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Three-way Auto-correlation Approach To Motion Recognition

机译:三向自相关运动识别方法

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This paper presents a feature extraction method for three-way data: the cubic higher-order local autocorrelation (CHLAC) method.This method is particularly suitable for analysis of motion-image sequences.Motion-image sequences can be regarded as three-way data consisting of x-,y- and t-axes.The CHLAC method is based on three-way auto-correlations of pixels in motion images.It effectively extracts spatio-temporal local geometric features characterizing the motion,such as gradients (velocities) and curvatures (accelerations).It has also several advantages for motion recognition.Firstly,neither a priori knowledge nor heuristics about the objects in question is required.Secondly,it is shift-invariant and thus segmentation-free.Thirdly,its computational cost is less than that of traditional methods,which makes it more suitable for real time processing.The experimental results on large datasets for gesture and gait recognition showed the effectiveness of the CHLAC method.
机译:本文提出了一种三向数据特征提取方法:三次高阶局部自相关(CHLAC)方法,该方法特别适用于运动图像序列分析,运动图像序列可视为三向数据CHLAC方法基于运动图像中像素的三向自相关,可以有效地提取表征运动的时空局部几何特征,例如梯度(速度)和运动识别也有许多优点。首先,不需要有关对象的先验知识或启发式方法。其次,它是不变位移的,因此无需分割。第三,其计算量少在大型数据集上进行手势和步态识别的实验结果证明了CHLAC方法的有效性。

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