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Personal verificationbased on multi-spectral finger texture lighting images

机译:基于多光谱手指纹理照明图像的个人验证<?显示[AQ = “ ” ID = “ Q1] ”>

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摘要

Finger texture (FT) images acquired from different spectral lighting sensors reveal various features. This inspires the idea of establishing a recognition model between FT features collected using two different spectral lighting forms to provide high recognition performance. This can be implemented by establishing an efficient feature extraction and effective classifier, which can be applied to different FT patterns. So, an effective feature extraction method called the surrounded patterns code (SPC) is adopted. This method can collect the surrounded patterns around the main FT features. It is believed that these patterns are robust and valuable. Furthermore, a novel classifier termed the re-enforced probabilistic neural network (RPNN) is proposed. It enhances the capability of the standard PNN and provides better recognition performance. Two types of FT images from the multi-spectral Chinese Academy of Sciences Institute of Automation (CASIA) database were employed as two types of spectral sensors were used in the acquiring device: the white (WHT) light and spectral 460 nm of blue (BLU) light. Supporting comparisons were performed, analysed and discussed. The best results were recorded for the SPC by enhancing the equal error rates at 4% for spectral BLU and 2% for spectral WHT. These percentages have been reduced to 0% after utilising the RPNN.
机译:从不同光谱照明传感器获取的手指纹理(FT)图像显示出各种功能。这激发了在使用两种不同光谱照明形式收集的FT特征之间建立识别模型的想法,以提供高识别性能。这可以通过建立有效的特征提取和有效的分类器来实现,该分类器可以应用于不同的FT模式。因此,采用了一种有效的特征提取方法,即包围模式码(SPC)。此方法可以收集主要FT功能周围的包围图案。可以相信,这些模式是可靠且有价值的。此外,提出了一种新颖的分类器,称为增强概率神经网络(RPNN)。它增强了标准PNN的功能,并提供了更好的识别性能。在中国科学院自动化研究所(CASIA)的多光谱数据库中,使用了两种类型的FT图像,因为在采集设备中使用了两种类型的光谱传感器:白色(WHT)光和蓝色460 nm光谱(BLU) )轻。进行了支持性比较,分析和讨论。通过提高频谱BLU的4%和频谱WHT的2%错误率,SPC记录了最佳结果。使用RPNN后,这些百分比已降低到0 %。

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