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Continuous Human Action Recognition Using Depth-MHI-HOG and a Spotter Model

机译:深度-MHI-HOG和Spotter模型的连续人类动作识别

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摘要

In this paper, we propose a new method for spotting and recognizing continuous human actions using a vision sensor. The method is comprised of depth-MHI-HOG (DMH), action modeling, action spotting, and recognition. First, to effectively separate the foreground from background, we propose a method called DMH. It includes a standard structure for segmenting images and extracting features by using depth information, MHI, and HOG. Second, action modeling is performed to model various actions using extracted features. The modeling of actions is performed by creating sequences of actions through k-means clustering; these sequences constitute HMM input. Third, a method of action spotting is proposed to filter meaningless actions from continuous actions and to identify precise start and end points of actions. By employing the spotter model, the proposed method improves action recognition performance. Finally, the proposed method recognizes actions based on start and end points. We evaluate recognition performance by employing the proposed method to obtain and compare probabilities by applying input sequences in action models and the spotter model. Through various experiments, we demonstrate that the proposed method is efficient for recognizing continuous human actions in real environments.
机译:在本文中,我们提出了一种使用视觉传感器来识别和识别连续的人类动作的新方法。该方法包括深度MHI-HOG(DMH),动作模型,动作点和识别。首先,为了有效地将前景与背景区分开,我们提出了一种称为DMH的方法。它包括用于通过使用深度信息,MHI和HOG分割图像和提取特征的标准结构。其次,执行动作建模以使用提取的特征对各种动作进行建模。动作建模是通过k-均值聚类创建动作序列来执行的。这些序列构成HMM输入。第三,提出了一种动作发现方法,从连续动作中过滤出无意义的动作,并确定动作的精确起点和终点。通过采用点样器模型,该方法提高了动作识别性能。最后,所提出的方法基于起点和终点来识别动作。我们通过使用所提出的方法来评估识别性能,方法是通过在动作模型和点样器模型中应用输入序列来获得和比较概率。通过各种实验,我们证明了所提出的方法对于识别真实环境中的连续人类动作是有效的。

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