期刊文献+
共找到3篇文章
< 1 >
每页显示 20 50 100
基于YOLOv5改进的铁路工人安全帽检测算法研究 被引量:6
1
作者 周瑶 周石 《计算机测量与控制》 2024年第3期71-78,175,共9页
目前铁路上普遍采用人工监督方式来检测工人是否佩戴安全帽,但监督范围过大,在实践中不能及时跟踪和管理所有工作人员;因此针对该问题,采用深度学习目标检测的方法,通过改进YOLOv5s目标检测算法来实现铁路工人是否佩戴安全帽和穿戴背心... 目前铁路上普遍采用人工监督方式来检测工人是否佩戴安全帽,但监督范围过大,在实践中不能及时跟踪和管理所有工作人员;因此针对该问题,采用深度学习目标检测的方法,通过改进YOLOv5s目标检测算法来实现铁路工人是否佩戴安全帽和穿戴背心;具体来说,以YOLOv5s算法为基础,采用GhostNet模块替换原始网络中的卷积Conv,提高模型的实时检测速度;采用更高效简单的多尺度特征融合BiFPN,使特征融合方式更加简单高效,以提高检测速度和降低模型复杂度;把原始的CIOU损失函数替换为SIOU损失函数,以提高模型精度;研究结果表明,改进的YOLOv5s-GBS算法的准确率和识别效率可达到95.7%和每秒45帧,并且模型大小减少了一半,准确率提高了4.5%。 展开更多
关键词 安全帽 深度学习 BiFPN SIOU损失函数 yolov5s-gbs算法
在线阅读 下载PDF
Automatic body condition scoring system for dairy cows in group state based on improved YOLOv5 and video analysis
2
作者 Jingwen Li Pengbo Zeng +3 位作者 Shuai Yue Zhiyang Zheng Lifeng Qin Huaibo Song 《Artificial Intelligence in Agriculture》 2025年第2期350-362,共13页
This study proposes an automated scoring system for cow body condition using improved YOLOv5 to assess the body condition distribution of herd cows,which significantly impacts herd productivity and feeding management.... This study proposes an automated scoring system for cow body condition using improved YOLOv5 to assess the body condition distribution of herd cows,which significantly impacts herd productivity and feeding management.A dataset was created by capturing images of the cow's hindquarters using an image sensor at the entrance of the milking hall.This system enhances feature extraction ability by introducing dual path networks and convolutional block attention modules and improves efficiency by replacing some modules from the standard YOLOv5s with deep separable convolution to reduce parameters.Furthermore,the system employs an automatic detection and segmentation algorithm to achieve individual cow segmentation and body condition acquisition in the video.Subsequently,the system computes the body condition distribution of cows in a group state.The experimental findings demonstrate that the proposed model outperforms the original YOLOv5 network with higher accuracy and fewer computations and parameters.The precision,recall,and mean average precision of the model are 94.3%,92.5%,and 91.8%,respectively.The algorithm achieved an overall detection rate of 94.2%for individual cow segmentation and body condition acquisition in the video,with a body condition scoring accuracy of 92.5%among accurately detected cows and an overall body condition scoring accuracy of 87.1%across the 10 video tests. 展开更多
关键词 BCS Distribution statistics yolov5 Segmentation algorithm Dairy cows
原文传递
YOLO-Banana:An Effective Grading Method for Banana Appearance Quality
3
作者 Dianhui Mao Xuesen Wang +3 位作者 Yiming Liu Denghui Zhang Jianwei Wu Junhua Chen 《Journal of Beijing Institute of Technology》 EI CAS 2023年第3期363-373,共11页
The increasing trend towards independent fruit packaging demands a high appearance quality of individually packed fruits.In this paper,we propose an improved YOLOv5-based model,YOLO-Banana,to effectively grade banana ... The increasing trend towards independent fruit packaging demands a high appearance quality of individually packed fruits.In this paper,we propose an improved YOLOv5-based model,YOLO-Banana,to effectively grade banana appearance quality based on the number of banana defect points.Due to the minor and dense defects on the surface of bananas,existing detection algorithms have poor detection results and high missing rates.To address this,we propose a densitybased spatial clustering of applications with noise(DBSCAN)and K-means fusion clustering method that utilizes refined anchor points to obtain better initial anchor values,thereby enhancing the network’s recognition accuracy.Moreover,the optimized progressive aggregated network(PANet)enables better multi-level feature fusion.Additionally,the non-maximum suppression function is replaced with a weighted non-maximum suppression(weighted NMS)function based on distance intersection over union(DIoU).Experimental results show that the model’s accuracy is improved by 2.3%compared to the original YOLOv5 network model,thereby effectively grading the banana appearance quality. 展开更多
关键词 yolov5 banana appearance grading clustering algorithm weighted non-maximum suppression(weighted NMS) progressive aggregated network(PANet)
在线阅读 下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部