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首页> 外文期刊>International Journal of Multimedia Information Retrieval >Multi-frame twin-channel descriptor for person re-identification in real-time surveillance videos
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Multi-frame twin-channel descriptor for person re-identification in real-time surveillance videos

机译:用于人员重新识别的多帧双通道描述符在实时监视视频中重新识别

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AbstractAutomatic re-identification of people entering the camera network is an important and challenging task. Multiple frames of the same person will be easily available in surveillance videos for re-identification. Dealing with pose variations of the person in the image and partial occlusion issues is major challenge in single-frame re-identification process. The use of more frames from the surveillance videos can generate robust descriptor to tackle issues of pose variations and occlusion. In this paper, we have emphasized on using multiple frames from the same video to generate a multi-frame twin-channel descriptor. The work deals with building a spatial-temporal descriptor which takes advantage of the twin paths to extract features of the person image. Mahalanobis distance metric learning algorithms is used for matching and evaluation. Our descriptor is evaluated on two benchmark datasets and found to surpass the performance of the existing methods.
机译:<标题>抽象 ara id =“par1”>自动重新识别进入相机网络的人是一个重要且具有挑战性的任务。在监控视频中可以轻松获得同一个人的多个帧以重新识别。处理图像中的人的姿势变化以及部分闭塞问题是单帧重新识别过程中的主要挑战。使用来自监视视频的更多帧可以生成强大的描述符来解决姿势变化和遮挡的问题。在本文中,我们已经强调使用来自相同视频的多个帧来生成多帧双通道描述符。该工作涉及构建空间 - 时间描述符,该空间描述符利用双路径来提取人物图像的特征。 Mahalanobis距离度量学习算法用于匹配和评估。我们的描述符在两个基准数据集上进行评估,发现超出现有方法的性能。

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