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A histogram-based dominant wavelet domain feature selection algorithm for palm-print recognition

机译:基于直方图的优势小波域特征选择算法在掌纹识别中的应用

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摘要

A feature extraction algorithm for palm-print recognition based on two dimensional discrete wavelet transform is proposed in this paper, which efficiently exploits the local spatial variations in a palm-print image. The palm-image is segmented into several spatial modules and a palm-print recognition scheme is developed, which extracts histogram-based dominant wavelet features from each of these local modules. The effect of modularization in terms of the entropy content of the palm-print images has been analyzed. The selection of dominant features for the purpose of recognition not only drastically reduces the feature dimension but also captures precisely the detail variations within the palm-print image. It is shown that, the modularization of the palm-print image enhances the discriminating capabilities of the proposed features and thereby results in high within-class compactness and between-class separability of the extracted features. Different types of Daubechies wavelets (in terms of use of number of vanishing moments, i.e., db1-db10) have been utilized for the purpose of feature extraction and the effect upon the recognition performance has been also investigated. In order to further reduce the feature dimension, a principal component analysis is performed. It is found from our extensive experimentations on different palm-print databases that the performance of the proposed method in terms of recognition accuracy and computational complexity is superior to that of some of the recent methods.
机译:提出了一种基于二维离散小波变换的掌纹识别特征提取算法,有效地利用了掌纹图像的局部空间变化。将手掌图像分割成几个空间模块,并开发了一种掌纹识别方案,该方案从这些局部模块的每一个中提取基于直方图的优势小波特征。分析了掌纹图像的熵含量方面的模块化效果。为了识别的目的,主要特征的选择不仅大大减小了特征尺寸,而且精确地捕获了掌纹图像内的细节变化。结果表明,掌纹图像的模块化增强了所提出特征的区分能力,从而导致提取出的特征具有高度的类内紧凑性和类间可分离性。为了特征提取的目的,已经使用了不同类型的Daubechies小波(就消失矩的数量而言,即db1-db10),并且还研究了其对识别性能的影响。为了进一步减小特征尺寸,执行主成分分析。从我们在不同掌纹数据库上进行的广泛实验中发现,在识别准确度和计算复杂度方面,所提方法的性能优于某些最新方法。

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