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Fast object detection based on binary deep convolution neural networks

         

摘要

In this study,a fast object detection algorithm based on binary deep convolution neural networks(CNNs)is proposed.Convolution kernels of different sizes are used to predict classes and bounding boxes of multi-scale objects directly in the last feature map of a deep CNN.In this way,rapid object detection with acceptable precision loss is achieved.In addition,binary quantisation for weight values and input data of each layer is used to squeeze the networks for faster object detection.Compared to full-precision convolution,the proposed binary deep CNNs for object detection results in 62 times faster convolutional operations and 32 times memory saving in theory,what’s more,the proposed method is easy to be implemented in embedded computing systems because of the binary operation for convolution and low memory requirement.Experimental results on Pascal VOC2007 validate the effectiveness of the authors’proposed method.

著录项

  • 来源
    《智能技术学报》 |2018年第4期|P.191-197|共7页
  • 作者单位

    [1]Research Centre of Precision Sensing and Control;

    Institute of Automation;

    Chinese Academy of Sciences;

    95 Zhongguancun East Road;

    Haidian District;

    Beijing;

    People’s Republic of China;

    [2]University of Chinese Academy of Science;

    19;

    Yuquan Road;

    Shijingshan District;

    Beijing;

    People’s Republic of China;

    [1]Research Centre of Precision Sensing and Control;

    Institute of Automation;

    Chinese Academy of Sciences;

    95 Zhongguancun East Road;

    Haidian District;

    Beijing;

    People’s Republic of China;

    [2]University of Chinese Academy of Science;

    19;

    Yuquan Road;

    Shijingshan District;

    Beijing;

    People’s Republic of China;

    [1]Research Centre of Precision Sensing and Control;

    Institute of Automation;

    Chinese Academy of Sciences;

    95 Zhongguancun East Road;

    Haidian District;

    Beijing;

    People’s Republic of China;

    [2]University of Chinese Academy of Science;

    19;

    Yuquan Road;

    Shijingshan District;

    Beijing;

    People’s Republic of China;

    [1]Research Centre of Precision Sensing and Control;

    Institute of Automation;

    Chinese Academy of Sciences;

    95 Zhongguancun East Road;

    Haidian District;

    Beijing;

    People’s Republic of China;

    [2]University of Chinese Academy of Science;

    19;

    Yuquan Road;

    Shijingshan District;

    Beijing;

    People’s Republic of China;

    [1]Research Centre of Precision Sensing and Control;

    Institute of Automation;

    Chinese Academy of Sciences;

    95 Zhongguancun East Road;

    Haidian District;

    Beijing;

    People’s Republic of China;

    [2]University of Chinese Academy of Science;

    19;

    Yuquan Road;

    Shijingshan District;

    Beijing;

    People’s Republic of China;

    [1]Research Centre of Precision Sensing and Control;

    Institute of Automation;

    Chinese Academy of Sciences;

    95 Zhongguancun East Road;

    Haidian District;

    Beijing;

    People’s Republic of China;

    [2]University of Chinese Academy of Science;

    19;

    Yuquan Road;

    Shijingshan District;

    Beijing;

    People’s Republic of China;

  • 原文格式 PDF
  • 正文语种 CHI
  • 中图分类 文化、科学、教育、体育;
  • 关键词

    memory saving;

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