基于小波能量熵的视网膜扫描识别

R. A. Vora, V. Bharadi, H. B. Kekre
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引用次数: 9

摘要

视网膜血管具有高度的唯一性,使得基于视网膜的生物识别系统成为一种新兴的安全认证机制。随着身份认证和医学图像处理数字化的不断推进,人们对数字图像处理的准确性和速度提出了更高的要求。小波在提取数字图像的局部纹理信息方面表现优异。血管有不同厚度和宽度的血管;它们可以用多分辨率分析法进行分析。本文利用小波定义了一种视网膜特征,称为小波能量特征(WEF),这是一种强大的多分辨率分析工具。WEF能在不同的小波分解层次上反映不同厚度和宽度血管在多个方向上的小波能量分布,因此其区分视网膜的能力很强。本文还提出了一种新的快速小波——Kekre小波,用于生成WEF和提取视网膜特征向量。基于Kekre小波计算视网膜特征的小波能量熵,并利用欧几里得距离进行匹配。研究发现,Kekre小波比Haar小波具有更好的视网膜匹配精度。使用小波对血管进行分割,使用能量熵进行特征提取,保证了简单和计算成本更低。
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Retinal scan recognition using wavelet energy entropy
Retina blood vessels have high degree of uniqueness making retina based biometric systems as an emerging security and authentication mechanism. With increased advancement in digitization of authentication and medical image processing, there is demand of accurate and faster digital image processing. Wavelets are excellent in extracting localized texture information in digital images. Blood vessels have vessels with different thickness and width; they can be analyzed using multi-resolution analysis method. A retina feature, named wavelet energy feature (WEF) is defined in this paper, employing wavelet, which is a powerful tool of multi-resolution analysis. WEF can reflect the wavelet energy distribution of vessels with different thickness and width in several directions at different wavelet decomposition levels, so its ability to discriminate retinas is very strong. This paper also presents new and faster type of wavelets called Kekre's wavelets for creating WEF and extracting retinal feature vector. Wavelet energy entropies based on Kekre wavelets are calculated for retina features and used for match using Euclidian distance. The paper finds retinal match accuracy using Kekre wavelet better than Haar wavelets. Use of wavelet for segmenting the blood vessels and use of Energy Entropy for feature extraction holds promise of simplicity and computationally less expensive.
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