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Pedestrian Tracking by Probabilistic Data Association and Correspondence Embeddings

机译:概率数据关联和通信嵌入的行人跟踪

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This paper studies the interplay between kinematics (position and velocity) and appearance cues for establishing correspondences in multi-target pedestrian tracking. We investigate tracking-by-detection approaches based on a deep learning detector, joint integrated probabilistic data association (JIPDA), and appearance-based tracking of deep correspondence embeddings. We first addressed the fixed-camera setup by fine-tuning a convolutional detector for accurate pedestrian detection and combining it with kinematic-only JIPDA. The resulting submission ranked first on the 3DMOT2015 benchmark. However, in sequences with a moving camera and unknown ego-motion, we achieved the best results by replacing kinematic cues with global nearest neighbor tracking of deep correspondence embeddings. We trained the embeddings by fine-tuning features from the second block of ResNet-18 using angular loss extended by a margin term. We note that integrating deep correspondence embeddings directly in JIPDA did not bring significant improvement. It appears that geometry of deep correspondence embeddings for soft data association needs further investigation in order to obtain the best from both worlds.
机译:本文研究了运动学(位置和速度)与外观提示之间的相互作用,用于在多目标行人跟踪中建立对应关系。我们根据深度学习探测器,联合综合概率数据关联(JIPDA)以及深度对应嵌入的外观跟踪来调查跟踪逐个检测方法。我们首先通过微调卷积探测器来解决固定摄像机设置,以便准确地检测,并将其与仅适用于运动的JIPDA。由此产生的提交在3DMOT2015基准上排名第一。然而,在具有移动相机和未知的自我运动的序列中,我们通过用全球最接近的邻近的深度对应嵌入来替换运动线程来实现最佳结果。我们使用边缘术语扩展的角度损失从Reset-18块的微调功能训练嵌入的功能。我们注意到,直接在JIPDA中集成了深度通信嵌入并未显着改善。看来软数据关联的深度对应嵌入的几何形状需要进一步调查,以获得两个世界的最佳。

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