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A bio-inspired event-based size and position invariant human posture recognition algorithm

机译:一种基于生物的基于事件的大小和位置不变的人体姿势识别算法

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This paper proposes a new approach to recognize human postures in realtime video sequences. The algorithm employs temporal difference imaging between video sequences as input and then decompose the contour of the active object into vectorial line segments. A scheme based on simplified line segment Hausdorff distance combined with projection histograms is proposed to achieve size and position invariance recognition. Consistent with the hierarchical model of the human visual system, sub-sampling techniques are used to represent the object by line segments at multiple resolution levels. The whole classification is described as a coarse to fine procedure. An average realtime recognition rate of 88% is achieved in the experiment. Compared to conventional convolution method, the proposed algorithm reduces the computation cycles by 10 - 100 times. This work sets the foundation for size and position invariant object recognition for the implementation of event-based vision systems.
机译:本文提出了一种新方法来识别实时视频序列中的人体姿势。该算法采用视频序列之间的时间差异成像作为输入,然后将活动对象的轮廓分解为矢量线段。提出了一种基于简化线段Hausdorff距离并结合投影直方图的方案,以实现尺寸和位置不变性识别。与人类视觉系统的分层模型一致,子采样技术用于以多种分辨率级别的线段表示对象。整个分类被描述为从粗糙到精细的过程。实验中平均实时识别率达到88%。与传统的卷积方法相比,该算法将计算周期减少了10-100倍。这项工作为基于事件的视觉系统的实现奠定了大小和位置不变对象识别的基础。

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