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Exemplar-Based Human Action Recognition with Template Matching from a Stream of Motion Capture

机译:基于示例的基于动作捕捉流中模板匹配的人类动作识别

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Recent works on human action recognition have focused on representing and classifying articulated body motion. These methods require a detailed knowledge of the action composition both in the spatial and temporal domains, which is a difficult task, most notably under realtime conditions. As such, there has been a recent shift towards the exemplar paradigm as an efficient low-level and invariant modelling approach. Motivated by recent success, we believe a real-time solution to the problem of human action recognition can be achieved. In this work, we present an exemplar-based approach where only a single action sequence is used to model an action class. Notably, rotations for each pose are parame-terised in Exponential Map form. Delegate exemplars are selected using k-means clustering, where the cluster criteria is selected automatically. For each cluster, a delegate is identified and denoted as the exemplar by means of a similarity function. The number of exemplars is adaptive based on the complexity of the action sequence. For recognition, Dynamic Time Warping and template matching is employed to compare the similarity between a streamed observation and the action model. Experimental results using motion capture demonstrate our approach is superior to current state-of-the-art, with the additional ability to handle large and varied action sequences.
机译:关于人体动作识别的最新工作集中于对关节运动的表示和分类。这些方法要求在空间和时间域都具有动作组成的详细知识,这是一项艰巨的任务,尤其是在实时条件下。因此,最近有一种向范例范式转变的方法,它是一种有效的低级不变式建模方法。受近期成功的推动,我们相信可以实现对人类动作识别问题的实时解决方案。在这项工作中,我们提出了一种基于示例的方法,其中仅使用单个动作序列来对动作类进行建模。值得注意的是,每个姿势的旋转均以指数图形式进行参数设置。使用k均值聚类选择代表样本,其中聚类标准是自动选择的。对于每个聚类,通过相似度函数将代表标识为代表并表示为示例。示例数量取决于动作序列的复杂性。为了进行识别,采用动态时间规整和模板匹配来比较流观察和动作模型之间的相似性。使用运动捕捉的实验结果表明,我们的方法优于当前的最新技术,并具有处理大型和变化的动作序列的附加功能。

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