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Face and palmprint multimodal biometric systems using Gabor-Wigner transform as feature extraction

机译:使用Gabor-Wigner变换作为特征提取的人脸和掌纹多峰生物特征识别系统

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摘要

This paper explores different multimodal biometric systems based on Gabor-Wigner transform (GWT) for subject recognition. This transform provides a simultaneous analysis of space and frequency components of a biometric image. GWT was initially proposed in the literature for signal analysis. In this technique, the GWT is utilized for extraction of feature vectors from different biometric modalities. An optimization technique, particle swarm optimization, is then used to select the dominant features from the feature vectors. This technique not only improves the performance of the system but also reduces the dimension of the obtained feature vectors. A detailed study has been carried out to investigate the fusion of face and palmprint images at different levels. The receiver operating characteristic curve and the equal error rate are used to evaluate the performance of the technique.
机译:本文探讨了基于Gabor-Wigner变换(GWT)的不同多峰生物特征识别系统。该变换提供了对生物特征图像的空间和频率分量的同时分析。 GWT最初是在文献中提出的,用于信号分析。在这项技术中,GWT用于从不同的生物特征模式中提取特征向量。然后,使用一种优化技术(粒子群优化)从特征向量中选择主要特征。该技术不仅改善了系统的性能,而且减小了获得的特征向量的维数。已经进行了详细的研究以研究不同级别的面部图像和掌纹图像的融合。接收器的工作特性曲线和相等的误码率用于评估该技术的性能。

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