Mutual Information Based Multispectral Image Fusion for Improved Face Recognition

Ramachandra Raghavendra, S. Venkatesh, K. Raja, F. A. Cheikh, C. Busch
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引用次数: 6

Abstract

Multispectral face images captured in more than one spectra is known to provide reliable person verification, especially in varying illumination conditions. In this paper, we present an extended multi-spectral face recognition framework by combining the face images captured in six different spectra consisting of 425nm,475nm,525nm,570nm,625nm, and 680nm. We propose a novel image fusion scheme that combines the information from different spectrum of multispectral face images. The proposed image fusion scheme first selects two images from set of all spectral images based on the highest information quantified using entropy measure. Two selected images are combined by decomposing them using Discrete Wavelet Transform (DWT) to get the sub-bands that are fused using weighted sum rule. The weights are computed automatically on each of these sub-bands by measuring the dependency using correlation and wavelet energy. Extensive experiments are carried out on a newly constructed exclusive multispectral face database using a commercial multispectral sensor SpectraCamTM from Pixelteq company. Extensive experiments are carried out on our database to present both qualitative and quantitative results of the proposed image fusion scheme. The comprehensive comparative analysis is performed by comparing the performance of the proposed scheme with four different state-of-the-art schemes. The obtained results have justified the efficacy of the proposed system for robust multispectral face recognition.
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基于互信息的多光谱图像融合改进人脸识别
已知在多个光谱中捕获的多光谱人脸图像可以提供可靠的人员验证,特别是在不同的照明条件下。本文结合425nm、475nm、525nm、570nm、625nm和680nm 6种不同光谱的人脸图像,提出了一种扩展的多光谱人脸识别框架。提出了一种结合多光谱人脸图像不同光谱信息的图像融合方案。该图像融合方案首先根据熵测度量化的最高信息从所有光谱图像集中选择两幅图像。对选取的两幅图像进行离散小波变换(DWT)分解,得到子带,用加权和规则进行融合。利用相关系数和小波能量测量各子波段的相关性,自动计算各子波段的权重。利用Pixelteq公司的商用多光谱传感器SpectraCamTM,在新构建的专用多光谱人脸数据库上进行了大量实验。在我们的数据库上进行了大量的实验,以展示所提出的图像融合方案的定性和定量结果。通过将所提出的方案与四种不同的最新方案的性能进行比较,进行了全面的比较分析。实验结果证明了该系统在鲁棒多光谱人脸识别中的有效性。
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