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DRCDN: learning deep residual convolutional dehazing networks

机译:DRCDN:学习深度残留的卷积脱落网络

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摘要

Single image dehazing, which is the process of removing haze from a single input image, is an important task in computer vision. This task is extremely challenging because it is massively ill-posed. In this paper, we propose a novel end-to-end deep residual convolutional dehazing network (DRCDN) based on convolutional neural networks for single image dehazing, which consists of two subnetworks: one network is used for recovering a coarse clear image, and the other network is used to refine the result. The DRCDN firstly predicts the coarse clear image via a context aggregation subnetwork, which can capture global structure information. Subsequently, it adopts a novel hierarchical convolutional neural network to further refine the details of the clean image by integrating the local context information. The DRCDN is directly trained using complete images and the corresponding ground-truth haze-free images. Experimental results on synthetic datasets and natural hazy images demonstrate that the proposed method performs favorably against the state-of-the-art methods.
机译:单个图像脱色,即从单个输入图像中移除雾度的过程,是计算机视觉中的重要任务。这项任务非常具有挑战性,因为它是巨大的弊迹。在本文中,我们提出了一种基于卷积神经网络的新型端到端的深度残余卷积脱落网络(DRCDN),用于单图像脱水,由两个子网组成:一个网络用于恢复粗糙清晰图像,以及其他网络用于改进结果。 DRCDN首先通过上下文聚合子网预测粗略清晰图像,其可以捕获全局结构信息。随后,它采用一种新颖的层级卷积神经网络来通过集成本地上下文信息来进一步优化清洁图像的细节。 DRCDN使用完整的图像和相应的地面真相阴霾图像直接培训。合成数据集和自然朦胧图像的实验结果表明,该方法对最先进的方法表现有利。

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