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Accordion Representation Based Multi-scale Covariance Descriptor for Multi-shot Person Re-identification

机译:基于手风琴表示的多尺度人物方差多尺度协方差描述子

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Multi-shot person re-identification is a major challenge because of the large variations in a human's appearance caused by different types of noise such as occlusion, viewpoint and illumination variations. In this paper, we presented the accordion representation based multi-scale covariance descriptor, called AR-MSCOV descriptor, which considers in the first step an image sequence containing a walking human to convert it in one image with the accordion representation. To better exploit the spatial and temporal correlation of the video sequence and to deal with the different types of noise, it applies quadtree decomposition and extracts multi-scale appearance features such as color, gradient and Gabor in a simple pass. This AR-MSCOV descriptor merges the static regions and captures the moving regions of interest. Therefore, it implicitly encodes the described human gait as a behavioral biometric with the appearance features through the accordion representation to reliably identify any person in motion. We evaluated the AR-MSCOV descriptor on the PRID 2011 multi-shot dataset and demonstrated a good performance in comparison with the current state-of-the-art.
机译:由于不同类型的噪声(例如遮挡,视点和照明变化)导致人的外观变化很大,因此多次拍摄人的重新识别是一项重大挑战。在本文中,我们介绍了基于手风琴表示的多尺度协方差描述符,称为AR-MSCOV描述符,该描述符在第一步中考虑了一个包含行走人的图像序列,并将其转换为具有手风琴表示的图像。为了更好地利用视频序列的空间和时间相关性并处理不同类型的噪声,它应用四叉树分解并以简单的方式提取多尺度外观特征,例如颜色,渐变和Gabor。该AR-MSCOV描述符合并静态区域并捕获感兴趣的运动区域。因此,它通过手风琴表示将描述的人类步态隐式编码为具有外观特征的行为生物特征,以可靠地识别运动中的任何人。我们在PRID 2011多重数据集上评估了AR-MSCOV描述符,并证明了与当前最新技术相比的良好性能。

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