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Independent metric learning with aligned multi-part features for video-based person re-identification

机译:具有统一的多部分功能的独立度量学习,用于基于视频的人员重新识别

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摘要

Video-based person re-identification attracts wide attention because it plays a crucial role for many applications in the video surveillance. The task of video-based person re-identification is to match image sequences of the pedestrian recorded by non-overlapping cameras. Like many visual recognition problems, variations in pose, viewpoints, illumination, and occlusion make this task non-trivial. Aiming at increasing the robustness of features to variations and occlusion, this paper designs an aligned multi-part image model inspired by human visual attention mechanism. This model performs a pose estimation method to align the pedestrians. Then, it divides the images to extract multi-part appearance features. Besides, we present independent metric learning to combine the multi-part appearance and spatial-temporal features, which obtains several metric kernels by feeding these features into distance metric learning respectively. These kernels are fused with the weights learned by the attention measure. The novel way of features fusion can achieve better functional complementarity of these features. In experiments, we analyze the effectiveness of the major components. Extensive experiments on two public benchmark datasets, i.e., the iLIDS-VID and PRID-2011 datasets, demonstrate the effectiveness of the proposed method.
机译:基于视频的人员重新识别吸引了广泛的关注,因为它对于视频监控中的许多应用都起着至关重要的作用。基于视频的人员重新识别的任务是匹配由非重叠摄像机记录的行人的图像序列。像许多视觉识别问题一样,姿势,视点,照明和遮挡的变化也使这项任务变得微不足道。为了提高特征对变化和遮挡的鲁棒性,本文设计了一个受人的视觉注意力机制启发的对齐的多部分图像模型。该模型执行姿势估计方法以对齐行人。然后,它将图像分割以提取多部分外观特征。此外,我们提出了独立的度量学习,将多部分外观和时空特征相结合,通过将这些特征分别输入到距离度量学习中,从而获得了多个度量核。这些内核与注意力度量学到的权重融合在一起。特征融合的新颖方法可以实现这些特征更好的功能互补。在实验中,我们分析了主要成分的有效性。在两个公共基准数据集(即iLIDS-VID和PRID-2011数据集)上进行的大量实验证明了该方法的有效性。

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