Automatic features reduction procedures in palm vein recognition

Prasti Eko Yunanto, H. Nugroho, W. T. Agung Budi
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引用次数: 3

Abstract

Feature or dimensionality reduction has become one of fundamental problem in the field of pattern recognition such as biometrics. Selecting the number of feature or dimension has become one challenge. Instead selecting number of feature manually, this work proposed a procedure for feature reduction by finding the correlation between recognition rates and number of features. The procedure started with collecting recognition rates from available classes against a number of features and then calculated some variables from the distribution to be used as anchors for estimating number of features in case there are new classes to be added. This study was applied on a palm vein biometrics system which used DCT and k-PCA as features extraction method. The results of the experiment showed that the procedure was able to achieve a number of features that have an average offset of less than 6 from those obtained from direct observation and an average error of 1.1% from the real recognition rates.
手掌静脉识别中的自动特征还原程序
特征降维已成为生物识别等模式识别领域的基本问题之一。选择特征或维度的数量已经成为一个挑战。本文提出了一种通过寻找识别率与特征数量之间的相关性来进行特征约简的方法,而不是手动选择特征数量。该过程首先收集针对许多特征的可用类的识别率,然后从分布中计算一些变量,以便在添加新类时用作估计特征数量的锚点。本研究以DCT和k-PCA作为特征提取方法的手掌静脉生物识别系统为研究对象。实验结果表明,该方法能够实现与直接观测结果的平均偏移小于6的特征,与真实识别率的平均误差为1.1%。
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