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Lightweight Deep Residue Learning for Joint Color Image Demosaicking and Denoising

机译:轻量级深度残留学习联合彩色图像脱索和去噪

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Color demosaicking and image denoising each plays an important role in digital cameras. Conventional model-based methods often fail around the areas of strong textures and produce disturbing visual artifacts such as aliasing and zippering. Recently developed deep learning based methods were capable of obtaining images of better qualities though at the price of high computational cost, which make them not suitable for real-time applications. In this paper, we propose a lightweight convolutional neural network for joint demosaicking and denoising (JDD) problem with the following salient features. First, the densely connected network is trained in an end-to-end manner to learn the mapping from the noisy low-resolution space (CFA image) to the clean high-resolution space (color image). Second, the concept of deep residue learning and aggregated residual transformations are extended from image denoising and classification to JDD supporting more efficient training. Third, the design of our end-to-end network architecture is inspired by a rigorous analysis of JDD using sparsity models. Experimental results conducted for both demosaicking-only and JDD tasks have shown that the proposed method performs much better than existing state-of-the-art methods (i.e., higher visual quality, smaller training set and lower computational cost).
机译:彩色脱签和图像去噪每个都在数码相机中起着重要作用。基于常规的模型的方法通常在强纹理区域周围失败,并产生扰乱锯齿和拉链的视力伪影。最近开发的基于深度学习的方法能够以高计算成本的价格获得更好的品质的图像,这使得它们不适合实时应用。在本文中,我们提出了一种轻量级卷积神经网络,具有以下突出特征的联合去脱模和去噪(JDD)问题。首先,密度连接的网络以端到端的方式训练,以从嘈杂的低分辨率空间(CFA图像)到清洁的高分辨率空间(彩色图像)来学习映射。其次,深度残留学习和汇总剩余转换的概念从图像去噪和分类延伸到JDD支持更有效的培训。第三,我们的端到端网络架构的设计是通过使用稀疏模型对JDD进行严格分析的启发。对脱模和JDD任务进行的实验结果表明,该方法的方法比现有的最先进方法更好(即,高度的视觉质量,更小的训练集和较低的计算成本)。

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