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Learning Dual Convolutional Neural Networks for Low-Level Vision

机译:学习双重卷积神经网络以实现低视力

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In this paper, we propose a general dual convolutional neural network (DualCNN) for low-level vision problems, e.g., super-resolution, edge-preserving filtering, deraining and dehazing. These problems usually involve the estimation of two components of the target signals: structures and details. Motivated by this, our proposed DualCNN consists of two parallel branches, which respectively recovers the structures and details in an end-to-end manner. The recovered structures and details can generate the target signals according to the formation model for each particular application. The DualCNN is a flexible framework for low-level vision tasks and can be easily incorporated into existing CNNs. Experimental results show that the DualCNN can be effectively applied to numerous low-level vision tasks with favorable performance against the state-of-the-art methods.
机译:在本文中,我们提出了一种通用的双卷积神经网络(DualCNN),用于解决低级视觉问题,例如超分辨率,保留边缘的滤波,排水和除雾。这些问题通常涉及目标信号的两个分量的估计:结构和细节。因此,我们提出的DualCNN由两个并行分支组成,它们分别以端到端的方式恢复结构和细节。恢复的结构和细节可以根据用于每个特定应用的地层模型生成目标信号。 DualCNN是用于低级视觉任务的灵活框架,可以轻松地合并到现有的CNN中。实验结果表明,DualCNN可以有效地应用于众多低级视觉任务,并且相对于最新方法具有良好的性能。

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