Clustered Reversible-KLT for Progressive Lossy-to-Lossless 3d Image Coding

Ian Blanes, J. Serra-Sagristà
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引用次数: 25

Abstract

The RKLT is a lossless approximation to the KLT, and has been recently employed for progressive lossy-to-lossless coding of hyperspectral images. Both yield very good coding performance results, but at a high computational price. In this paper we investigate two RKLT clustering approaches to lessen the computational complexity problem: a normal clustering approach, which still yields good performance; and a multi-level clustering approach, which has almost no quality penalty as compared to the original RKLT. Analysis of rate-distortion evolution and of lossless compression ratio is provided. The proposed approaches supply additional benefits, such as spectral scalability, and a decrease of the side information needed to invert the transform. Furthermore,since with a clustering approach, SERM factorization coefficients are bounded to a finite range, the proposed methods allow coding of large three dimensional images within JPEG2000.
累进有损到无损三维图像编码的聚类可逆klt
RKLT是KLT的一种无损近似,最近被用于高光谱图像的累进有损到无损编码。两者都能产生非常好的编码性能结果,但计算代价很高。在本文中,我们研究了两种RKLT聚类方法来降低计算复杂性问题:一种正常聚类方法,仍然可以产生良好的性能;以及多级聚类方法,与最初的RKLT相比,它几乎没有质量损失。分析了速率失真的演变和无损压缩比。所提出的方法提供了额外的好处,如光谱可扩展性,并减少了反变换所需的侧信息。此外,由于使用聚类方法,SERM分解系数被限定在有限范围内,因此所提出的方法允许在JPEG2000中编码大型三维图像。
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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