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Quality fusion based multimodal eye recognition

机译:基于质量融合的多模态眼睛识别

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摘要

Multimodal eye recognition can improve the biometric systems recognition accuracy by combining iris and sclera recognition. However, poor quality images can significantly affect the system performance. In this paper, we proposed a quality fusion based multimodal eye recognition. Our quality measure evaluated the entire eye image quality, iris area quality, and sclera area quality. The experimental results show that our overall iris and sclera quality scores are highly correlated to recognition accuracy, and our quality fusion based eye recognition can improve and predict the performance of eye recognition systems.
机译:多模式眼睛识别可以通过结合虹膜和巩膜识别来提高生物识别系统的识别精度。但是,质量差的图像会严重影响系统性能。在本文中,我们提出了一种基于质量融合的多模态眼睛识别。我们的质量评估评估了整个眼睛的图像质量,虹膜区域的质量和巩膜区域的质量。实验结果表明,我们的总体虹膜和巩膜质量得分与识别准确性高度相关,并且基于质量融合的眼睛识别可以改善和预测眼睛识别系统的性能。

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