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Activity recognition using a supervised non-parametric hierarchical HMM

机译:使用监督性非参数分层HMM进行活动识别

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The problem of classifying human activities occurring in depth image sequences is addressed. The 3D joint positions of a human skeleton and the local depth image pattern around these joint positions define the features. A two level hierarchical Hidden Markov Model (H-HMM), with independent Markov chains for the joint positions and depth image pattern, is used to model the features. The states corresponding to the H-HMM bottom level characterize the granular poses while the top level characterizes the coarser actions associated with the activities. Further, the H-HMM is based on a Hierarchical Dirichlet Process (HDP), and is fully non-parametric with the number of pose and action states inferred automatically from data. This is a significant advantage over classical HMM and its extensions. In order to perform classification, the relationships between the actions and the activity labels are captured using multinomial logistic regression. The proposed inference procedure ensures alignment of actions from activities with similar labels. Our construction enables information sharing, allows incorporation of unlabelled examples and provides a flexible factorized representation to include multiple data channels. Experiments with multiple real world datasets show the efficacy of our classification approach. (C) 2016 Elsevier B.V. All rights reserved.
机译:解决了对深度图像序列中发生的人类活动进行分类的问题。人体骨骼的3D关节位置和这些关节位置周围的局部深度图像图案定义了特征。使用具有独立马尔可夫链的关节位置和深度图像图案的两级分层隐式马尔可夫模型(H-HMM)对特征进行建模。对应于H-HMM底层的状态表示颗粒状姿势,而顶层表示与活动相关的较粗略的动作。此外,H-HMM基于分层狄利克雷过程(HDP),并且是完全非参数的,具有从数据自动推断出的姿势和动作状态的数量。与传统的HMM及其扩展相比,这是一个显着的优势。为了执行分类,使用多项逻辑回归来捕获动作和活动标签之间的关系。拟议的推理程序可确保将具有相似标签的活动的动作对齐。我们的构造可以实现信息共享,允许合并未标记的示例,并提供灵活的分解表示以包括多个数据通道。在多个真实世界的数据集上进行的实验证明了我们分类方法的有效性。 (C)2016 Elsevier B.V.保留所有权利。

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