Please wait a minute...
吉林化工学院学报, 2024, 41(5): 22-29     https://doi.org/10.16039/j.cnki.cn22-1249.2024.05.005
  本期目录 | 过刊浏览 | 高级检索 |
基于改进YOLOv5的仿生机器鱼目标检测算法研究
王影1,孙可欣1,刘振刚2,高康盛1,刘麒1*
1.吉林化工学院 信息与控制工程学院,吉林 吉林 132022;
2. 史陶比尔(杭州)精密机械电子有限公司,浙江 杭州 310018

Research on Bionic Robotic Fish Object Detection Algorithm based on Improved YOLOv5
WANG Ying1,SUN Kexin1,LIU Zhengang2,GAO Kangsheng1,LIU Qi1#br#
#br#
1. School of Information and Control Engineering,Jilin Institute of Chemical Technology,Jilin City 132022,China
2. Stauber (Hangzhou) Precision Mechanical Electronics Co., Ltd, Hangzhou 310018, China

下载:  PDF (4214KB) 
输出:  BibTeX | EndNote (RIS)      
摘要 为满足仿生机器鱼目标检测的需要,在YOLOv5基础上提出了一种轻量级检测算法,降低算法复杂度并提高精度。首先对YOLOv5s模型进行改进,通过GhostConv和C3Ghost模块降低参数量和计算量。其次,引入CA和CoordConv模块增强特征提取和目标位置感知能力,采用soft NMS减少使用传统非极大抑制(Non Maximum Suppression,NMS)带来的漏检、误检,同时使用MPDIoU简化相似性比较,提升检测精度和召回率。最后,所提出方法在目标检测数据集上的实验结果表明,改进的YOLOv5网络体积更小、精度更高,证明了该算法的有效性和优越性。
服务
把本文推荐给朋友
加入引用管理器
E-mail Alert
RSS
作者相关文章
王影
孙可欣
刘振刚
高康盛
刘麒
关键词:  改进YOLOv5  仿生机器鱼  目标检测    
Abstract: To meet the needs of object detection for biomimetic robotic fish, a lightweight detection algorithm based on YOLOv5 is proposed to reduce algorithm complexity and improve accuracy. First, improvements are made to the YOLOv5s model by using GhostConv and C3Ghost modules to reduce the number of parameters and computational load. Second, CA and CoordConv modules are introduced to enhance feature extraction and target position perception capabilities, and soft NMS is used to reduce missed and false detections caused by traditional Non-Maximum Suppression (NMS). Additionally, MPDIoU is used to simplify similarity comparison, improving detection accuracy and recall rate. Finally, experimental results on the object detection dataset show that the improved YOLOv5 network is smaller in size and higher in accuracy, demonstrating the effectiveness and superiority of the proposed algorithm.
Key words:  YOLOv5 improvement    bionic robotic fish    object detection.
               出版日期:  2024-05-25      发布日期:  2024-05-25      整期出版日期:  2024-05-25
ZTFLH:  TP391.41  
  TP242  
引用本文:    
王影, 孙可欣, 刘振刚, 高康盛, 刘麒. 基于改进YOLOv5的仿生机器鱼目标检测算法研究[J]. 吉林化工学院学报, 2024, 41(5): 22-29.
WANG Ying, SUN Kexin, LIU Zhengang, GAO Kangsheng, LIU Qi. Research on Bionic Robotic Fish Object Detection Algorithm based on Improved YOLOv5. Journal of Jilin Institute of Chemical Technology, 2024, 41(5): 22-29.
链接本文:  
http://xuebao.jlict.edu.cn/CN/10.16039/j.cnki.cn22-1249.2024.05.005  或          http://xuebao.jlict.edu.cn/CN/Y2024/V41/I5/22
[1] 李双远, 刘向阳. 基于改进的Faster R-CNN算法建筑领域裂缝检测研究[J]. 吉林化工学院学报, 2024, 41(5): 50-53.
[2] 董如意, 崔冉. 基于YOLOV5L的交通信号灯识别研究 [J]. 吉林化工学院学报, 2023, 40(9): 37-42.
[3] 刘麒, 盛德庆, 孙万龙, 王影.

基于改进YOLOv5s的水果目标检测研究 [J]. 吉林化工学院学报, 2023, 40(7): 34-41.

[4] 刘麒, 高康盛, 孙万龙, 叶泽, 王影. 多关节仿生机器鱼建模分析与仿真 [J]. 吉林化工学院学报, 2023, 40(11): 26-31.
[5] 李双远 , 刘向阳. 基于CiteSpace国内外目标检测安全帽的可视化分析 [J]. 吉林化工学院学报, 2022, 39(11): 48-54.
No Suggested Reading articles found!
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed