MCG-YOLOv8n: An Enhanced YOLOv8n Model for Segmentation of Adherent Buckwheat Seeds

被引:0
|
作者
Guan, Shuaiming [1 ]
Lv, Shaozhong [1 ]
机构
[1] Inner Mongolia University of Technology, College of Information Engineering, Hohhot,010080, China
关键词
Buckling behavior - Buckling modes - Image segmentation;
D O I
10.1109/ACCESS.2024.3460174
中图分类号
学科分类号
摘要
To address the challenge of detecting adherent seeds in images of dehuller discharge from buckwheat processing, this study proposes an innovative approach using an enhanced YOLOv8n architecture, termed MCG-YOLOv8n. This model is specifically tailored for precise segmentation of adherent buckwheat seed objects. It incorporates the MobileViT v3 Block into the YOLOv8n-seg backbone network to enhance the feature extraction capability in densely distributed seed areas. At the feature fusion layer, the model incorporates the Generalized Feature Pyramid Network (GFPN) structure for cross-scale feature fusion, coupled with Coordinate Attention (CA) to elevate the detection accuracy of smaller targets. Additionally, the Minimum Point Distance Intersection over Union (MPDIoU) was employed to strengthen the model's generalization ability and mitigate the issue of missed detections caused by dense adherent seeds. Experimental results demonstrate the superior performance of the MCG-YOLOv8n model, achieving high precision (94.70%), recall (93.20%), and mean average precision (mAP@0.5: 95.20%), outperforming other mainstream segmentation models. The analysis of the segmentation results for images, with seed counts ranging from 66 to 435 and a size of 512× 512 pixels, revealed a weighted error rate of 0.70% in counting, with an average detection time of 0.017 s per image. Consequently, the MCG-YOLOv8n model can accurately and rapidly detect high-throughput adherent buckwheat seeds, providing substantial support for the development of online detection systems and deployment on portable mobile devices. © 2013 IEEE.
引用
下载
收藏
页码:131968 / 131981
相关论文
共 50 条
  • [31] 改进YOLOv8n的林业害虫检测方法
    陈万志
    袁航
    北京林业大学学报, 2025, 47 (02) : 119 - 131
  • [32] Improved YOLOv8n Model for Detecting Helmets and License Plates on Electric Bicycles
    Mu, Qunyue
    Yu, Qiancheng
    Zhou, Chengchen
    Liu, Lei
    Yu, Xulong
    CMC-COMPUTERS MATERIALS & CONTINUA, 2024, 80 (01): : 449 - 466
  • [33] 基于改进YOLOv8n的茶树嫩芽识别
    杨肖委
    沈强
    罗金龙
    张拓
    杨婷
    戴宇樵
    刘忠英
    李琴
    王家伦
    茶叶科学, 2024, 44 (06) : 949 - 959
  • [34] Lightweight enhanced YOLOv8n underwater object detection network for low light environments
    Jifeng Ding
    Junquan Hu
    Jiayuan Lin
    Xiaotong Zhang
    Scientific Reports, 14 (1)
  • [35] Improvement of Nighttime Vehicle Detection Algorithm Based on YOLOv8n
    Wei, Sen
    Yu, Shaoyong
    PROCEEDINGS OF 2024 INTERNATIONAL CONFERENCE ON COMPUTER AND MULTIMEDIA TECHNOLOGY, ICCMT 2024, 2024, : 430 - 436
  • [36] A lightweight coal gangue detection method based on multispectral imaging and enhanced YOLOv8n
    Yan, Pengcheng
    Wang, Wenchang
    Li, Guodong
    Zhao, Yuting
    Wang, Jingbao
    Wen, Ziming
    MICROCHEMICAL JOURNAL, 2024, 199
  • [37] FP-YOLOv8: Surface Defect Detection Algorithm for Brake Pipe Ends Based on Improved YOLOv8n
    Rao, Ke
    Zhao, Fengxia
    Shi, Tianyu
    Sensors, 2024, 24 (24)
  • [38] YOLOv8-DEL:基于改进YOLOv8n的实时车辆检测算法研究
    古佳欣
    陈高华
    张春美
    计算机工程与应用, 2025, 61 (01) : 142 - 152
  • [39] LKStar-Yolov8n: an autonomous driving object detection algorithm based on large convolution kernel star structure of Yolov8n
    Yang Sun
    Jiushuai Zheng
    Haiyang Wang
    Yuhang Zhang
    Jianhua Guo
    Haonan Ning
    Signal, Image and Video Processing, 2025, 19 (3)
  • [40] A Lightweight Model of Underwater Object Detection Based on YOLOv8n for an Edge Computing Platform
    Fan, Yibing
    Zhang, Lanyong
    Li, Peng
    JOURNAL OF MARINE SCIENCE AND ENGINEERING, 2024, 12 (05)