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Human action recognition based on multi-scale feature maps from depth video sequences

机译:基于多尺度特征映射的人为行动识别从深度视频序列映射

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摘要

Human action recognition is an active research area in computer vision. Although great progress has been made, previous methods mostly recognize actions from depth video sequences at only one scale, and thus they often neglect multi-scale spatial changes that provide additional information in practical applications. In this paper, we present a novel framework with a multi-scale mechanism to improve scale diversity of motion features. We propose a multi-scale feature map called Laplacian pyramid depth motion images(LP-DMI). First, We employ depth motion images (DMI) as the templates to generate the multi-scale static representation of actions. Then, we caculate LP-DMI to enhance multi-scale dynamic information of motions and reduce redundant static information in human bodies. We further extract the multi-granularity descriptor called LP-DMI-HOG to provide more discriminative features. Finally, we utilize extreme learning machine (ELM) for action classification. The proposed method yeilds the recognition accuracy of 93.41%, 85.12%, 91.94% on the public MSRAction3D, UTD-MHAD and DHA dataset. Through extensive experiments, we prove that our method outperforms the state-of-the-art benchmarks.
机译:人类行动识别是计算机视觉中的活跃研究区域。虽然已经取得了巨大进展,但之前的方法大多以一定比例从深度视频序列识别行动,因此它们通常忽略在实际应用中提供额外信息的多尺度空间变化。在本文中,我们介绍了一种具有多尺度机制的新框架,以提高运动功能的规模多样性。我们提出了一种称为Laplacian金字塔深度电影(LP-DMI)的多尺度特征图。首先,我们使用深度电影(DMI)作为模板以生成动作的多尺度静态表示。然后,我们为LP-DMI进行Caculate,以增强运动的多尺度动态信息,并减少人体中的冗余静态信息。我们进一步提取称为LP-DMI-HOG的多粒度描述符,以提供更辨别的特征。最后,我们利用极端学习机(ELM)进行动作分类。拟议的方法,识别准确度为93.41%,85.12%,85.12%,91.94%,Utd-Mhad和DHA数据集。通过广泛的实验,我们证明我们的方法优于最先进的基准。

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