息

  • 1. 甘肃农业大学机电工程学院,甘肃兰州 730070
  • 2. 浙江大学生物系统工程与食品科学学院,浙江 杭州 310058
  • 折叠

摘要

Abstract

To address the challenges of low detection accuracy and high false positive rates caused by the complex morphology,significant scale variations,and blurred boundaries of lesion areas in Carassius auratus diseases,this paper proposes a novel recognition model named CAI-YOLO based on the YOLOv11 framework.First,the backbone network incorporates the ConvNeXt V2 module.This module utilizes a self-supervised pre-training strategy based on Masked Auto Encoders and introduces a Global Response Normalization layer,effectively mitigating feature collapse and enhancing feature diversity.Second,the neck network integrates AKConv,which leverages an adaptive sampling mechanism to improve the model's multi-scale modeling capability for irregular disease spots.Finally,the loss function employs IF-IOU,which combines the internal constraints of Inner-IOU with the re-weighting mechanism of Focaler-IOU,thereby accelerating model convergence and improving localization accuracy.Experiments conducted on a self-built Carassius auratus disease dataset show that the CAI-YOLO model achieves Precision,Recall,mAP@0.5,and mAP@0.5:0.95 of 85.6%,87.8%,86.7%,and 58.6%,respectively.Compared to the baseline YOLOv11n,the mAP@0.5 and mAP@0.5:0.95 are increased by 0.9 and 1.1 percentage points,respectively.Furthermore,the number of parameters,computational complexity,and model size are reduced by 10.89%,8.19%,and 7.84%,respectively.The research demonstrates that the CAI-YOLO model effectively enhances overall detection performance while simultaneously reducing computational resource requirements,providing a valuable reference for the lightweight design and practical application of Carassius auratus disease detection systems.

关键词

鲫鱼/病害检测/目标检测/YOLO/深度学习

Key words

Carassius auratus/disease detection/object detection/YOLO/deep learning

分类

农业科技

引用本文复制引用

武慧霞,冯全,赵建..基于CAI-YOLO算法的鲫鱼病害图像识别方法[J].渔业现代化,2026,53(2):128-139,12.

基金项目

国家现代农业产业技术体系专项项目—国家大宗淡水鱼产业技术体系项目(CARS45-24) (CARS45-24)

渔业现代化

1007-9580

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