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Human action segmentation and classification based on the Isomap algorithm

机译:基于Isomap算法的人体动作分割与分类

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Visual analysis of human behavior has attracted a great deal of attention in the field of computer vision because of the wide variety of potential applications. Human behavior can be segmented into atomic actions, each of which indicates a single, basic movement. To reduce human intervention in the analysis of human behavior, unsupervised learning may be more suitable than supervised learning. However, the complex nature of human behavior analysis makes unsupervised learning a challenging task. In this paper, we propose a framework for the unsupervised analysis of human behavior based on manifold learning. First, a pairwise human posture distance matrix is derived from a training action sequence. Then, the isometric feature mapping (Isomap) algorithm is applied to construct a low-dimensional structure from the distance matrix. Consequently, the training action sequence is mapped into a manifold trajectory in the Isomap space. To identify the break points between the trajectories of any two successive atomic actions, we represent the manifold trajectory in the Isomap space as a time series of low-dimensional points. A temporal segmentation technique is then applied to segment the time series into sub series, each of which corresponds to an atomic action. Next, the dynamic time warping (DTW) approach is used to cluster atomic action sequences. Finally, we use the clustering results to learn and classify atomic actions according to the nearest neighbor rule. If the distance between the input sequence and the nearest mean sequence is greater than a given threshold, it is regarded as an unknown atomic action. Experiments conducted on real data demonstrate the effectiveness of the proposed method.
机译:由于各种潜在的应用,人类行为的视觉分析已引起计算机视觉领域的广泛关注。人类行为可以分为原子动作,每个动作表示一个基本的动作。为了减少对人类行为分析的人工干预,无监督学习可能比有监督学习更合适。但是,人类行为分析的复杂性使无监督学习成为一项艰巨的任务。在本文中,我们提出了一个基于流形学习的无监督人类行为分析框架。首先,从训练动作序列导出成对的人体姿势距离矩阵。然后,应用等距特征映射(Isomap)算法从距离矩阵构造低维结构。因此,训练动作序列被映射到Isomap空间中的流形轨迹中。为了确定任意两个连续原子动作的轨迹之间的断点,我们将Isomap空间中的流形轨迹表示为低维点的时间序列。然后应用时间分割技术将时间序列分割为子序列,每个子序列对应一个原子动作。接下来,动态时间规整(DTW)方法用于对原子动作序列进行聚类。最后,我们使用聚类结果根据最邻近规则对原子行为进行学习和分类。如果输入序列和最接近的平均序列之间的距离大于给定的阈值,则将其视为未知的原子作用。对真实数据进行的实验证明了该方法的有效性。

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