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Lossy image compression using SVD coding, compressive autoencoders, and prediction error-vector quantization

机译:使用SVD编码,压缩自动编码器和预测误差向量量化的有损图像压缩

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Now-a-days due to the huge increase in the size of image data Lossy Image Compression is highly used to reduce the image size but without having huge data loss. Image compression using SVD coding algorithm, Compressive Encoders and using prediction Error and Vectorization ratio are proved to have numerous application in image compression. Image compression using SVD coding algorithm involves refactoring of a digital image into three matrixes. Refactoring is achieved by using singular values, and the image is represented with a smaller set of values. Though, encoders cannot directly optimize due to the inherentNon-differentiability of the compression loss but it is out performing recently proposed approaches based on RNNs. The PE-VQ method is based on Prediction Error and Vector Quantisation techniques where image performance is determined using compression ratio and PSNR values using databases namely CLEF med 2009, Corel 1k and standard images like Lena, Barbara etc. Thus, in this research article a comparative study of these three techniquesis carried out where their image quality and compression ratio is examined by using the PSNR values and compression ratios.
机译:如今,由于图像数据大小的巨大增加,有损图像压缩已被广泛用于减小图像大小,但又不会造成巨大的数据丢失。使用SVD编码算法,压缩编码器以及使用预测误差和矢量化比率进行的图像压缩已被证明在图像压缩中具有广泛的应用。使用SVD编码算法的图像压缩涉及将数字图像重构为三个矩阵。重构通过使用奇异值来实现,并且图像以较小的一组值表示。虽然,由于压缩损耗固有的非可微性,编码器无法直接进行优化,但是它正在执行基于RNN的最近提出的方法。 PE-VQ方法基于“预测误差”和“矢量量化”技术,其中使用压缩比和PSNR值(使用数据库CLEF med 2009,Corel 1k和标准图像,例如Lena,Barbara等)确定图像性能。对这三种技术进行了比较研究,其中通过使用PSNR值和压缩率检查了它们的图像质量和压缩率。

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