基于DTCNN的小波分解和方向滤波器组分析的虹膜图像压缩

V. Mohan, Y. Venkataramani
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引用次数: 2

摘要

提出了一种基于离散时间细胞神经网络(DTCNN)和方向滤波器组(DFB)模板的基于小波定向变换(WBDT)的虹膜图像压缩方案。眼睛图像中虹膜部分的复杂环状部分包含许多独特的特征,如拱形韧带、沟和脊。为虹膜图像开发的压缩算法必须保留图像中虹膜部分存在的细节,这些细节用于后续的生物识别过程。相对于小波分解,WBDT中的方向滤波器组可以很好地分析信号的方向性特征。采用改进的SPIHT编码可以有效地对WBDT分解后的图像进行编码。编码器输出使用基于SOFM的VQ编码器进一步压缩。重建图像的主观质量与二维小波分解相当。可以推断,对于相同的熵,基于小波的技术可以看到平均10dB的改进。将所得结果制成表格,并与基于小波变换的结果进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compression of iris images using DTCNN based Wavelet decomposition and Directional Filter Bank analysis
In this paper, a compression scheme of iris images using Wavelet Based Directional Transform (WBDT) through Templates of Discrete Time Cellular Neural Network (DTCNN) and Directional Filter Bank (DFB) is presented. The complex annular part of the iris portion of the eye image contains many distinctive features such as arching ligaments, furrows and ridges. The compression algorithms developed for iris images have to preserve the details present in the iris part of the image, which are used for subsequent biometric processes. The directionality features can be very well analyzed by means of Directional Filter banks in WBDT than Wavelet decomposition. The decomposed image using WBDT can be coded effectively by using modified SPIHT encoding. The encoder output is further compressed using SOFM based VQ coder. The subjective quality of the reconstructed images obtained is comparable with the 2D wavelet decomposition. It is inferred that an average of 10dB improvement can be seen over wavelet based technique for the same entropy. The results obtained are tabulated and compared with those of the wavelet based ones.
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