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Interactive activity recognition using pose-based spatio-temporal relation features and four-level Pachinko Allocation Model

机译:使用基于姿势的时空关系特征和四级Pachinko分配模型进行交互式活动识别

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In this paper, we go beyond the problem of recognizing video-based human interactive activities. We propose a novel approach that pennits to deeply understand complex person person activities based on the knowledge coming from human pose analysis. The joint coordinates of interactive objects are first located by an efficient human pose estimation algorithm. The relation features consisting of the intra and inter-person features of joint distance and angle, are suggested to use for describing the relationships between body components of the individual persons and the interacting two participants in the spatiotemporal dimension. These features are then provided to the codebook construction process, in which two types of codeword are generated corresponding to distance and angle features. In order to explain the relationships between poses, a flexible hierarchical topic model constructed by four layers is proposed using the Pachinko Allocation Model. The model is able to represent the full correlation between the relation features of body components as codewords, the interactive poselets as subtopics, and the interactive activities as super topics. Discrimination of complex activities presenting similar postures is further obtained by the proposed model. We validate our interaction recognition method on two practical data sets, the BIT-Interaction data set and the UT-Interaction data set. The experimental results demonstrate that the proposed approach outperforms recent interaction recognition approaches in terms of recognition accuracy. (C) 2016 Elsevier Inc. All rights reserved.
机译:在本文中,我们超越了识别基于视频的人类交互活动的问题。我们提出了一种新颖的方法,可以根据人体姿势分析的知识来深入理解复杂的人的活动。交互式对象的联合坐标首先通过有效的人体姿势估计算法进行定位。建议由关节距离和角度的人内和人际特征组成的关系特征用于描述个体的身体成分与时空维度上的交互的两个参与者之间的关系。然后将这些特征提供给码本构造过程,在其中生成对应于距离和角度特征的两种类型的码字。为了解释姿势之间的关系,提出了使用Pachinko分配模型由四层构造的灵活的分层主题模型。该模型能够将身体组件的关系特征表示为代码字,将交互姿势作为子主题,将交互活动表示为超级主题之间的完全相关性。提出的模型进一步区分了呈现相似姿势的复杂活动。我们在两个实用的数据集BIT-Interaction数据集和UT-Interaction数据集上验证了我们的交互识别方法。实验结果表明,提出的方法在识别精度方面优于最近的交互识别方法。 (C)2016 Elsevier Inc.保留所有权利。

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