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Shape-Motion Based Athlete Tracking for Multilevel Action Recognition

机译:基于形状运动的运动员跟踪,用于多层次动作识别

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摘要

An automatic human shape-motion analysis method based on a fusion architecture is proposed for human action recognition in videos. Robust shape-motion features are extracted from human points detection and tracking. The features are combined within the Transferable Belief Model (TBM) framework for action recognition. The TBM-based modelling and fusion process allows to take into account imprecision, uncertainty and conflict inherent to the features. Action recognition is performed by a multilevel analysis. The sequencing is exploited for feedback information extraction in order to improve tracking results. The system is tested on real videos of athletics meetings to recognize four types of jumps: high jump, pole vault, triple jump and long jump.
机译:提出了一种基于融合架构的人形运动自动分析方法,用于视频中人的动作识别。从人的点检测和跟踪中提取出鲁棒的形状运动特征。这些功能在可转移信念模型(TBM)框架内进行了组合,以进行动作识别。基于TBM的建模和融合过程可以考虑特征固有的不精确性,不确定性和冲突。动作识别是通过多级分析执行的。排序用于反馈信息提取,以改善跟踪结果。该系统在田径运动会的真实视频上进行了测试,以识别四种类型的跳跃:跳高,撑杆跳,三级跳远和跳远。

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