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A Robust Probabilistic Collaborative Representation based Classification for Multimodal Biometrics

机译:基于稳健的多模式生物识别分类的稳健概率协作表示

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Most of the traditional biometric recognition systems perform recognition with a single biometric indicator. These systems have suffered noisy data, interclass variations, unacceptable error rates, forged identity, and so on. Due to these inherent problems, it is not valid that many researchers attempt to enhance the performance of unimodal biometric systems with single features. Thus, multimodal biometrics is investigated to reduce some of these defects. This paper proposes a new multimodal biometric recognition approach by fused faces and fingerprints. For more recognizable features, the proposed method extracts block local binary pattern features for all modalities, and then combines them into a single framework. For better classification, it employs the robust probabilistic collaborative representation based classifier to recognize individuals. Experimental results indicate that the proposed method has improved the recognition accuracy compared to the unimodal biometrics.
机译:大多数传统的生物识别系统使用单个生物识别指示器进行识别。这些系统遭受了嘈杂的数据,杂交变化,不可接受的错误率,伪造的身份等。由于这些固有的问题,许多研究人员试图提高单一特征的单峰生物识别系统的性能并不有效。因此,研究了多模式生物识别性,以减少这些缺陷中的一些缺陷。本文提出了一种新的多模式生物识别方法,融合面和指纹。对于更识别的功能,所提出的方法提取所有模式的块局部二进制模式特征,然后将它们组合成单个框架。为了更好的分类,它采用了基于强大的基于概率协作表示的分类器来识别个人。实验结果表明,与单峰生物识别技术相比,该方法提高了识别准确性。

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