Design of Symlet Wavelet based Illumination Normalization Algorithm and its Comparison with other Relevant Algorithms

Kamal Lamichhane, Pramit Mazumdar
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Abstract

Image processing techniques may be used for enhancing edges, boundaries, contrast, etc. of an image through accentuation or sharpening process. Many algorithms are available to normalize illumination impact for different image processing applications. In this contribution, we conduct a comparative study on four different types of illumination normalization algorithms. They are based on discrete wavelet, logarithmic total variation with primal dual algorithm, histogram equalization technique, and morphological operation. In order to obtain better enhancement of image by using discrete wavelet based illumination normalization algorithm, selection of the particular wavelet is very important. Use of histogram equalization function in image preprocessing with other algorithms enhances the overall performance of face detection. This paper illustrates performance of different illumination normalization algorithms in Viola-Jones face detection system based on the extended Yale B database.
基于Symlet小波的光照归一化算法的设计及其与其他相关算法的比较
图像处理技术可用于通过强化或锐化处理来增强图像的边缘、边界、对比度等。对于不同的图像处理应用,有许多算法可用于归一化光照影响。在这篇文章中,我们对四种不同类型的照明归一化算法进行了比较研究。它们是基于离散小波、原始对偶算法的对数总变分、直方图均衡化技术和形态学运算。为了在基于离散小波的光照归一化算法中获得更好的图像增强效果,具体小波的选择是非常重要的。利用直方图均衡化函数与其他算法进行图像预处理,提高了人脸检测的整体性能。本文阐述了不同光照归一化算法在基于扩展的Yale B数据库的Viola-Jones人脸检测系统中的性能。
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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