基于能量压缩的虹膜识别技术,利用余弦变换、Walsh变换、Haar变换、Kekre变换、Hartley变换及其小波变换变换后虹膜图像的部分能量

Sudeep D. Thepade, P. Mandal
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引用次数: 9

摘要

本文的工作主题是利用变换后的虹膜图像的部分能量进行虹膜识别。为了生成变换后的虹膜图像,对虹膜图像进行余弦变换、Walsh变换、Haar变换、Kekre变换、Hartley变换及其小波变换。然后,利用更高系数变换的能量压缩概念,从这些变换后的虹膜图像中生成特征向量。用5种不同的方法从变换后的虹膜图像中生成特征向量。第一种方法考虑变换后虹膜图像的所有高能量系数,其余方法分别考虑高能量系数的99%、98%、97%和96%来生成特征向量。考虑部分能量减少了特征向量的大小,从而减少了计算次数,结果表明这种方法具有更好的性能。为了测试所提出的技术的性能,使用真实接受率(GAR)作为度量。通过考虑部分能量,可以获得更好的速度和精度性能。在所有变换和小波变换中,Walsh变换和Walsh小波变换的GAR值最高。结果表明,大多数小波变换优于其他变换。此外,与使用100%能量相比,使用部分能量可以提供更好的性能。该方法在Palacky大学数据集上进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy compaction based novel Iris recognition techniques using partial energies of transformed iris images with Cosine, Walsh, Haar, Kekre, Hartley Transforms and their Wavelet Transforms
The theme of work presented in this paper is a novel Iris recognition technique using partial energies of transformed iris image. To generate transformed iris images, various transforms like Cosine, Walsh, Haar, Kekre, Hartley transforms and their wavelet transforms are applied on the iris images. Feature vectors are then generated from these transformed Iris images using the concept of energy compaction of transforms in higher coefficients. 5 different ways are used to generate the feature vectors from the transformed iris images. First way considers all the higher energy coefficients of the transformed iris image while the rest considers 99%, 98%, 97%, and 96% of the higher energy coefficients for generating the feature vector. Considering partial energies reduces the feature vector size thus lowering the number of computations and results shows that this gives better performance. To test the performance of the proposed techniques, Genuine Acceptance Rate (GAR) is used as a metric. Better Performance in terms of Speed and Accuracy is obtained by considering Partial Energies. Among all the Transforms and Wavelet Transforms, Walsh Transform and Walsh Wavelet Transform gives highest GAR value. Results show that most wavelet transforms outperforms other transforms. Also, using Partial Energy gives better performance as compared to using 100% energies. The proposed technique is tested on Palacky University Dataset.
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