分析了奇异值分解在图像压缩中的可行性

Q3 Economics, Econometrics and Finance Applied Computer Science Pub Date : 2022-12-03 DOI:10.35784/acs-2022-28
E. Łukasik, Emilia Łabuć
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引用次数: 0

摘要

在当今高度计算机化的世界中,数据压缩是最小化与数据存储和传输相关的成本的关键问题。2019年,通过网络发送的数据中有70%以上是图像。分析了在图像压缩中使用奇异值分解算法的可行性,表明该算法提高了JPEG和JPEG2000的压缩效率。压缩前使用奇异值分解算法对图像矩阵进行分解。研究还表明,随着图像尺寸的增加,用于重建高质量图像的特征值的比例减小。这项研究是在大量不同的图像上进行的,检查了2500多张图像。根据评估矩阵和图像压缩的数值算法的典型标准:压缩比、压缩文件大小、MSE、坏像素数、复杂性、数值稳定性和易于实现性,对结果进行了分析。
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ANALYSIS OF THE POSSIBILITY OF USING THE SINGULAR VALUE DECOMPOSITION IN IMAGE COMPRESSION
In today’s highly computerized world, data compression is a key issue to minimize the costs associated with data storage and transfer. In 2019, more than 70% of the data sent over the network were images. This paper analyses the feasibility of using the SVD algorithm in image compression and shows that it improves the efficiency of JPEG and JPEG2000 compression. Image matrices were decomposed using the SVD algorithm before compression. It has also been shown that as the image dimensions increase, the fraction of eigenvalues that must be used to reconstruct the image in good quality decreases. The study was carried out on a large and diverse set of images, more than 2500 images were examined. The results were analyzed based on criteria typical for the evaluation of numerical algorithms operating on matrices and image compression: compression ratio, size of compressed file, MSE, number of bad pixels, complexity, numerical stability, easiness of implementation. 
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来源期刊
Applied Computer Science
Applied Computer Science Engineering-Industrial and Manufacturing Engineering
CiteScore
1.50
自引率
0.00%
发文量
0
审稿时长
8 weeks
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