BBD:一种新的IASI-NG高光谱图像贝叶斯双聚类去噪算法

M. Colom, G. Blanchet, A. Klonecki, O. Lezeaux, E. Pequignot, F. Poustomis, C. Thiebaut, S. Ythier, J. Morel
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引用次数: 1

摘要

我们提出了一种新的3D高光谱图像去噪方法,用于将于2021年发射的metop -第二代系列卫星,该卫星将采用新的IASI-NG干涉仪。这种自适应方法直接从输入的噪声颗粒中检索数据模型,使用以下技术:双聚类(光谱和空间)、自适应PCA降维和贝叶斯去噪。由于数据本身具有冗余性,PCA降维方法已被证明是一种有效的去噪方法。我们在这里证明,通过将局部PCA降维与双聚类和贝叶斯去噪相结合,可以显著提高单独PCA降维的PSNR。这种降噪暗示了将卫星分辨率乘以4倍的可能性,同时保持可接受的信噪比。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BBD: A new Bayesian bi-clustering denoising algorithm for IASI-NG hyperspectral images
We propose a new denoising method for 3D hyperspectral images for the future MetOp-Second Generation series satellite incorporating the new IASI-NG interferometer, to be launched in 2021. This adaptive method retrieves the data model directly from the input noisy granule, using the following techniques: dual clustering (spectral and spatial), dimensionality reduction by adaptive PCA, and Bayesian denoising. The use of dimensionality reduction by PCA has been already proven an effective denoising technique because of intrinsic data redundancy. We demonstrate here that by combining a local PCA dimensionality reduction with a dual clustering and a Bayesian denoising, it is possible to improve significantly the PSNR with respect to PCA reduction alone. This noise reduction hints at the possibility to multiply of the resolution of the satellite by factor 4, while keeping an acceptable SNR.
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