Recently, deep learning-based image denoising methods have achieved promising performance on test data with the same distribution as training set, where various denoising models based on synthetic or collected real-world training data have been learned. However, when handling real-world noisy images, the denoising performance is still limited. In this paper, we propose a simple yet effective Bayesian deep ensemble (BDE) method for real-world image denoising, where several representative deep denoisers pre-trained with various training data settings can be fused to improve robustness. The foundation of BDE is that real-world image noises are highly signal-dependent, and heterogeneous noises in a real-world noisy image can be separately handled by different denoisers. In particular, we take well-trained CBDNet, NBNet, HINet, Uformer and GMSNet into denoiser pool, and a U-Net is adopted to predict pixel-wise weighting maps to fuse these denoisers. Instead of solely learning pixel-wise weighting maps, Bayesian deep learning strategy is introduced to predict weighting uncertainty as well as weighting map, by which prediction variance can be modeled for improving robustness on real-world noisy images. Extensive experiments have shown that real-world noises can be better removed by fusing existing denoisers instead of training a big denoiser with expensive cost. On DND dataset, our BDE achieves +0.28~dB PSNR gain over the state-of-the-art denoising method. Moreover, we note that our BDE denoiser based on different Gaussian noise levels outperforms state-of-the-art CBDNet when applying to real-world noisy images. Furthermore, our BDE can be extended to other image restoration tasks, and achieves +0.30dB, +0.18dB and +0.12dB PSNR gains on benchmark datasets for image deblurring, image deraining and single image super-resolution, respectively.
翻译:最近,深层次的基于学习的图像失色方法在测试数据上取得了有希望的性能,其分布方式与培训设置相同,其中学习了基于合成或收集的真实世界培训数据的各种淡化模型。然而,在处理真实世界噪音图像时,淡化性绩效仍然有限。在本论文中,我们提出了一个简单而有效的巴伊西亚深深层共同点(BDE)方法,用于真实世界图像失色,其中若干有各种培训数据设置的有代表性的深层沉降层(BDE)方法可以结合起来,以提高稳健性。 BDE的基础在于,真实世界图像的噪音高度依赖信号,而真实世界噪音中的杂变异性噪音可以分别由不同的demouders处理。我们经过良好训练的GENNet、HINet、UExexer和GMSNet进入了消化层(BDE),而现在采用U-Net来预测以等分解型重度的地图,而当我们仅仅学习低比值的图像时,BDE的深度学习策略是用来预测真实的图像,而BDE的深度学习策略可以预测到真实的不稳度,而更精确的 Ral-deal-moudal-moal-mode-modal-modeal-modal-modes-modal-modal-mod-mod-modal-modal-mod-mod-mod-modal-modal-modes-modes-modal-modal-modes-modes-mod-modes-modal-modess-mod-modes-modessal-modal-mod-mod-mod-mod-modessal-modes-modess-modess-mod-mod-mod-mod-mod-mod-mod-modal-modal-modal-modal-modal-modal-modal-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-mod-