O-HAZE: a dehazing benchmark

Proceedings of the IEEE conference on computer vision and pattern recognition workshops(2018)

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摘要
Haze removal or dehazing is a challenging ill-posed problem that has drawn a significant attention in the last few years. Despite this growing interest, the scientific community is still lacking a reference dataset to evaluate objectively and quantitatively the performance of proposed dehazing methods. The few datasets that are currently considered, both for assessment and training of learning-based dehazing techniques, exclusively rely on synthetic hazy images. To address this limitation, we introduce the first outdoor scenes database (named O-HAZE) composed of pairs of real hazy and corresponding haze-free images. In practice, hazy images have been captured in presence of real haze, generated by professional haze machines, and O-HAZE contains 45 different outdoor scenes depicting the same visual content recorded in haze-free and hazy conditions, under the same illumination parameters. To illustrate its usefulness, O-HAZE is used to compare a representative set of state-of-the-art dehazing techniques, using traditional image quality metrics such as PSNR, SSIM and CIEDE2000. This reveals the limitations of current techniques, and questions some of their underlying assumptions.
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关键词
dehazing methods,haze-free images,outdoor scenes,hazy conditions,professional haze machines,outdoor scenes database,synthetic hazy images,learning-based dehazing techniques,reference dataset,challenging ill-posed problem,haze removal,haze-free outdoor images,dehazing benchmark,O-HAZE,traditional image quality metrics,state-of-the-art dehazing techniques
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