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Topic-Based Knowledge Transfer Algorithm for Cross-View Action Recognition

机译:基于主题的跨视图动作识别知识转移算法

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Cross-view action recognition is a challenging research field for human motion analysis. Appearance-based features are not credible if the viewpoint changes. In this paper, a new framework is proposed for cross-view action recognition by topic based knowledge transfer. First, Spatio-temporal descriptors are extracted from the action videos and each video is modeled by a bag of visual words (BoVW) based on the codebook constructed by the k-means cluster algorithm. Second, Latent Dirichlet Allocation (LDA) is employed to assign topics for the BoVW representation. The topic distribution of visual words (ToVW) is normalized and taken to be the feature vector. Third, in order to bridge different views, we transform ToVW into bilingual ToVW by constructing bilingual dictionaries, which guarantee that the same action has the same representation from different views. We demonstrate the effectiveness of the proposed algorithm on the IXMAS multi-view dataset.
机译:跨视图动作识别是人体运动分析的一个充满挑战的研究领域。如果视点发生变化,基于外观的功能将不可信。本文提出了一种基于主题的知识转移的跨视图动作识别的新框架。首先,从动作视频中提取时空描述符,并根据k均值聚类算法构造的码本,用一包视觉单词(BoVW)对每个视频进行建模。其次,采用潜在狄利克雷分配(LDA)为BoVW表示分配主题。视觉单词的主题分布(ToVW)被归一化,并作为特征向量。第三,为了弥合不同的观点,我们通过构造双语词典将ToVW转换为双语ToVW,以确保同一动作在不同观点下具有相同的表示形式。我们证明了该算法在IXMAS多视图数据集上的有效性。

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