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Prediction and Sampling With Local Graph Transforms for Quasi-Lossless Light Field Compression

机译:对局部图形变换的预测与取样用于准无损光场压缩

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摘要

Graph-based transforms have been shown to be powerful tools in terms of image energy compaction. However, when the size of the support increases to best capture signal dependencies, the computation of the basis functions becomes rapidly untractable. This problem is in particular compelling for high dimensional imaging data such as light fields. The use of local transforms with limited supports is a way to cope with this computational difficulty. Unfortunately, the locality of the support may not allow us to fully exploit long term signal dependencies present in both the spatial and angular dimensions of light fields. This paper describes sampling and prediction schemes with local graph-based transforms enabling to efficiently compact the signal energy and exploit dependencies beyond the local graph support. The proposed approach is investigated and is shown to be very efficient in the context of spatio-angular transforms for quasi-lossless compression of light fields.
机译:在图像能量压缩方面,基于图形的变换已被证明是强大的工具。然而,当支持的大小增加到最佳捕获信号依赖性时,基础函数的计算变得快速不可能。这个问题特别是对于诸如光场的高维成像数据。利用具有有限支持的本地变换是一种应对这种计算难度的一种方式。遗憾的是,支持的局部性可能不允许我们充分利用在光场的空间和角度尺寸中存在的长期信号依赖性。本文介绍了基于本地图形的变换的采样和预测方案,使能有效地紧凑的信号能量并利用超出本地图形支持的依赖性。研究了所提出的方法,并显示在适用于浅田的准无损压缩的时空变换的背景下非常有效。

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