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Smart Agriculture ›› 2026, Vol. 8 ›› Issue (2): 98-117.doi: 10.12133/j.smartag.SA202508023

• 专题--多源遥感驱动数字农业创新与实践 • 上一篇    下一篇

CAGE-YOLO: 基于遥感影像的水产养殖网箱高密度小目标检测模型

张文博1, 江一珏1, 宋巍1, 贺琪1(), 张文博2   

  1. 1. 上海海洋大学信息学院,上海 200120,中国
    2. 上海海洋大学水产与生命学院,上海 200120,中国
  • 收稿日期:2025-08-26 出版日期:2026-03-30
  • 作者简介:

    张文博,博士,副教授,研究方向为智慧农业。E-mail:

  • 通信作者:
    贺 琪,博士,教授,研究方向为智慧农业。E-mail:

CAGE-YOLO: A Dense Small Object Detection Model for Aquaculture Net Cages Based on Remote Sensing Images

ZHANG Wenbo1, JIANG Yijue1, SONG Wei1, HE Qi1(), ZHANG Wenbo2   

  1. 1. College of Information Technology, Shanghai Ocean University, Shanghai 201306, China
    2. College of Fisheries and Life Science, Shanghai Ocean University, Shanghai 201306, China
  • Received:2025-08-26 Online:2026-03-30
  • Foundation items:国家重点研发计划项目(2024YFD2400404); 国家自然科学基金(62102243,42376194); 上海市科委扬帆计划(21YF1417000)
  • About author:

    ZHANG Wenbo, E-mail:

  • Corresponding author:
    HE Qi, E-mail:

摘要:

【目的/意义】 针对复杂背景下密集且小尺度海水网箱目标检测困难的问题,本研究构建专用数据集并设计具有针对性的检测模型,以提升在实际养殖管理中的识别精度与鲁棒性。 【方法】 基于来自澳大利亚、加拿大、智利、克罗地亚、希腊、中国及法罗群岛七个具有代表性的海水养殖区域的高分辨率遥感影像,构建了海水网箱数据集;提出了基于 YOLOv5的Cage-YOLO 深度学习检测模型,用于密集小目标网箱的自动识别。首先,引入自适应密集感知算法,自动选择并生成反映小型网箱密集分布特征的特征图;其次,集成改进的快速空间金字塔池化模块,有效减少背景噪声干扰并增强全局特征提取能力;最后,加入混合注意力模块,进一步提升模型对密集小目标的感知能力。 【结果和讨论】 实验结果表明,Cage-YOLO在精度、召回率及平均精度方面分别较原始YOLOv5提升了5.6、21.8和17.4个百分点。模型体积保持为16.9 MB,兼具优越性能与良好的部署优势。 【结论】 本研究为密集小目标检测提供了一种有效的新方法,并为海洋网箱养殖的智能化管理提供了重要的技术支持。

关键词: 水产养殖网箱, 小目标检测, 自适应密集感知算法, 增强型快速空间金字塔池化, 混合注意力模块

Abstract:

[Objective] Detecting dense and small aquaculture net cages in complex backgrounds is difficult, the purpose of this study is to build a specialized dataset and design a targeted detection model that enhances recognition accuracy and robustness for practical aquaculture management. [Methods] A dataset of aquaculture net cages was constructed using high-resolution remote sensing imagery collected from seven representative farming regions (Australia, Canada, Chile, Croatia, Greece, China, and the Faroe Islands), and Cage-YOLO, a deep learning model based on YOLOv5, was proposed for detecting dense and small aquaculture net cages. First, an adaptive dense perception algorithm was introduced, which automatically selects and generates feature maps that reflect the high-density distribution of small aquaculture net cages. Second, an enhanced module based on spatial pyramid pooling fast was integrated to effectively reduce background noise interference and improve global feature extraction capabilities. Finally, a mixed attention block was incorporated to further enhance the model's perception of dense and small objects. [Results and Discussions] Experimental results showed that the proposed Cage-YOLO achieved improvements over the original YOLOv5 in terms of precision, recall, and mean average precision by 5.6, 21.8, and 17.4 percentage points, respectively. The model size was maintained at 16.9 MB, demonstrating both strong performance and deployment advantages. [Conclusions] This study provides a new approach for dense and small object detection and offers technical support for the intelligent management of marine cage aquaculture.

Key words: aquaculture net cage, small object detection, adaptive dense perception algorithm, enhancement spatial pyramid pooling, mix attention block

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