Reversible Color Compression Transform for Big Data System Using Human Visual System

Hanadi Hakami, Z. Chaczko
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Abstract

In today's life, images play a significant role in many Big Data application fields for various purposes. Image processing has to face the huge challenges because of images created in a digital format which leads to huge data volumes. Using Joint Photographic Experts Group 2000 (JPEG2000) compression techniques to meet the diverse type of real-time applications. Lossless compression JPEG2000 and others are used to minimize the expenditure of possessions such as hard disk space and transmission bandwidth. This experimental work shows an improved lossless color image compression that uses a wavelet based Human Visual System.This Reversible Color Compression Transform method (RCCT) produces an efficient algorithm to compress the image without loss of information. JPEG2000 as a lossless mode is utilized for bit-preserving and to refer globally for encoding and decoding processes. The Reversible Color Transform (RCT) is used in JPEG 2000 using wavelets which provide a mathematical way to encode the information in such a way that it is layered according to the level of detail by using HVS attributes in the stage of quantization. In this research, the goal of lossless image compression is to decrease the number of bits required to demand computing resources such as store and transmit images without any loss of information.
基于人眼视觉系统的大数据系统可逆色彩压缩变换
在当今的生活中,图像在许多大数据应用领域中扮演着重要的角色,有着不同的用途。由于以数字格式创建的图像会产生巨大的数据量,因此图像处理必须面临巨大的挑战。采用JPEG2000 (Joint Photographic Experts Group 2000)压缩技术,满足不同类型的实时应用。无损压缩JPEG2000和其他压缩被用于最小化财产的支出,如硬盘空间和传输带宽。本实验展示了一种改进的基于小波的人类视觉系统的无损彩色图像压缩方法。这种可逆颜色压缩变换方法(RCCT)产生了一种有效的压缩图像而不丢失信息的算法。JPEG2000作为一种无损模式,用于比特保持和全局参考编码和解码过程。JPEG 2000中使用小波进行可逆颜色变换(RCT),小波提供了一种数学方法对信息进行编码,通过在量化阶段使用HVS属性将信息按细节级别分层。在本研究中,无损图像压缩的目标是在不丢失任何信息的情况下,减少存储和传输图像等计算资源所需的比特数。
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