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Near-lossless compression by relaxation-labeled 3D prediction

机译:通过松弛标记的3D预测实现近乎无损的压缩

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摘要

In this work, near-lossless compression, i.e., yielding strictly bounded reconstruction error, is proposed for high-quality data compression. An interframe causal DPCM scheme is presented for interframe compression of remotely sensed optical data, both multispectral and hyperspectral, as well as of volumetric medical data. The proposed encoder relies on a classified linear-regression prediction, followed by context-based arithmetic coding of the outcome prediction errors. It provides outstanding performances, both for reversible and for irreversible, i.e., near-lossless, compression. Coding time are affordable thanks to fast convergence of training. Decoding is always performed in real time.
机译:在这项工作中,提出了近无损压缩,即产生严格有界的重构误差,以用于高质量数据压缩。提出了一种帧间因果DPCM方案,用于多光谱和高光谱的遥感光学数据以及体医学数据的帧间压缩。所提出的编码器依赖于分类的线性回归预测,然后是结果预测误差的基于上下文的算术编码。它提供了出色的性能,无论是可逆的还是不可逆的,即几乎无损的压缩。得益于培训的快速收敛,编码时间负担得起。解码始终实时进行。

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