Infrared Face Recognition Based on Personalized Features Selection of LBP

Zhihua Xie, Zhengzi Wang
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引用次数: 3

Abstract

The compact and discriminative feature extraction is vital for infrared face recognition. This paper proposes a personalized feature selection algorithm for infrared face recognition. Firstly, LBP operator is applied to infrared face for texture information. Secondly, for each subject, a two-class training problem is constructed by one to other means. Then, based on two-class discriminative ability, we adaptively select a personalized subset of features from LBP for each subject. Finally, the nearest neighbor classifier based on chi-square distance is utilized to get final recognition result. The experimental results show the personalized feature selection is effective in useful information extraction for infrared face recognition, which outperform the state of the art methods based on LBP.
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基于LBP个性化特征选择的红外人脸识别
紧凑、判别性强的特征提取是红外人脸识别的关键。提出了一种用于红外人脸识别的个性化特征选择算法。首先,将LBP算子应用于红外人脸提取纹理信息;其次,对每个学科,采用一种方法构造一个两类训练问题。然后,基于两类判别能力,自适应地从LBP中为每个主题选择个性化的特征子集。最后,利用基于卡方距离的最近邻分类器得到最终的识别结果。实验结果表明,个性化特征选择在红外人脸识别有用信息提取方面是有效的,优于目前基于LBP的方法。
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