首页 | 本学科首页   官方微博 | 高级检索  
     

基于视频序列的矿卡司机不安全行为识别
引用本文:毕林,周超,姚鑫.基于视频序列的矿卡司机不安全行为识别[J].黄金科学技术,2021,29(1):14-24.
作者姓名:毕林  周超  姚鑫
作者单位:中南大学资源与安全工程学院,湖南 长沙 410083;中南大学数字矿山研究中心,湖南 长沙 410083
基金项目:国家重点研发计划项目“基于大数据的金属矿开采装备智能管控技术研发与示范”(2019YFC0605300)
摘    要:目前许多矿山对于矿卡司机的不安全行为监督仍依赖于人为监管,无法及时准确地发现问题,利用计算机技术识别不安全行为是替代人工检测的一条高效途径.本文利用深度学习来解决视频序列的矿卡司机不安全行为识别,深度学习方法不依赖人工设计特征,而是自适应地学习更好的高维特征,具有稳健性更好、速度更快及准确率更高的优点.首先,对帧图像采...

关 键 词:不安全行为  视频序列  深度学习  矿卡司机  行为识别  双流网络  融合模型
收稿时间:2020-12-09
修稿时间:2021-02-19

Unsafe Behavior Identification of Mining Truck Drivers Based on Video Sequences
Lin BI,Chao ZHOU,Xin YAO.Unsafe Behavior Identification of Mining Truck Drivers Based on Video Sequences[J].Gold Science and Technololgy,2021,29(1):14-24.
Authors:Lin BI  Chao ZHOU  Xin YAO
Affiliation:1.School of Resources and Safety Engineering,Central South University,Changsha 410083,Hunan,China;2.Digital Mine Research Center,Central South University,Changsha 410083,Hunan,China
Abstract:At present,many mines still rely on human supervision to supervise the unsafe behavior of mining truck drivers,and cannot find problems timely and accurately.This consumes a certain amount of manpower and material resources but cannot solve the problem.With the development of computer technology and artificial intelligence technology,more and more fields are beginning to use artificial intelligence technology to supervise the unsafe behavior of mining truck drivers,such as intelligent security,unmanned driving,and intelligent transportation.Behavior recognition is a hot issue in the field of computer vision.Using computer technology to identify unsafe behaviors is an efficient way to replace manual detection.This paper uses deep learning to solve the unsafe behavior recognition of mining truck drivers in video sequences.The traditional deep learning method does not rely on artificial design features,but adaptively learns better high-dimensional features,better robustness,and faster speed,the accuracy rate is higher.Firstly,according to the actual obtained video data,by analyzing the relative position relationship between the camera and the driver’s area,the video is clipped to obtain video data with less redundant information.At the same time,in order to reduce the imbalance of the data samples,by using flipping,methods such as panning and adding noise were used to enhance the data set,and then use Opencv to re-convert the enhanced image data into a video file and use the dense_flow method to obtain an optical flow diagram.Secondly,use the network for training and testing.In order to conduct com-parative experiments,firstly,a traditional classification model that does not consider time sequence information was used for training and testing,and the transfer learning method was used to train Resnet,Xception,and Inception.And fusion of three single models to get a new fusion model.At the same time,the time domain and spatial domain channels of the dual-stream network model are set to the pre-trained VGG16 using migration learning under the consideration of timing information,and the comparison experiment was carried out with the C3D-two-stream proposed in this paper.The experimental results show that the improved Vgg-two-stream model can reach an accuracy rate of 89.539%,and the accuracy rate of the C3D-two-stream model can reach 93.445%.In summary,the C3D-two-stream model proposed in this paper has a high recognition rate.It also proves that for behavior recognition,the acquisition of characteristic information in the time dimension can make the recognition results more accurate,which has important practical significance for the recognition of unsafe behaviors of mining truck drivers.
Keywords:unsafe behavior  video sequence  deep learning  mining truck driver  behavior recognition  two stream network  fusion model  
本文献已被 万方数据 等数据库收录!
点击此处可从《黄金科学技术》浏览原始摘要信息
点击此处可从《黄金科学技术》下载全文
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号