A novel infrared and visible face fusion recognition method based on non-subsampled contourlet transform

Guodon Liu, Shuai Zhang, Zhihua Xie
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引用次数: 4

Abstract

Near infrared and visible face fusion recognition is an important direction in the field of unconstrained face recognition research. In this paper, a novel fusion algorithm in (NSCT) domain is proposed for infrared and visible face fusion recognition. Firstly, NSCT is used respectively to process the infrared and visible face images, which exploits the image information at multiple scales, orientations, and frequency bands. Then, to exploit the effective discriminant feature and balance the power of high-low frequency band of NSCT coefficients, the local Gabor binary pattern (LGBP) and Local Binary Pattern (LBP) are applied respectively in different frequency parts to obtain the robust representation of infrared and visible face images. Finally, the score-level fusion is used to fuse the all the features for final classification. The proposed fusion face recognition method is tested on HITSZ Lab2 visible and near infrared face database. Experiment results show that the proposed method extracts the complementary features of near-infrared and visible-light images and improves the robustness of unconstrained face recognition.
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一种基于非下采样contourlet变换的红外与可见光人脸融合识别新方法
近红外与可见光人脸融合识别是无约束人脸识别领域的一个重要研究方向。提出了一种基于NSCT域的红外与可见光人脸融合识别算法。首先,利用NSCT分别对红外和可见光人脸图像进行处理,利用多尺度、多方向、多频段的图像信息;然后,为了利用NSCT系数的有效判别特征,平衡NSCT系数的高低频带功率,分别在不同频率部分应用局部Gabor二值模式(LGBP)和局部二值模式(LBP),获得红外和可见光人脸图像的鲁棒表示。最后,采用分数级融合对所有特征进行融合,进行最终分类。在HITSZ Lab2可见光和近红外人脸数据库上对所提出的融合人脸识别方法进行了测试。实验结果表明,该方法提取了近红外和可见光图像的互补特征,提高了无约束人脸识别的鲁棒性。
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