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Vector space based augmented structural kinematic feature descriptor for human activity recognition in videos

机译:基于向量空间的增强结构运动学特征描述符,用于视频中的人类活动识别

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A vector space based augmented structural kinematic ( VSASK ) feature descriptor is proposed for human activity recognition. An action descriptor is built by integrating the structural and kinematic properties of the actor using vector space based augmented matrix representation. Using the local or global information separately may not provide sufficient action characteristics. The proposed action descriptor combines both the local (pose) and global (position and velocity) features using augmented matrix schema and thereby increases the robustness of the descriptor. A multiclass support vector machine ( SVM ) is used to learn each action descriptor for the corresponding activity classification and understanding. The performance of the proposed descriptor is experimentally analyzed using the Weizmann and KTH datasets. The average recognition rate for the Weizmann and KTH datasets is 100% and 99.89%, respectively. The computational time for the proposed descriptor learning is 0.003?seconds, which is an improvement of approximately 1.4% over the existing methods.
机译:提出了一种基于矢量空间的增强结构运动学(VSASK)特征描述符,用于人类活动识别。通过使用基于矢量空间的增强矩阵表示来集成演员的结构和运动学特性,来构建动作描述符。单独使用本地或全局信息可能无法提供足够的操作特征。所提出的动作描述符使用增强矩阵模式结合了局部(姿势)和全局(位置和速度)特征,从而提高了描述符的鲁棒性。多类支持向量机(SVM)用于学习每个动作描述符,以进行相应的活动分类和理解。使用Weizmann和KTH数据集通过实验分析了提出的描述符的性能。 Weizmann和KTH数据集的平均识别率分别为100%和99.89%。提出的描述符学习的计算时间为0.003秒,比现有方法提高了约1.4%。

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