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Binarization of spectral histogram models: An application to efficient biometric identification

机译:光谱直方图模型的二值化:高效的生物识别识别

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Feature extraction techniques such as local binary patterns (LBP) or binarized statistical image features (BSIF) are crucial components in a biometric recognition system. The vast majority of relevant approaches employs spectral histograms as feature representation, i.e. extracted biometric reference data consists of sequences of histograms. Transforming these histogram sequences to a binary representation in an accuracy-preserving manner would offer major advantages w.r.t. data storage and efficient comparison. We propose a generic binarization for spectral histogram models in conjunction with a Hamming distance-based comparator. The proposed binarization and comparison technique enables a compact storage and a fast comparison of biometric features at a negligible cost of biometric performance (accuracy). Further, we investigate a serial combination of the binary comparator and histogram model-based comparator in a biometric identification system. Experiments are carried out for two emerging biometric characteristics, i.e. palmprint and ear, confirming the soundness of the presented technique.
机译:特征提取技术,例如局部二进制图案(LBP)或二值化统计图像特征(BSIF)是生物识别系统中的重要组件。绝大多数相关方法采用光谱直方图作为特征表示,即提取的生物识别参考数据由直方图的序列组成。以精度保存的方式将这些直方图序列转换为二进制表示,将提供主要优势W.r.t.数据存储和高效比较。我们提出了与基于汉明距离的比较器结合的光谱直方图模型的通用二值化。所提出的二值化和比较技术使得能够紧凑,并且可以以可忽略的生物识别性能成本(精度)快速比较生物识别功能。此外,我们研究了生物识别系统中的二元比较器和直方图模型的比较器的串行组合。对两个出现的生物识别特性进行实验,即Palmprint和耳朵,确认所示技术的健全性。

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