基于视频监控的行人再识别方法研究

Li Yao, Zihan Feng, Tiantian Zhu, Yan Wan
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引用次数: 0

摘要

为了解决非重叠摄像机交叉视点视频序列中的人物识别问题,目前大多数基于深度学习的人物再识别模型要么需要手动标记特征作为其属性,要么需要学习特征表示的整体单一语义层次。本文提出了一种基于DNN的多层次特征融合的人物再识别方法,该方法可以自动学习对观看条件变化不敏感的多层次判别性视觉因素,并在匹配图像时进行识别和利用。首先,本文利用HOG特征分别对两台摄像机的视频进行人物检测。将摄像头a1检测到的人物图像作为探针,摄像头a2检测到的人物图像作为图库,然后将这两部分放入人重识别模型中,通过训练完成。最后,结合KCF算法对重新识别的人进行交叉视图跟踪。实验结果验证了该方法的准确性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research of Pedestrian Re-identification Method Based on Video Surveillance
In order to solve the problem of person recognition in cross-view video sequences of non-overlapping camera, most of the current person re-identification models based on deep learning either need to manually label features as their attributes, or learn the overall single semantic level of feature representation. This paper proposes a person re-identification method based on DNN with multi-level feature fusion, it can automatically learn multi-level discriminative visual factors that are insensitive to viewing condition changes, and identify and utilize them when matching images. Firstly, this paper uses the HOG feature to perform person detection on the video of the two cameras respectively. The person images detected of the camera1 are used as the prob, the person images detected in the camera2 are used as the gallery, and then the two parts are put into the person re-ID model and completed by the training. Finally, the cross-view tracking is implemented for the re-identified persons in combination with the KCF algorithm. The experimental results confirm the accuracy and efficiency of the method.
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