Image Denoising Via Multi-Task Learning

Xiang Qian, Wang Yan-Wu
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Abstract

Although convolutional neural networks (CNN) have notably improved the effect of image denoising, removal of non-Gaussian noise remain a challenging problem. In this work, the statistical characteristic of image residuals is investigated and used as auxiliary information for better removing complex type noise via multi-task learning method. We propose an improved algorithm for denoising CNN (DCNN) by optimizing the training of the DCNN and it can achieve a Pareto optimal solution. Extensive experiments on benchmark data sets with different noise models demonstrate that the proposed method can effectively improve the quality of denoised images both in Gaussian and non-Gaussian noise, even when the network architecture is left unchanged.
基于多任务学习的图像去噪
尽管卷积神经网络(CNN)显著改善了图像去噪的效果,但去除非高斯噪声仍然是一个具有挑战性的问题。本文研究了图像残差的统计特征,并将残差作为辅助信息,通过多任务学习方法更好地去除复杂类型的噪声。通过对DCNN的训练进行优化,提出了一种改进的CNN去噪算法(DCNN),该算法可以达到Pareto最优解。在不同噪声模型的基准数据集上进行的大量实验表明,即使在网络结构不变的情况下,该方法也能有效地提高高斯和非高斯噪声下去噪图像的质量。
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