Compression of image using multi-wavelet techniques

Saba Abdul-Wahed, M. K. Hussein, H. Ahmed
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Abstract

Digital compression of images is a topic that has appeared in a lot of studies over the past decade to this day. As wavelet transform algorithms advance and procedures of quantization have helped to bypass current compression of image standards such as the JPEG algorithm. To get the highest effectiveness in compression of image transforms of wavelet need filters which gather a desirable character's number i.e., symmetry and orthogonally. Nevertheless, wave design capabilities are restricted due to their ability to have all of such desirable characters at the same time. The multi-wavelet technology removes a few of the restrictions of the wavelet play more than the options of design and thus able to gather all desired Characters of transforming. Wavelet andmulti-wave filter banks are tested on a larger scale with images, providing more useful analysis. Multiple waves indicate energy-compression efficiency (a higher compression ratio usually indicates a higher mean square error, MSE, in the compressed image). Filter bank Characters such as orthogonal and compact support, symmetry, and phase response are important factors that also affect MSE and professed quality of the image. The current work analyzes the multi-wave Characters effect on the performance of compression of images. Four multi-wavelength Characters (GHM, CL, ORT4) were used in this thesis and the compression of image performance of grayscale images was compared with common scalar waves (D4). SPIHT quantification device in stress chart and use of PSNR and subjective quality measures to assess performance. The results in this paper point out those multi wave characteristics that are most important for the compression of images. Moreover, PSNR results and subjective quality show similar performance to the best scalar and multi-waves. The analysis also shows that a programmer based on multi-band conversion significantly improves the perceived image quality.
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使用多小波技术压缩图像
从过去的十年到今天,图像的数字压缩是一个在许多研究中出现的话题。随着小波变换算法的进步和量化的过程已经帮助绕过当前的图像压缩标准,如JPEG算法。为了使小波图像变换的压缩效果达到最高,需要滤波器能够收集所需的特征数,即对称性和正交性。然而,波浪的设计能力受到限制,因为它们不能同时具有所有这些理想的特性。多小波技术消除了小波发挥的一些限制,而不是设计的选择,从而能够收集所有需要的变换特征。小波和多波滤波器组在更大规模的图像上进行了测试,提供了更有用的分析。多波表示能量压缩效率(较高的压缩比通常表示压缩图像中的均方误差MSE较高)。滤波器组的正交和紧凑支持、对称性和相位响应等特性也是影响图像MSE和图像质量的重要因素。本文主要分析了多波特征对图像压缩性能的影响。本文采用了四种多波长特征(GHM、CL、ORT4),并与普通标量波(D4)对灰度图像的压缩性能进行了比较。SPIHT在应力图中的量化装置,并使用PSNR和主观质量指标来评估性能。本文的研究结果指出了多波特征对图像压缩的重要性。此外,PSNR结果和主观质量表现出与最佳标量波和最佳多波相似的性能。分析还表明,基于多频带转换的编程器显著提高了图像感知质量。
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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