一种图像分类和自适应母小波选择方案

B. S. Shajeemohan, Dr. V. K. Govindan, Baby Vijilin
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引用次数: 5

摘要

基于小波的图像编码器越来越受欢迎。这种图像编码器的性能在很大程度上取决于对特定图像选择合适的小波。有很多将图像分类的建议。在本文中,我们引入了基于图像统计特性的分类。一旦根据图像的统计属性将其划分到一个特定的类,然后选择一个合适的小波进行压缩。提出了一种自适应母小波选择方案。该方法基于将图像分类为不同的组,并将每组与提供给定压缩量的最佳图像质量的最佳小波相关联。性能质量指标,如PQS,比特率,PSNR是用来判断最佳的小波对一类图像。像均值、标准差和偏度这样的图像属性用于将图像分类为纹理、人类和航空等组。在测试图像上的实现结果证明了该技术的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Scheme for Image Classification and Adaptive Mother Wavelet Selection
Wavelet based image coders are gaining popularity. The performances of such image coders are highly depend up on the selection of an appropriate wavelet for a particular image. There are many suggestions to classify images in to classes. In this paper, we are introducing classification of the images based on their statistical properties. Once the image is assigned to a particular class based on their statistical properties, then an appropriate wavelet is to be selected for the compression. A technique called adaptive mother wavelet selection scheme is proposed. The approach is based on the classification of images into different groups and associating each of the groups with the best wavelet that provides best quality images for a given amount of compression. Performance quality measures like PQS, bit rate, PSNR are used for judging the best wavelet for a class of images. Image properties like mean, standard deviation, and skewness are used for classifying images into groups such as texture, human, and aerial. Implementation results on test images demonstrate the superiority of the proposed technique.
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