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Recognizing Activities by Attribute Dynamics

机译:通过属性动力学识别活动

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In this work, we consider the problem of modeling the dynamic structure of human activities in the attributes space. A video sequence is first represented in a semantic feature space, where each feature encodes the probability of occurrence of an activity attribute at a given time. A generative model, denoted the binary dynamic system (BDS), is proposed to learn both the distribution and dynamics of different activities in this space. The BDS is a non-linear dynamic system, which extends both the binary principal component analysis (PCA) and classical linear dynamic systems (LDS), by combining binary observation variables with a hidden Gauss-Markov state process. In this way, it integrates the representation power of semantic modeling with the ability of dynamic systems to capture the temporal structure of time-varying processes. An algorithm for learning BDS parameters, inspired by a popular LDS learning method from dynamic textures, is proposed. A similarity measure between BDSs, which generalizes the Binet-Cauchy kernel for LDS, is then introduced and used to design activity classifiers. The proposed method is shown to outperform similar classifiers derived from the kernel dynamic system (KDS) and state-of-the-art approaches for dynamics-based or attribute-based action recognition.
机译:在这项工作中,我们考虑在属性空间中对人类活动的动态结构建模的问题。视频序列首先在语义特征空间中表示,其中每个特征编码在给定时间出现活动属性的概率。提出了一种生成模型,称为二进制动态系统(BDS),以学习该空间中不同活动的分布和动力学。 BDS是一种非线性动力学系统,通过将二进制观测变量与隐藏的高斯-马尔可夫状态过程相结合,扩展了二进制主成分分析(PCA)和经典线性动力学系统(LDS)。这样,它将语义建模的表示能力与动态系统捕获时变过程的时间结构的能力集成在一起。提出了一种基于动态纹理的流行的LDS学习方法来学习BDS参数的算法。然后引入了BDS之间的相似性度量,该度量泛化了LDS的Binet-Cauchy内核,并用于设计活动分类器。结果表明,所提出的方法优于基于内核动态系统(KDS)的相似分类器和基于动力学或基于属性的动作识别的最新方法。

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