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基于非天空偏振的非镜面物体去雾算法:利用偏振差异和全局场景特征

Non-sky polarization-based dehazing algorithm for non-specular objects using polarization difference and global scene feature.

作者信息

Qu Yufu, Zou Zhaofan

出版信息

Opt Express. 2017 Oct 16;25(21):25004-25022. doi: 10.1364/OE.25.025004.

Abstract

Photographic images taken in foggy or hazy weather (hazy images) exhibit poor visibility and detail because of scattering and attenuation of light caused by suspended particles, and therefore, image dehazing has attracted considerable research attention. The current polarization-based dehazing algorithms strongly rely on the presence of a "sky area", and thus, the selection of model parameters is susceptible to external interference of high-brightness objects and strong light sources. In addition, the noise of the restored image is large. In order to solve these problems, we propose a polarization-based dehazing algorithm that does not rely on the sky area ("non-sky"). First, a linear polarizer is used to collect three polarized images. The maximum- and minimum-intensity images are then obtained by calculation, assuming the polarization of light emanating from objects is negligible in most scenarios involving non-specular objects. Subsequently, the polarization difference of the two images is used to determine a sky area and calculate the infinite atmospheric light value. Next, using the global features of the image, and based on the assumption that the airlight and object radiance are irrelevant, the degree of polarization of the airlight (DPA) is calculated by solving for the optimal solution of the correlation coefficient equation between airlight and object radiance; the optimal solution is obtained by setting the right-hand side of the equation to zero. Then, the hazy image is subjected to dehazing. Subsequently, a filtering denoising algorithm, which combines the polarization difference information and block-matching and 3D (BM3D) filtering, is designed to filter the image smoothly. Our experimental results show that the proposed polarization-based dehazing algorithm does not depend on whether the image includes a sky area and does not require complex models. Moreover, the dehazing image except specular object scenarios is superior to those obtained by Tarel, Fattal, Ren, and Berman based on the criteria of no-reference quality assessment (NRQA), blind/referenceless image spatial quality evaluator (BRISQUE), blind anistropic quality index (AQI), and e.

摘要

在雾天或霾天拍摄的照片图像(模糊图像)由于悬浮颗粒引起的光散射和衰减,呈现出较差的能见度和细节,因此,图像去雾引起了相当多的研究关注。当前基于偏振的去雾算法强烈依赖于“天空区域”的存在,因此,模型参数的选择容易受到高亮度物体和强光源的外部干扰。此外,恢复图像的噪声较大。为了解决这些问题,我们提出了一种不依赖天空区域(“非天空”)的基于偏振的去雾算法。首先,使用线性偏振器收集三张偏振图像。然后通过计算获得最大强度图像和最小强度图像,假设在大多数涉及非镜面物体的场景中,物体发出的光的偏振可以忽略不计。随后,利用这两张图像的偏振差异来确定天空区域并计算无限大气光值。接下来,利用图像的全局特征,并基于大气光和物体辐射无关的假设,通过求解大气光和物体辐射之间的相关系数方程的最优解来计算大气光的偏振度(DPA);通过将方程右侧设为零来获得最优解。然后,对模糊图像进行去雾处理。随后,设计了一种结合偏振差异信息和块匹配与三维(BM3D)滤波的滤波去噪算法,对图像进行平滑滤波。我们的实验结果表明,所提出的基于偏振的去雾算法不依赖于图像是否包含天空区域,也不需要复杂的模型。此外,除镜面物体场景外的去雾图像在无参考质量评估(NRQA)、盲/无参考图像空间质量评估器(BRISQUE)、盲各向异性质量指数(AQI)和e等标准下优于Tarel、Fattal、Ren和Berman获得的图像。

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