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Unbiasedness of regression wavelet analysis for progressive lossy-to-lossless coding

机译:渐进有损到无损编码的回归小波分析的无偏性

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The recently proposed Regression Wavelet Analysis (RWA) scheme holds a great promise as a spectral transform for compressing hyperspectral images due to its low complexity, reversibility, and demonstrated superior coding performance. The scheme is based on a pyramidal prediction, using multiple regression analysis, to exploit statistical dependence in the wavelet domain. For lossless coding, RWA has proven to offer better performance than other spectral transforms like reversible PCA and also better than the best and most recent lossless coding standard in remote sensing, CCSDS-123.0. For progressive lossy-to-lossless coding, RWA also yields improved performance as compared to PCA. In this paper, we show that the RWA parameters are unbiased for lossy coding, where the regression models are used not with the original transformed components, but with the recovered ones, which lack some information due to the lossy reconstruction. As a byproduct, we also report that the Exogenous RWA model, a variant of RWA where the employed regression parameters have been trained using other images from the same sensor, still provides almost identical performance to that obtained by applying regression on the same image, thus showing that hyperspectral images with large sizes in the spectral dimension can be coded via RWA without side information and at a lower computational cost.
机译:最近提出的回归小波分析(RWA)方案因其低复杂度,可逆性和出色的编码性能而作为用于压缩高光谱图像的光谱变换具有广阔的前景。该方案基于金字塔预测,使用多元回归分析,以利用小波域中的统计依赖性。对于无损编码,已证明RWA具有比其他频谱变换(如可逆PCA)更好的性能,并且也优于遥感技术中最好和最新的无损编码标准CCSDS-123.0。对于渐进式有损到无损编码,与PCA相比,RWA还可以提高性能。在本文中,我们表明RWA参数对于有损编码是无偏见的,其中回归模型不是用于原始的变换分量,而是用于恢复的分量,由于有损的重构,这些模型缺少一些信息。作为副产品,我们还报告说,外源RWA模型是RWA的一种变体,其中已使用来自同一传感器的其他图像对使用的回归参数进行了训练,其性能仍与通过对同一图像进行回归获得的性能几乎相同,因此这表明可以通过RWA对光谱尺寸较大的高光谱图像进行编码,而无需附带信息,并且计算成本较低。

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