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Hyper-spectral impulse denoising: A row-sparse Blind Compressed Sensing formulation

机译:高光谱脉冲降噪:行稀疏盲压缩感知公式

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This paper addresses the problem of impulse denoising from hyper-spectral images. Impulse noise is sparse; removing impulse noise requires minimizing an l-norm data fidelity term. Prior studies have exploited the intra-band spatial correlation (leading to sparsity in transform domain) and inter-band spectral-correlation (joint-sparsity) of hyper-spectral images for Gaussian denoising. In this work, we propose to learn the joint-sparsity promoting dictionary adaptively from the data for impulse denoising problems. Unlike dictionary learning techniques, the sparsifying dictionary is not learnt in an offline training phase. We follow the Blind Compressed Sensing (BCS) framework - dictionary learning and denoising proceeds simultaneously. The optimization problem that arises out of our formulation is solved using the Split Bregman approach. The proposed algorithm, when compared against prior techniques (on real hyper-spectral datasets) shows more than 5dB improvement in PSNR on average.
机译:本文讨论了从高光谱图像中进行脉冲去噪的问题。脉冲噪声很少;去除脉冲噪声需要最小化l范数数据保真度项。先前的研究已经利用高光谱图像的带内空间相关性(导致变换域中的稀疏性)和带间光谱相关性(联合稀疏性)进行高斯去噪。在这项工作中,我们建议从脉冲降噪问题的数据中自适应学习联合稀疏促进字典。与字典学习技术不同,稀疏字典不在离线训练阶段学习。我们遵循盲压缩感知(BCS)框架-字典学习和降噪同时进行。使用Split Bregman方法可以解决由于我们的公式而产生的优化问题。与现有技术(在实际的高光谱数据集上)相比,所提出的算法显示出PSNR平均提高了5dB以上。

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