论文标题

基于一致和对比辅助重建的强大单图像去雪橇

Robust Single Image Dehazing Based on Consistent and Contrast-Assisted Reconstruction

论文作者

Cheng, De, Li, Yan, Zhang, Dingwen, Wang, Nannan, Gao, Xinbo, Sun, Jiande

论文摘要

单图像作为基本的低级视觉任务,对于发展强大的智能监视系统至关重要。在本文中,我们尽早努力考虑在各种雾度密度下进行脱掩护,这是一个现实的,而在提出的Singe Image Dehazing的研究中,这是一个现实的问题。为了正确解决这个问题,我们提出了一个新型的密度变化学习框架,以提高图像DEHZING模型的鲁棒性,并通过各种负面朦胧的图像有助于,以更好地处理各种复杂的朦胧场景。具体而言,在一致性调查的框架下与建议的对比辅助重建损失(CARL)优化了飞行网络。 CARL可以通过从不同方向挤压到其干净的目标,从而充分利用负面信息,以促进传统的正向脱悬仪目标函数。同时,一致性正规化在给定多层朦胧的图像的情况下保持一致的输出,从而提高了模型的鲁棒性。对两个合成和三个现实世界数据集的广泛实验结果表明,我们的方法显着超过了最新方法。

Single image dehazing as a fundamental low-level vision task, is essential for the development of robust intelligent surveillance system. In this paper, we make an early effort to consider dehazing robustness under variational haze density, which is a realistic while under-studied problem in the research filed of singe image dehazing. To properly address this problem, we propose a novel density-variational learning framework to improve the robustness of the image dehzing model assisted by a variety of negative hazy images, to better deal with various complex hazy scenarios. Specifically, the dehazing network is optimized under the consistency-regularized framework with the proposed Contrast-Assisted Reconstruction Loss (CARL). The CARL can fully exploit the negative information to facilitate the traditional positive-orient dehazing objective function, by squeezing the dehazed image to its clean target from different directions. Meanwhile, the consistency regularization keeps consistent outputs given multi-level hazy images, thus improving the model robustness. Extensive experimental results on two synthetic and three real-world datasets demonstrate that our method significantly surpasses the state-of-the-art approaches.

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