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A two-step approach to see-through bad weather for surveillance video quality enhancement

机译:分两步看清恶劣天气的方法,可提高监控视频的质量

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Adverse weather conditions such as snow, fog or heavy rain greatly reduce the visual quality of outdoor surveillance videos. Video quality enhancement can improve the visual quality of surveillance videos providing clearer images with more details to better meet human perception needs and also improve video analytics performance. Existing work in this area mainly focuses on the quality enhancement for high-resolution videos or still images, but few algorithms are developed for enhancing surveillance videos, which normally have low resolution, high noises and compression artifacts. In addition, for snow or rain conditions, the image quality of near-field view is degraded by the obscuration of apparent snowflakes or raindrops, while the quality of far-field view is degraded by the obscuration of fog-like snowflakes or raindrops. Very few video quality enhancement algorithms have been developed to handle both problems. In this paper, we propose a novel video quality enhancement algorithm for see-through snow, fog or heavy rain. Our algorithm not only improves human visual perception experiences for video surveillance, but also reveal more video contents for better video content analyses. The proposed algorithm handles both near-field and far-field snow/rain effects by proposed a two-step approach: (1) the near-field enhancement algorithm identifies obscuration pixels by snow or rain in the near-field view and removes these pixels as snowflakes or raindrops; different from state-of-the-art methods, our proposed algorithm in this step can detect snowflakes on foreground objects or background, and apply different methods to fill in the removed regions. (2) The far- field enhancement algorithm restores the image's contrast information not only to reveal more details in the far-field view, but also to enhance the overall image's quality; in this step, the proposed algorithm adaptively enhances the global and local contrast, which is inspired on the human visual system, and accounts for the perceptual sensitivity to noises, compression artifacts, and the texture of image content. From our extensive testing, the proposed approach significantly improves the visual quality of surveillance videos by removing snow/fog/rain effects.
机译:恶劣的天气条件(例如雪,雾或大雨)大大降低了室外监控视频的视觉质量。视频质量增强可以改善监视视频的视觉质量,从而提供更清晰的图像和更多细节,从而更好地满足人们的感知需求,并提高视频分析性能。该领域的现有工作主要集中于提高高分辨率视频或静止图像的质量,但是很少开发用于增强监视视频的算法,这些算法通常具有低分辨率,高噪声和压缩伪像。另外,对于下雪或下雨的情况,由于明显的雪花或雨滴的遮挡而使近场视野的图像质量降低,而由于雾状的雪花或雨滴的遮挡而使远场视野的图像质量降低。已经开发出很少的视频质量增强算法来处理这两个问题。在本文中,我们针对透视的雪,雾或大雨提出了一种新颖的视频质量增强算法。我们的算法不仅可以改善人们对视频监控的视觉感知体验,而且可以显示更多视频内容以进行更好的视频内容分析。所提出的算法通过提出的两步方法来处理近场和远场雪/雨效应:(1)近场增强算法通过在近场视图中通过雪或雨来识别遮盖像素,并去除这些像素如雪花或雨滴;与最新技术不同,此步骤中我们提出的算法可以检测前景对象或背景上的雪花,并应用不同的方法来填充删除的区域。 (2)远场增强算法还原图像的对比度信息,不仅可以在远场视图中显示更多细节,而且可以提高整体图像质量。在这一步骤中,所提出的算法自适应地增强了全局和局部对比度,这在人类视觉系统上得到了启发,并考虑了对噪声,压缩伪像和图像内容纹理的感知敏感性。通过我们的广泛测试,提出的方法通过消除雪/雾/雨的影响,大大提高了监视视频的视觉质量。

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