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首页> 外文期刊>Digital Signal Processing >Finger texture biometric verification exploiting Multi-scale Sobel Angles Local Binary Pattern features and score-based fusion
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Finger texture biometric verification exploiting Multi-scale Sobel Angles Local Binary Pattern features and score-based fusion

机译:手指纹理生物识别验证利用多尺度Sobel角度本地二进制模式特征和基于分数的融合

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Abstract In this paper a new feature extraction method called Multi-scale Sobel Angles Local Binary Pattern (MSALBP) is proposed for application in personal verification using biometric Finger Texture (FT) patterns. This method combines Sobel direction angles with the Multi-Scale Local Binary Pattern (MSLBP). The resulting characteristics are formed into non-overlapping blocks and statistical calculations are implemented to form a texture vector as an input to an Artificial Neural Network (ANN). A Probabilistic Neural Network (PNN) is applied as a multi-classifier to perform the verification. In addition, an innovative method for FT fusion based on individual finger contributions is suggested. This method is considered as a multi-object verification, where a finger fusion method named the Finger Contribution Fusion Neural Network (FCFNN) is employed for the five fingers. Two databases have been employed in this paper: PolyU3D2D and Spectral 460 nm (S460) from CASIA Multi-Spectral (CASIA-MS) images. The MSALBP feature extraction method has been examined and compared with different Local Binary Pattern (LBP) types; in classification it yields the lowest Equal Error Rate (EER) of 0.68% and 2% for PolyU3D2D and CASIA-MS (S460) databases, respectively. Moreover, the experimental results revealed that our proposed finger fusion method achieved superior performance for the PolyU3D2D database with an EER of 0.23% and consistent performance for the CASIA-MS (S460) database with an EER of 2%. Highlights ? A new feature extractor called the MSALBP for robust FT verification. ? A novel multi-object fusion method named the FCFNN for the FTs. ? Extensive experiments with two databases demonstrated the efficiency of both approaches. ]]>
机译:<![cdata [ Abstract 在本文中,提出了一种新的特征提取方法,称为多尺度Sobel Angles局部二进制图案(MSALBP),用于使用生物识别手指在个人验证中应用纹理(ft)模式。该方法将Sobel方向角与多尺度局部二进制模式(MSLBP)组合。得到的特征形成为非重叠块,并且实现统计计算以形成纹理矢量作为对人工神经网络(ANN)的输入。概率神经网络(PNN)被应用为多分类器以执行验证。此外,提出了一种基于个体手指贡献的FT融合的创新方法。该方法被认为是一种多对象验证,其中用于五个手指的手指融合方法名为手指贡献融合神经网络(FCFNN)。本文采用了两个数据库:来自CASIA多光谱(CASIA-MS)图像的Polyu3D2D和光谱460nm(S460)。已经检查了MSALBP特征提取方法,并与不同的局部二进制模式(LBP)类型进行了比较;在分类中,它分别产生0.68%和2%的最低相同误差率(eer),分别为polyu3d2d和casia-ms(s460)数据库。此外,实验结果表明,我们所提出的手指融合方法对PolyU3D2D数据库的卓越性能具有0.23%的EER和CasiA-MS(S460)数据库的一致性能,具有2%的eer。 亮点 < CE:Abstract-Sec ID =“AS0020”View =“全部”> 一个名为MSALBP的新功能提取器,用于强大的FT验证。 一种新型多-Object融合方法名为FTS的FCFNN。 具有两个数据库的大量实验表明了两种方法的效率。 ]]>

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