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煤矿井下行人检测算法
引用本文:杨清翔,吕晨,冯晨晨,王振宇.煤矿井下行人检测算法[J].工矿自动化,2020,46(1):80-84.
作者姓名:杨清翔  吕晨  冯晨晨  王振宇
作者单位:山西中煤华晋能源有限责任公司王家岭煤矿,山西河津043300;中国矿业大学信息与控制工程学院,江苏徐州 221116
基金项目:国家重点研发计划资助项目(2018YFC0808302)
摘    要:针对井下光照不均匀、行人特征与背景的相似度高等导致基于计算机视觉的行人检测技术在井下应用面临很大挑战的问题,提出采用Faster区域卷积神经网络(RCNN)进行煤矿井下行人检测。Faster RCNN行人检测算法采用区域建议网络(RPN)生成候选区域,RPN与Fast RCNN共享卷积层,以提高网络训练和检测速度;在图像特征提取过程中采用动态自适应池化方法对不同池化域进行自适应池化操作,提高了检测准确性。实验结果表明,该算法对于不同环境下图像中的行人均具有较好的检测效果。

关 键 词:井下行人检测  深度学习  区域卷积神经网络  区域建议网络  共享卷积层  动态自适应池化

Pedestrian detection algorithm of coal mine underground
YANG Qingxiang,LYU Chen,FENG Chenchen,WANG Zhenyu.Pedestrian detection algorithm of coal mine underground[J].Industry and Automation,2020,46(1):80-84.
Authors:YANG Qingxiang  LYU Chen  FENG Chenchen  WANG Zhenyu
Affiliation:(Wangjialing Coal Mine,Shanxi Zhongmei Huajin Energy Co.,Ltd.,Hejin 043300,China;School of Information and Control Engineering,China University of Mining and Technology,Xuzhou 221116,China)
Abstract:Due to uneven underground illumination and high similarity between pedestrian characteristics and background,pedestrian detection technology based on computer vision is facing great challenges in underground application.Faster region convolutional neural networks(RCNN)was proposed for pedestrians detection of coal mine underground.Faster RCNN pedestrian detection algorithm uses region proposal network(RPN)to generate candidate regions.RPN shares convolutional layer with Fast RCNN,so as to improve network training and detection speed.A dynamic self-adaptive pooling method is adopted to perform self-adaptive pooling operation for different pooling domains in the process of image feature extraction,so as to improve detection accuracy.The experimental results show that the algorithm has better detection effect for pedestrian image in different environments.
Keywords:underground pedestrian detection  deep learning  region convolutional neural networks  region proposal network  shared convolutional layer  dynamic self-adaptive pooling
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