We consider the challenging blind denoising problem for Poisson-Gaussian noise, in which no additional information about clean images or noise level parameters is available. Particularly, when only "single" noisy images are available for training a denoiser, the denoising performance of existing methods was not satisfactory. Recently, the blind pixelwise affine image denoiser (BP-AIDE) was proposed and significantly improved the performance in the above setting, to the extent that it is competitive with denoisers which utilized additional information. However, BP-AIDE seriously suffered from slow inference time due to the inefficiency of noise level estimation procedure and that of the blind-spot network (BSN) architecture it used. To that end, we propose Fast Blind Image Denoiser (FBI-Denoiser) for Poisson-Gaussian noise, which consists of two neural network models; 1) PGE-Net that estimates Poisson-Gaussian noise parameters 2000 times faster than the conventional methods and 2) FBI-Net that realizes a much more efficient BSN for pixelwise affine denoiser in terms of the number of parameters and inference speed. Consequently, we show that our FBI-Denoiser blindly trained solely based on single noisy images can achieve the state-of-the-art performance on several real-world noisy image benchmark datasets with much faster inference time (x 10), compared to BP-AIDE. The official code of our method is available at https://github.com/csm9493/FBI-Denoiser.
翻译:我们认为Poisson-Gauussian噪音具有挑战性的盲目去化问题,在这个问题上,没有关于清洁图像或噪音水平参数的额外信息。特别是,当只有“单”的噪音图像可用于培训一个拆音器时,现有方法的消化性能并不令人满意。最近,提出了由两种神经网络模型组成的盲人像素素图像脱色器(BP-AIDE),并大大改进了上述环境的性能,因为与使用更多信息的Demoisosers相比,它具有竞争力。然而,BP-AIDE由于噪音水平估计程序及其使用的盲点网络结构效率不高,因此受到缓慢的推断时间的严重影响。为此,我们提议为Poisson-Gaussian噪音(BB-Denoiser)提供快速的快速失色图像(FBB-Denoisl), 以我们经过训练的精确的精确度标准(BISN-F)的精确度比常规方法快得多。