基于深度的人物再识别

Ancong Wu, Weishi Zheng, J. Lai
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引用次数: 5

摘要

人物重新识别的目的是在不重叠的镜头视图中匹配人物。为此,大多数作品利用外表线索,假设衣服的颜色在短期内具有歧视性。然而,当人们出现在极端光照下或换衣服时,基于外表的方法往往会失败。幸运的是,深度图像提供了更多不受光照和颜色影响的不变的身体形状和骨骼信息,但迄今为止基于深度的方法很少。本文提出了一种基于协方差的旋转不变性三维描述子特征深度来描述行人的身体形状,并从理论上证明了旋转不变性的性质。它对轻微的形状变化不敏感,对颜色变化和背景不敏感。我们将描述符与基于骨骼的特征相结合,以获得人体的完整表示。在RGBD-ID和BIWIRGBD-ID数据集上验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Depth-based person re-identification
Person re-identification aims to match people across non-overlapping camera views. For this purpose, most works exploit appearance cues, assuming that the color of clothes is discriminative in short term. However, when people appear in extreme illumination or change clothes, appearance-based methods tend to fail. Fortunately, depth images provide more invariant body shape and skeleton information regardless of illumination and color, but only a few depth-based methods have been developed so far. In this paper, we propose a covariance-based rotation invariant 3D descriptor called Eigen-depth to describe pedestrian body shape and the property of rotation invariance is proven in theory. It is also insensitive to slight shape change and invariant to color change and background. We combine our descriptor with skeleton-based feature to get a complete representation of human body. The effectiveness is validated on RGBD-ID and BIWIRGBD-ID datasets.
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