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Gait recognition using binarized statistical image features and histograms of oriented gradients

机译:步态识别使用二值化统计图像特征和面向梯度的直方图

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This paper presents a gait recognition method using the combination of motion history image (MHI), binarized statistical image features (BSIF) and histograms of oriented gradients (HOG). The method first encodes the motion pattern and direction of the gait cycle in motion history image. Subsequently, performing convolution on the motion history image using pre-learnt filters as kernel, binarized statistical image features are generated by summing the convolution output images. Histograms of oriented gradients are then computed on binarized statistical image features. Gait signature of a gait cycle is attained by accumulating all the HOG descriptors. Experimental result shows that the proposed method performs promisingly in gait recognition.
机译:本文呈现了一种步态识别方法,使用运动历史图像(MHI),二值化统计图像特征(BSIF)和面向梯度(HOG)直方图的组合。该方法首先在运动历史图像中编码步态周期的运动模式和方向。随后,使用预先学习的过滤器在运动历史图像上执行卷积作为内核,通过求和卷积输出图像来生成二值化统计图像特征。然后在二值化统计图像特征上计算取向梯度的直方图。通过累积所有猪描述符来实现步态周期的步态签名。实验结果表明,所提出的方法在步态识别中表现得很开心。

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