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Deep learning architecture for pedestrian 3-D localization and tracking using multiple cameras

机译:使用多台摄像机进行行人3-D定位和跟踪的深度学习架构

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In this paper, we propose a novel deep-learning architecture for accurate 3-D localization and tracking of a pedestrian using multiple cameras. The deep-learning network is composed of two networks: detection network and localization network. The detection network yields the pedestrian detections and the localization network estimates the ground position of a pedestrian within its detection box. In addition, an attentional pass filter is introduced to effectively connect the two networks. Using the detection proposals and their 2-D grounding positions obtained from the two networks, multi-camera multi-target 3-D localization and tracking algorithm is developed through min-cost network flow approach. In the experiments, it is shown that the proposed method improves the performance of 3-D localization and tracking.
机译:在本文中,我们提出了一种新颖的深度学习架构,可使用多个摄像机对行人进行精确的3-D定位和跟踪。深度学习网络由两个网络组成:检测网络和定位网络。该检测网络产生行人检测,并且定位网络估计行人在其检测箱内的地面位置。此外,还引入了注意通过滤波器以有效地连接两个网络。利用从这两个网络获得的检测建议及其2-D接地位置,通过最小成本网络流方法开发了多摄像机多目标3-D定位和跟踪算法。实验表明,该方法提高了3-D定位和跟踪性能。

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