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Multi-scale Single Image Dehazing using Perceptual Pyramid Deep Network

机译:使用感知金字塔深网络的多尺度单图像脱水

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Haze adversely degrades quality of an image thereby affecting its aesthetic appeal and visibility in outdoor scenes. Single image dehazing is particularly challenging due to its ill-posed nature. Most existing work, including the recent convolutional neural network (CNN) based methods, rely on the classical mathematical formulation where the hazy image is modeled as the superposition of attenuated scene radiance and the atmospheric light. In this work, we explore CNNs to directly learn a non-linear function between hazy images and the corresponding clear images. We present a multi-scale image dehazing method using Perceptual Pyramid Deep Network based on the recently popular dense blocks and residual blocks. The proposed method involves an encoder-decoder structure with a pyramid pooling module in the decoder to incorporate contextual information of the scene while decoding. The network is learned by minimizing the mean squared error and perceptual losses. Multi-scale patches are used during training and inference process to further improve the performance. Experiments on the recently released NTIRE2018-Dehazing dataset demonstrates the superior performance of the proposed method over recent state-of-the-art approaches. Additionally, the proposed method is ranked among top-3 methods in terms of quantitative performance in the recently conducted NTIRE2018-Dehazing challenge. Code can be found at https://github.com/hezhangsprinter/NTIRE-2018-Dehazing-Challenge
机译:阴霾对图像的质量不利地降低,从而影响其在室外场景中的美学吸引力和可见性。由于其不良性质,唯一的图像脱色尤其挑战。大多数现有的工作,包括最近的卷积神经网络(CNN)的方法,依赖于经典的数学制定,其中朦胧图像被建模为衰减场景辐射和大气光的叠加。在这项工作中,我们探索CNN直接学习朦胧图像和相应的清晰图像之间的非线性功能。我们使用基于最近流行的密集块和残余块的感知金字塔深网络提供多尺度图像脱水方法。该提出的方法涉及编码器 - 解码器结构,该编码器解码器结构在解码器中具有金字塔汇集模块,以在解码时包含场景的上下文信息。通过最小化平均平方误差和感知损失来学习网络。在培训和推理过程中使用多尺度贴片以进一步提高性能。最近释放的NTIRE2018-Dehzing DataSet上的实验表明,在最近的最先进的方法上提出了该方法的优越性。另外,该方法在最近进行了NTIRE2018脱落挑战中的定量性能方面排名前3种方法。可以在https://github.com/hezhangsprinter/ntire-2018-dehazing-challenge找到代码

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