Gait recognition using Local Ternary Pattern (LTP)

K. B. Low, U. U. Sheikh
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引用次数: 5

Abstract

Local Ternary Pattern (LTP) is usually applied for texture classification problems. In this work, we propose LTP for human gait characterization for the purpose of human identification. Our proposed method is based on the Gait Energy Image (GEI) whereby edge information over a complete gait cycle is extracted. However, GEI does not contain enough human body structure information for human recognition purpose. Therefore, LTP is used to extract texture information from all pixels in the human gait region which preserves more discriminative features of the subject. Gait cycle estimation is computed by using the aspect ratio of the subject's bounding box. After that, LTP features are averaged over a full gait cycle and a 2D joint histogram of the LTP is computed. At the end, K nearest-neighbor (k-NN) is used to obtain the final recognition results. The proposed method achieved higher accuracy compared to other methods when tested on the CMU MoBo human gait database. The proposed LTP method is easy to implement and also has the advantage of significantly lower computation time.
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基于局部三元模式的步态识别
局部三元模式(LTP)通常用于纹理分类问题。在这项工作中,我们提出LTP用于人类步态表征,目的是为了识别人类。我们提出的方法是基于步态能量图像(GEI),在一个完整的步态周期提取边缘信息。然而,GEI并没有包含足够的人体结构信息来达到人体识别的目的。因此,使用LTP从人体步态区域的所有像素中提取纹理信息,从而保留了受试者更多的判别特征。步态周期估计是利用被试边界框的纵横比来计算的。然后,在整个步态周期内对LTP特征进行平均,并计算LTP的二维关节直方图。最后利用K近邻算法(K - nn)得到最终的识别结果。在CMU MoBo人体步态数据库上进行了测试,取得了比其他方法更高的准确率。所提出的LTP方法易于实现,并且具有显著降低计算时间的优点。
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