Hexagonal Image Compressionusing Singular Value Decomposition in Python

P. Varghese, G. Saroja
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Abstract

With the advent of multimedia technologies in last two decades, there is a widespread need for efficient storage and transmission of data. Dealing with the vast information interchange in this digital era, image compression for reduction in byte size of graphics image file without loss of image quality to an acceptable level becomes the large interest area. Inspired from the biological models of human fovea, hexagonal image processing has gained a lot of attention in artificial intelligence era that deals with the application of image processing system that combines the benefits of biologically motivated structures. In this paper a singular value decomposition (SVD) over hexagonal image compression which is a missing stone in computer vision which provides higher packing density, higher angular symmetry and uniform connectivity. Due to lack of developments in hexagonal imaging devices, different resampling methods like alternate pixel shift method, half pixel shift method, pseudo hexagonal pixel method for sourcing hexagonal images. SVD is one of the powerful cutting-edge technology for image compression algorithms. SVD based image compression is performed on hexagonal grid and is compared with square grid using different parameters like compression ratio, compression size, PSNR and MSE using PYTHON's SVD function. SVD based hexagonal image achieves the goal of compression by preserving good image quality at higher compression ratios, high computational efficiency, provides low mean square error (MSE), acceptable compression size depending on application and high peak to signal ratio (PSNR).
Python中基于奇异值分解的六边形图像压缩
近二十年来,随着多媒体技术的出现,人们对数据的高效存储和传输有着广泛的需求。面对数字时代海量的信息交换,如何在不损失图像质量的前提下将图形图像文件的字节大小压缩到可接受的水平成为人们关注的热点。六边形图像处理受人类中央凹的生物模型启发,在人工智能时代受到了广泛关注,它涉及到结合生物驱动结构优点的图像处理系统的应用。本文提出了一种基于六边形图像压缩的奇异值分解(SVD)方法,该方法具有较高的填充密度、较高的角对称性和均匀连通性。由于六边形成像器件的发展缺乏,六边形图像的重新采样方法主要有交替像素偏移法、半像素偏移法、伪六边形像素法等。奇异值分解是图像压缩算法中强大的前沿技术之一。基于SVD的图像压缩在六边形网格上进行,并使用PYTHON的SVD函数使用不同的参数(如压缩比、压缩大小、PSNR和MSE)与方形网格进行比较。基于奇异值分解的六边形图像通过在较高的压缩比下保持良好的图像质量、较高的计算效率、较低的均方误差(MSE)、根据应用可接受的压缩大小和较高的峰信比(PSNR)来实现压缩目标。
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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