基于图的准无损压缩光场空间角预测

Mira Rizkallah, Thomas Maugey, C. Guillemot
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引用次数: 4

摘要

基于图的变换已被证明是图像压缩的强大工具。然而,当支持度增加时,即当数据的维数很高时,如光场的情况下,基函数的计算很快变得难以处理。为了解决这一难题,研究了有限支持下的局部变换。然而,支持的局部性可能不允许我们充分利用信号中的长期依赖关系。在本文中,我们描述了一个基于图的预测解决方案,该方案允许利用图内预测机制以及图变换的良好能量压缩特性。该方法依赖于可分离的空间-角变换,并从单个压缩参考视图和高角频率系数中提取低频空间-角系数。在测试中,我们使用QP=0的HEVC-Intra对参照系进行高质量编码。包含很少能量的高角频率系数使用简单的熵编码器进行编码。该方法在高质量的准无损光场压缩中是非常有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph-Based Spatio-Angular Prediction for Quasi-Lossless Compression of Light Fields
Graph-based transforms have been shown to be powerful tools for image compression. However, the computation of the basis functions becomes rapidly untractable when the support increases, i.e. when the dimension of the data is high as in the case of light fields. Local transforms with limited supports have been investigated to cope with this difficulty. Nevertheless, the locality of the support may not allow us to fully exploit long term dependencies in the signal. In this paper, we describe a graph based prediction solution that allows taking advantage of intra prediction mechanisms as well as of the good energy compaction properties of the graph transform. The approach relies on a separable spatio-angular transform and derives low frequency spatio-angular coefficients from one single compressed reference view and from the high angular frequency coefficients. In the tests, we used HEVC-Intra, with QP=0, to encode the reference frame with high quality. The high angular frequency coefficients containing very little energy are coded using a simple entropy coder. The approach is shown to be very efficient in a context of high quality quasi-lossless compression of light fields.
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