压缩和解压的文件没有损失的质量

K. Anand, M. Priyadharshini, K. Priyadharshini
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引用次数: 0

摘要

本文提出了用于图像和文档压缩和解压缩的Gzip算法。Gzip是Lz77和Huffman的混合算法。在文档管理和通信系统中,图片和文档的压缩和解压缩是至关重要的。图像和文档压缩技术用于降低表示文件所需的数据量。图像压缩已被证明是数字图像处理领域中最有利和实用的方法。目标是减少图像和文档的冗余,以便有效地存储或发送数据。为了减少数据冗余,节省更多的硬件空间和传输带宽,数据压缩与解压缩理论变得越来越重要。压缩是有益的,因为它可以使用更便宜的资源,如硬盘空间和传输带宽。当我们评估图像质量时,解压是有益的。在提出的系统中,数据没有减少,但数据大小的减少没有损失质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compression And Decompression Of Files Without Loss Of Quality
This paper proposes the Gzip algorithm for image and document compression and decompression. Gzip is a hybrid algorithm that combines Lz77 and Huffman. In document management and communication systems, picture and document compression and decompression are crucial. Image and document compression technologies are used to lower the amount of data required to represent the file. Image compression has proven to be the most advantageous and practical method in the field of digital image processing. The goal is to reduce the images’ and documents’ redundancy so that data may be stored or sent efficiently. In order to reduce data redundancy and conserve more hardware space and transmission bandwidth, the theory of data compression and decompression is therefore becoming more and more important. Compression is beneficial because it makes use of less expensive resources like hard disc space and transmission bandwidth. When we evaluate the image quality, decompression is beneficial. In the proposed system, there is no reduction in data, but there is a decrease in data size without loss of quality.
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