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Fusion of LBP and HOG using multiple kernel learning for infrared face recognition

机译:使用多核学习的LBP和HOG融合以进行红外人脸识别

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Local binary pattern (LBP) has limitation in extracting the edge and direction information, which is vital to infrared face recognition. A new infrared face recognition algorithm fusion of LBP and histogram of oriented gradients (HOG) is proposed. First, LBP operator is adopted to extract the texture feature of an infrared face, and then the edge features of the original infrared face are extracted by using HOG operator. Finally, multiple kernel learning (MKL) is applied to fuse the texture features and edge features. Experiments are conducted on infrared face database of variable ambient temperature. The results show that the fusion of LBP and HOG perform better than traditional LBP or HOG features for infrared face recognition, the proposed method is more robust to ambient temperatures.
机译:局部二进制模式(LBP)在提取边缘和方向信息方面有局限性,这对于红外人脸识别至关重要。提出了一种新的融合LBP和定向梯度直方图(HOG)的红外人脸识别算法。首先,采用LBP算子提取红外脸的纹理特征,然后使用HOG算子提取原始红外脸的边缘特征。最后,应用多核学习(MKL)融合纹理特征和边缘特征。在可变环境温度的红外面部数据库上进行实验。结果表明,LBP和HOG的融合性能优于传统的LBP或HOG红外面部识别功能,该方法对环境温度具有更强的鲁棒性。

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