Pedestrian Detection Method Based on Faster R-CNN

Hui Zhang, Yu Du, Shu Ning, Yonghua Zhang, Shuo Yang, Chengpeng Du
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引用次数: 34

Abstract

Pedestrian detection based on computer vision is an important branch of object recognition, which is applied to intelligent monitoring, intelligent driving, robot and so on. At present, many pedestrian detection methods are proposed. However, because of the complexity of the background, pedestrian posture diversity and pedestrian occlusions, pedestrian detection is still a challenge which calls for precise algorithms. In this paper, the fast Region-based Convolutional Neural Network (Faster R-CNN) is used. Firstly, image features were extracted by CNN. After that, we built up a Region Proposal Network to extract regions that might contain pedestrians combined with K-means cluster analysis. And the region is identified and classified by detection network. Finally, the method was tested in the INRIA data set. The results show that the method of pedestrian detection based on Faster R-CNN, which achieves the accuracy of 92.7%, performs better, compared with other algorithms.
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基于更快R-CNN的行人检测方法
基于计算机视觉的行人检测是物体识别的一个重要分支,应用于智能监控、智能驾驶、机器人等领域。目前,人们提出了许多行人检测方法。然而,由于背景的复杂性、行人姿态的多样性和行人遮挡,行人检测仍然是一个挑战,需要精确的算法。本文采用基于快速区域的卷积神经网络(Faster R-CNN)。首先,通过CNN提取图像特征。然后,结合K-means聚类分析,构建区域建议网络,提取可能包含行人的区域。通过检测网络对区域进行识别和分类。最后,在INRIA数据集上对该方法进行了验证。结果表明,与其他算法相比,基于Faster R-CNN的行人检测方法表现更好,准确率达到92.7%。
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