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Two-stage appearance-based re-identification of humans in low-resolution videos

机译:基于两阶段外观的低分辨率视频中人的重新识别

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The objective of human re-identification is to recognize a specific individual on different locations and to determine whether an individual has already appeared. This is especially in multi-camera networks with non-overlapping fields of view of interest. However, this is still an unsolved computer vision task due to several challenges, e.g. significant changes of appearance of humans as well as different illumination, camera parameters etc. In addition, for instance, in surveillance scenarios only low-resolution videos are usually available, so that biometric approaches may not be applied. This paper presents a whole-body appearance-based human re-identification approach for low-resolution videos. The method is divided in two stages: first, an appearance model is computed from several images of an individual and pairwise compared to each other. The model is based on means of covariance descriptors determined by spectral clustering techniques. In the second stage, the result is refined by learning the appearance manifolds of the best matches. The proposed approach is tested on a multi-camera data set of a typical surveillance scenario and compared to a color histogram based method.
机译:重新识别人类的目的是识别在不同位置的特定个人,并确定该个人是否已经出现。尤其是在具有不重叠视场的多摄像机网络中。然而,由于一些挑战,例如,这仍然是未解决的计算机视觉任务。人类的外观以及不同的照明,相机参数等都会发生重大变化。此外,例如,在监视场景中,通常仅提供低分辨率视频,因此可能无法使用生物识别方法。本文提出了一种基于全身外观的低分辨率视频人类重识别方法。该方法分为两个阶段:首先,从一个人的几张图像计算出外观模型,然后将它们成对进行比较。该模型基于通过频谱聚类技术确定的协方差描述符。在第二阶段,通过学习最佳匹配的外观流形来完善结果。该方法在典型监视场景的多摄像机数据集上进行了测试,并与基于颜色直方图的方法进行了比较。

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