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Vision Based Multi-pedestrian Tracking Using Adaptive Detection and Clustering

机译:基于视觉基于自适应检测和聚类的多行人跟踪

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This paper proposes a novel vision based multi-pedestrian tracking scheme in crowded scenes, which are very common in real-world applications. The major challenge of the multi-pedestrian tracking problem comes from complicated occlusions, cluttered or even changing background. We address these issues by creatively combining state-of-the-art pedestrian detectors and clustering algorithms. The core idea of our method lies in the integration of local information provided by pedestrian detector and global evidence produced by cluster analysis. A prediction algorithm is proposed to return the possible locations of missed target in offline detection, which will be re-detected by online detectors. The pedestrian detector in use is an online adaptive detector mainly based on texture features, which can be replaced by more advanced ones if necessary. The effectiveness of the proposed tracking scheme is validated on a real-world scenario and shows satisfactory performance.
机译:本文提出了一种在拥挤的场景中基于愿景的多行人跟踪方案,在现实世界中非常常见。多行人跟踪问题的主要挑战来自复杂的闭塞,杂乱甚至改变背景。我们通过创造性地结合最先进的行人探测器和聚类算法来解决这些问题。我们的方法的核心思想在于,在集群分析中产生的行人探测器提供的本地信息和全球证据的集成。提出了一种预测算法以在离线检测中返回错过目标的可能位置,这将由在线检测器重新检测。使用中的行人探测器是一个在线自适应探测器,主要基于纹理特征,如果需要,可以更换更高级的功能。拟议的跟踪方案的有效性在真实的情景下验证并显示出令人满意的性能。

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