Non-aligned supervision for Real Image Dehazing
Junkai Fan, Fei Guo, Jianjun Qian, Xiang Li, Jun Li, Jian Yang

TL;DR
This paper introduces a non-aligned supervision framework for real image dehazing that effectively handles misaligned hazy and clear image pairs, utilizing a new dataset and innovative network components.
Contribution
It proposes a novel non-alignment supervision method for dehazing, including a multi-scale reference loss, a new dataset, and specialized attention networks for airlight and transmission estimation.
Findings
Outperforms existing dehazing methods on real-world images
Successfully utilizes unaligned image pairs for training
Demonstrates effectiveness on the new Phone-Hazy dataset
Abstract
Removing haze from real-world images is challenging due to unpredictable weather conditions, resulting in the misalignment of hazy and clear image pairs. In this paper, we propose an innovative dehazing framework that operates under non-aligned supervision. This framework is grounded in the atmospheric scattering model, and consists of three interconnected networks: dehazing, airlight, and transmission networks. In particular, we explore a non-alignment scenario that a clear reference image, unaligned with the input hazy image, is utilized to supervise the dehazing network. To implement this, we present a multi-scale reference loss that compares the feature representations between the referred image and the dehazed output. Our scenario makes it easier to collect hazy/clear image pairs in real-world environments, even under conditions of misalignment and shift views. To showcase the…
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Taxonomy
TopicsImage Enhancement Techniques · Video Surveillance and Tracking Methods · Visual Attention and Saliency Detection
