Computational analysis of hybrid SVD-DCT image multiplexing-demultiplexing algorithm using variable quantization levels

M. Dixit, P. Salamani, P. Rane, V. Gada
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引用次数: 2

Abstract

The change from the cine film to digital methods of image exchange and archival is primarily motivated by the ease and flexibility of handling digital image information instead of the film media. The principal approach in data compression is the reduction of the amount of image data (bits) while preserving information (image details), so that the image can be stored or transferred more efficiently. Multiplexing uses the available channel capacity effectively. The discrete cosine transform (DCT) converts a signal into elementary frequency components. The proposed work explores the computational analysis of a hybrid SVD-DCT technique for image multiplexing using variable quantization levels and variable ranks. This paper primarily focuses on the significance of image multiplexing by incorporating compression with different quantization matrices and variable ranks. The efficiency of such a system is measured using Compression Ratio (CR), Peak Signal to Noise Ratio (PSNR) and image quality analysis visually. This technology is a key enabling factor in many imaging and multimedia concepts, where multiplexing and compression of image data is required.
可变量化水平的SVD-DCT图像复用-解复用混合算法的计算分析
从电影胶片到数字图像交换和存档方法的转变,主要是由于处理数字图像信息而不是电影媒体的容易和灵活。数据压缩的主要方法是在保留信息(图像细节)的同时减少图像数据量(比特),以便更有效地存储或传输图像。多路复用有效地利用了可用的信道容量。离散余弦变换(DCT)将信号转换成基本频率分量。提出的工作探讨了使用可变量化水平和可变秩的混合SVD-DCT图像复用技术的计算分析。本文主要讨论了将压缩与不同量化矩阵和变秩相结合对图像复用的意义。利用压缩比(CR)、峰值信噪比(PSNR)和图像质量分析直观地衡量了该系统的效率。该技术是许多成像和多媒体概念的关键实现因素,其中需要图像数据的多路复用和压缩。
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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