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DCNet: Dark Channel Network for single-image dehazing

机译:DCNet:单图像脱水的暗通道网络

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摘要

Single-image dehazing is an extensively studied field and an ill-posed problem faced by vision-based systems in an outdoor environment. This paper proposes a dark channel network to estimate the transmission map of an input hazy scene for single-image dehazing. The architecture constitutes two major components-feature extraction layer and convolutional neural network layer. The former extracts the haze relevant features, while latter convolve these features with filter kernels to estimate the true scene transmission. Finally, the estimated transmission map is used to obtain the dehazed image using atmospheric scattering model. The experiments have been performed on synthetic hazy images and benchmark hazy dataset available in the literature. The performance of the proposed architecture outperforms the existing models in terms of standard quantitative metrics-mean square error, structural similarity index, and peak signal-to-noise ratio.
机译:单像脱色是一个广泛的研究领域,并且在室外环境中基于视觉的系统面临着不良问题。 本文提出了一个暗信道网络,以估计单图像去吸附的输入朦胧场景的传输映射。 该架构构成两个主要部件特征提取层和卷积神经网络层。 前者提取了雾霾相关功能,而后者将这些功能与过滤器内核卷曲以估计真实的场景传输。 最后,估计的传输地图用于使用大气散射模型获得去除湿图像。 在文献中可用的合成朦胧图像和基准朦胧数据集进行了实验。 拟议体系结构的性能在标准定量度量 - 均方误差,结构相似性指数和峰值信噪比方面优于现有模型。

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