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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Near-Infrared Fusion via Color Regularization for Haze and Color Distortion Removals
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Near-Infrared Fusion via Color Regularization for Haze and Color Distortion Removals

机译:通过色彩正则化进行近红外融合以去除雾度和色彩失真

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摘要

Different from conventional haze removal methods based on a single image, near-infrared imaging can provide two types of multimodal images: one is the near-infrared image and the other is the visible color image. These two images have different characteristics regarding color and visibility. The captured near-infrared image is haze-free, but it is grayscale, whereas the visible color image has colors, but it contains haze. There are serious discrepancies in terms of brightness and image structures between the near-infrared image and the visible color image. Due to this discrepancy, the direct use of the near-infrared image for haze removal causes a color distortion problem during near-infrared fusion. The key objective for the near-infrared fusion is therefore to remove the color distortion as well as the haze. To achieve this objective, this paper presents a new near-infrared fusion model that combines the proposed new color and depth regularizations with the conventional haze degradation model. The proposed color regularization sets the color range of the unknown haze-free image based on the combination of the two colors of the colorized near-infrared image and the captured visible color image. That is, the proposed color regularization can provide color information for the unknown haze-free color image. The new depth regularization enables the consecutively estimated depth maps not to be largely deviated, thereby transferring natural-looking colors and high visibility of the colorized near-infrared image into the preliminary dehazed version of the captured visible color image with color distortion and edge artifacts. Experimental results show that the proposed color and depth regularizations can help remove the color distortion and the haze simultaneously. The effectiveness of the proposed color regularization for the near-infrared fusion is verified by comparing it with other conventional regularizations.
机译:与基于单个图像的常规除雾方法不同,近红外成像可以提供两种类型的多峰图像:一种是近红外图像,另一种是可见彩色图像。这两个图像在颜色和可见性方面具有不同的特征。捕获的近红外图像没有雾霾,但是是灰度级的,而可见的彩色图像虽然有颜色,但是却含有雾霾。在亮度和图像结构方面,近红外图像和可见彩色图像之间存在严重差异。由于这种差异,将近红外图像直接用于雾霾去除会导致在近红外融合过程中出现颜色失真问题。因此,近红外融合的关键目标是消除色彩失真和雾度。为实现此目标,本文提出了一种新的近红外融合模型,该模型将建议的新颜色和深度正则化与常规雾度降低模型相结合。所提出的颜色正则化基于彩色近红外图像和捕获的可见彩色图像的两种颜色的组合来设置未知无雾度图像的颜色范围。即,提出的颜色正则化可以为未知的无雾度彩色图像提供颜色信息。新的深度正则化使得连续估计的深度图不会出现较大偏差,从而将自然的颜色和彩色近红外图像的高可见性转移到捕获的可见彩色图像的初步除雾版本中,该版本具有颜色失真和边缘伪影。实验结果表明,提出的颜色和深度正则化方法可以帮助同时消除颜色失真和雾度。通过将其与其他常规正则化进行比较,可以验证所提出的针对近红外融合的颜色正则化的有效性。

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