Palm print recognition using PCA-based adaptive weighted directional features

Stella Daniel, V. Maik
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引用次数: 0

Abstract

Palm print recognition is a recent addition to the long list of biometric recognition which includes Iris, fingerprint, facial features and gait. The palm print unlike other biometric features is too many in numbers. This could lead to very long and exhaustive feature set. Also the minor deviation within the feature space tends to interfere with the accuracy of the palm print recognition. To overcome these existing drawbacks in this paper, we propose a novel PCA based adaptive weighting algorithm. The Principal Component Analysis (PCA) provides feature space compactness whereas the adaptive weighting suppresses the minor deviations that interfere with the performance. The proposed algorithm provides better accuracy than other existing state of the art methods. The Adaptive weighting is based on the orientation of edges. The proposed adaptive weighting PCA based palm print recognition (AWPCA-PR) is faster and efficient compared to other existing state of the art methods.
基于pca的自适应加权方向特征掌纹识别
生物识别技术包括虹膜、指纹、面部特征和步态,掌纹识别技术是最新的一项。掌纹与其他生物特征不同,它的数量太多了。这可能导致非常冗长和详尽的特性集。此外,特征空间内的微小偏差也容易影响掌纹识别的准确性。为了克服这些缺点,本文提出了一种新的基于PCA的自适应加权算法。主成分分析(PCA)提供特征空间紧凑性,而自适应加权抑制干扰性能的小偏差。该算法比现有的方法具有更好的精度。自适应加权是基于边的方向。本文提出的基于自适应加权主成分分析的掌纹识别方法(AWPCA-PR)比现有的方法更快、更高效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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