基于概率数据关联和对应嵌入的行人跟踪

Borna Bićanić, Marin Orsic, Ivan Marković, Sinisa Segvic, I. Petrović
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引用次数: 4

摘要

本文研究了运动学(位置和速度)和外观线索之间的相互作用,以建立多目标行人跟踪中的对应关系。我们研究了基于深度学习检测器、联合集成概率数据关联(JIPDA)和基于深度对应嵌入的基于外观的跟踪的检测跟踪方法。我们首先通过微调卷积检测器来精确检测行人,并将其与仅运动学的JIPDA结合起来,解决了固定摄像机的设置问题。最终提交的作品在3DMOT2015基准测试中排名第一。然而,在具有移动摄像机和未知自我运动的序列中,我们通过用深度对应嵌入的全局最近邻跟踪取代运动学线索获得了最好的结果。我们通过微调来自ResNet-18的第二个块的特征来训练嵌入,使用角损失扩展一个边际项。我们注意到直接在JIPDA中集成深度对应嵌入并没有带来明显的改善。软数据关联中深度对应嵌入的几何结构需要进一步研究,以达到两全其美的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pedestrian Tracking by Probabilistic Data Association and Correspondence Embeddings
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.
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