Department of Computer Science, Jinan University, Guangzhou 510632, China.
Department of Electrical and Computer Engineering, University of California, Riverside, CA 92521, USA.
Sensors (Basel). 2021 Feb 1;21(3):960. doi: 10.3390/s21030960.
In this paper, a transmission-guided lightweight neural network called TGL-Net is proposed for efficient image dehazing. Unlike most current dehazing methods that produce simulated transmission maps from depth data and haze-free images, in the proposed work, guided transmission maps are computed automatically using a filter-refined dark-channel-prior (F-DCP) method from real-world hazy images as a regularizer, which facilitates network training not only on synthetic data, but also on natural images. A double-error loss function that combines the errors of a transmission map with the errors of a dehazed image is used to guide network training. The method provides a feasible solution for introducing priors obtained from traditional non-learning-based image processing techniques as a guide for training deep neural networks. Extensive experimental results demonstrate that, in terms of several reference and non-reference evaluation criteria for real-world images, the proposed method can achieve state-of-the-art performance with a much smaller network size and with significant improvements in efficiency resulting from the training guidance.
本文提出了一种名为 TGL-Net 的基于传输引导的轻量化神经网络,用于高效的图像去雾。与大多数当前的去雾方法不同,这些方法从深度数据和无雾图像中生成模拟的传输图,在本工作中,引导传输图是使用从真实雾图像中通过滤波器细化的暗通道先验(F-DCP)方法自动计算的,这不仅为网络训练提供了来自合成数据的正则化,也提供了来自自然图像的正则化,从而促进了网络训练。采用了一种双误差损失函数,将传输图的误差与去雾图像的误差相结合,以指导网络训练。该方法为将从传统非基于学习的图像处理技术获得的先验知识作为训练深度神经网络的指导提供了一种可行的解决方案。大量实验结果表明,在真实图像的多个参考和非参考评估标准方面,与现有的先进方法相比,该方法在使用更小的网络规模的同时,能够实现最先进的性能,并且由于训练指导而显著提高了效率。