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Evaluating Single Image Dehazing Methods Under Realistic Sunlight Haze

机译:在现实的阳光雾下评估单幅图像脱水方法

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Haze can degrade the visibility and the image quality drastically, thus degrading the performance of computer vision tasks such as object detection. Single image dehazing is a challenging and ill-posed problem, despite being widely studied. Most existing methods assume that haze has a uniform/homogeneous distribution and haze can have a single color, i.e. grayish white color similar to smoke, while in reality haze can be distributed non-uniformly with different patterns and colors. In this paper, we focus on haze created by sunlight as it is one of the most prevalent types of haze in the wild. Sunlight can generate non-uniformly distributed haze with drastic density changes due to sun rays and also a spectrum of haze color due to sunlight color changes during the day. This presents a new challenge to image dehazing methods. For these methods to be practical, this problem needs to be addressed. To quantify the challenges and assess the performance of these methods, we present a sunlight haze benchmark dataset, Sun-Haze, containing 107 hazy images with different types of haze created by sunlight having a variety of intensity and color. We evaluate a representative set of state-of-the-art image dehazing methods on this benchmark dataset in terms of standard metrics such as PSNR, SSIM, CIEDE2000, PI and NIQE. Our results provide information on limitations of current methods, and on the practicality of their underlying assumptions.
机译:雾度可以急剧地降低可见性和图像质量,从而降低了诸如物体检测的计算机视觉任务的性能。虽然被广泛研究,但唯一的图像脱色是一个具有挑战性和弊病的问题。大多数现有方法假设雾度具有均匀/均匀的分布和雾度可以具有单一颜色,即类似于烟雾的灰白色,而在现实雾气中可以用不同的图案和颜色均匀分布。在本文中,我们专注于阳光创造的雾霾,因为它是野外最普遍的雾度之一。由于太阳光线以及由于阳光颜色在白天发生变化,阳光可能产生非均匀分布的雾度,并且由于太阳光线以及由于阳光颜色变化而产生的雾度颜色。这对图像脱水方法提出了新的挑战。对于这些方法是实用的,需要解决这个问题。为了量化挑战并评估这些方法的性能,我们展示了一个阳光雾度基准数据集,Sun-Haze,包含107个朦胧图像,其具有不同类型的雾度,由阳光具有各种强度和颜色。我们根据PSNR,SSIM,CIDE2000,PI和NIQE等标准度量,在该基准数据集上评估一组代表性的艺术图像脱离方法。我们的结果提供了有关当前方法的局限性以及其潜在假设的实用性的信息。

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