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Hierarchical fusion of multi-spectral face images for improved recognition performance

机译:多光谱人脸图像的分层融合以提高识别性能

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This paper presents a two level hierarchical fusion of face images captured under visible and infrared light spectrum to improve the performance of face recognition. At image level fusion, two face images from different spectrums are fused using DWT based fusion algorithm. At feature level fusion, the amplitude and phase features are extracted from the fused image using 2D log polar Gabor wavelet. An adaptive SVM learning algorithm intelligently selects either the amplitude or phase features to generate a fused feature set for improved face recognition. The recognition performance is observed under the worst case scenario of using single training images. Experimental results on Equinox face database show that the combination of visible light and short-wave IR spectrum face images yielded the best recognition performance with an equal error rate of 2.86%. The proposed image-feature fusion algorithm also performed better than existing fusion algorithms.
机译:本文提出了在可见光和红外光谱下捕获的人脸图像的两级分层融合,以提高人脸识别的性能。在图像级融合中,使用基于DWT的融合算法融合来自不同光谱的两个面部图像。在特征级融合中,使用2D对数极性Gabor小波从融合图像中提取幅度和相位特征。自适应SVM学习算法可智能地选择幅度或相位特征以生成融合特征集,以改善人脸识别能力。在使用单个训练图像的最坏情况下,可以观察到识别性能。在Equinox人脸数据库上的实验结果表明,可见光和短波红外光谱人脸图像的组合产生了最佳的识别性能,平均错误率为2.86%。提出的图像特征融合算法也比现有的融合算法表现更好。

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