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ACTION RECOGNITION USING UNDECIMATED DUAL TREE COMPLEX WAVELET TRANSFORM FROM DEPTH MOTION MAPS / DEPTH SEQUENCES

机译:使用未传定的双树复杂小波从深度运动映射/深度序列进行操作识别

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摘要

Accumulating the motion information from a video sequence is one of the highly challenging and significant phase in Human Action Recognition. To achieve this, several classical and compact representations are proposed by the research community with proven applicability. In this paper, we propose a compact Depth Motion Map based representation methodology with hastey striding, consisely accumulating the motion information. We extract Undecimated Dual Tree Complex Wavelet Transform features from the proposed DMM, to form an efficient feature descriptor. We designate a Sequential Extreme Learning Machine for classifying the human action secquences on benchmark datasets, MSR Action 3D dataset and DHA Dataset. We empirically prove the feasability of our method under standard protocols, achieving proven results.
机译:从视频序列中累积运动信息是人类行动识别中具有高度挑战性和重要性的阶段之一。为实现这一目标,研究界提出了几种经典和紧凑的陈述,并经过验证的适用性。在本文中,我们提出了一种基于紧凑的深度运动地图的基于深度运动地图,与Sharey Stribing,合身累积运动信息。我们从所提出的DMM中提取未传定的双树复杂小波变换功能,以形成有效的功能描述符。我们指定一个顺序极限学习机,用于对基准数据集,MSR动作3D DataSet和DHA数据集进行分类人体行动Secquence。我们经验证明了我们在标准协议下的方法的可行性,实现了经过验证的结果。

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