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An Empirical Study of Dimensionality Reduction Methods for Biometric Recognition

机译:用于生物识别的降维方法的实证研究

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This research aims at studying the recognition accuracy and execution time that are affected by different dimensionality reduction methods applied to the biometric image data. We comparatively study the fingerprint, face images, and handwritten signature data that are pre-processed with the two statistical based dimensionality reduction methods: principal component analysis (PCA) and linear discriminant analysis (LDA). The algorithm that has been used to train and recognize the images is support vector machine with linear and polynomial kernel functions. Experimental results showed that the application of LDA dimensionality reduction method before recognizing the image patterns with a linear kernel function of SVM is more accurate and takes less time than the recognition that did not use dimensionality reduction. LDA is a suitable technique for physiological biometrics, whereas PCA is appropriate for the behavioral biometrics. We also found out that only 1% of transformed dimensions is adequate for the accurate recognition of biometric image patterns.
机译:这项研究旨在研究识别精度和执行时间受生物特征图像数据的不同降维方法的影响。我们比较研究了指纹,面部图像和手写签名数据,这些数据已通过两种基于统计的降维方法进行了预处理:主成分分析(PCA)和线性判别分析(LDA)。用于训练和识别图像的算法是具有线性和多项式核函数的支持向量机。实验结果表明,与不使用降维的识别相比,在使用线性核函数支持向量机识别图像图案之前,采用LDA降维方法更为准确,所需的时间更少。 LDA是适用于生理生物特征的技术,而PCA适用于行为生物特征。我们还发现,只有1%的转换尺寸足以准确识别生物特征图像模式。

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