基于视频的多受试者轨迹亲和群体检测

Abdullah Al Masum, Mahady Hasan Rafy, S. M. Mahbubur Rahman
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引用次数: 2

摘要

亲和检测在很大程度上是由于人们对人类社会行为建模的兴趣日益浓厚。本文提出了一种基于从视频序列中捕获的人类受试者的跟踪轨迹得到的推理的亲和检测的监督学习方法。特别是,群体检测的近似线索,如被跟踪人的位置和平移测量的成对相似性,被用于著名的基于主成分分析的特征提取过程。使用应用于所提出特征的最近邻检测器和基于多数投票的决策融合来识别成对亲和性的存在与否。对被试不同类型运动的监控视频进行的实验表明,与地面真实情况相比,在检测亲和力的准确性方面取得了良好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Video-based affinity group detection using trajectories of multiple subjects
Affinity detection has been largely motivated by the increasing interest in modelling the social behavior of humans. This paper presents a supervised learning method for affinity detection which is based on an inference obtained from tracking trajectories of the human subjects captured in video sequences. In particular, the proxemic cues of group detection such as the pair-wise similarity of the positional and translational measurements of the tracked people are used in the well-known principal component analysis-based feature extraction process. The existence or non-existence of pair-wise affinities is recognized using the nearest neighbor detector applied on the proposed features and the majority voting-based fusion of decisions. Experiments conducted on surveillance video captured in diverse-type of movements of the subjects show favorable results in terms of accuracy of detecting affinities when compared with the ground truth.
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