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Cross-context Analysis for Long-term View-point Invariant Person Re-identification via Soft-biometrics using Depth Sensor

机译:使用深度传感器通过软生物测量测量的长期视图点不变人员重新识别的跨上下文分析

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We propose a novel methodology for cross-context analysis in person re-identification using 3D features acquired from consumer grade depth sensors. Such features, although theoretically invariant to perspective changes, are nevertheless immersed in noise that depends on the view point, mainly due to the low depth resolution of these sensors and imperfections in skeleton reconstruction algorithms. Thus, the re-identification of persons observed on different poses requires the analysis of the features that transfer well its characteristics between view-points. Taking view-point as context, we propose a cross-context methodology to improve the re-identification of persons on different view-points. On the contrary to 2D cross-view re-identification methods, our approach is based on 3D features that do not require an explicit mapping between view-points, but nevertheless take advantage of feature selection methods that improve the re-identification accuracy.
机译:我们提出了一种新的方法,用于使用从消费者级深度传感器获取的3D特征来重新识别的人的跨上下文分析方法。此类特征虽然从理论上不变于透视变化,但沉浸在取决于视图点的噪声中,这主要是由于这些传感器的低深度分辨率和骨架重建算法中的缺陷。因此,在不同姿势上观察到的人的重新识别需要分析在观点之间转移其特征的特征。将视图视为背景,我们提出了一种跨背景方法,以改善不同观点上的人员的重新识别。与2D巧克力重新识别方法相反,我们的方法基于3D特征,不需要视点之间的显式映射,但是利用了提高重新识别准确性的特征选择方法。

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