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IMPROVING EXTREME LOW-LIGHT IMAGE DENOISING VIA RESIDUAL LEARNING

机译:通过剩余学习改善极端低光影去噪

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Taking a satisfactory picture in a low-light environment remains a challenging problem. Low-light imaging mainly suffers from noise due to the low signal-to-noise ratio. Many methods have been proposed for the task of image denois-ing, but they fail to work under extremely low-light conditions. Recently, deep learning based approaches have been presented that have higher objective quality than traditional methods, but they usually have high computational cost which makes them impractical to use in real-time applications or where the processing power is limited. In this paper, we propose a new residual learning based deep neural network for end-to-end extreme low-light image denoising that can not only significantly reduce the computational cost but also improve the quality over existing methods in both objective and subjective metrics. Specifically, in one setting we achieved 29x speedup with higher PSNR. Subjectively, our method provides better color reproduction and preserves more detailed texture information compared to state-of-the-art methods.
机译:在低光环境中拍摄令人满意的画面仍然是一个具有挑战性的问题。低光成像由于低信噪比而导致噪声。已经提出了许多方法对于图像Denois-ing的任务,但他们无法在极低的条件下工作。最近,已经提出了深度学习的方法,其具有比传统方法更高的客观质量,但它们通常具有高计算成本,这使得它们在实时应用中使用不切实际或者处理能力有限。在本文中,我们提出了一种新的基于剩余学习的基于剩余的深神经网络,用于端到端极端低光图像去噪,不仅可以显着降低计算成本,而且还可以提高目标和主观度量的现有方法的质量。具体而言,在一个设置中,我们实现了29倍的PSNR加速。主观地,我们的方法提供了更好的颜色再现,并与最先进的方法相比,保留更详细的纹理信息。

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