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Efficient Traffic Video Dehazing Using Adaptive Dark Channel Prior and Spatial–Temporal Correlations

机译:使用自适应暗通道先验和时空相关的高效交通视频去雾

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摘要

In order to restore traffic videos with different degrees of haziness in a real-time and adaptive manner, this paper presents an efficient traffic video dehazing method using adaptive dark channel prior and spatial-temporal correlations. This method uses a haziness flag to measure the degree of haziness in images based on dark channel prior. Then, it gets the adaptive initial transmission value by establishing the relationship between the image contrast and haziness flag. In addition, this method takes advantage of the spatial and temporal correlations among traffic videos to speed up the dehazing process and optimize the block structure of restored videos. Extensive experimental results show that the proposed method has superior haze removing and color balancing capabilities for the images with different degrees of haze, and it can restore the degraded videos in real time. Our method can restore the video with a resolution of 720 × 592 at about 57 frames per second, nearly four times faster than dark-channel-prior-based method and one time faster than image-contrast-enhanced method.
机译:为了实时,自适应地恢复雾度不同的交通视频,本文提出了一种利用自适应暗通道先验和时空相关性的高效交通视频去雾方法。该方法使用模糊度标记基于暗通道先验来测量图像中的模糊度。然后,通过建立图像对比度和模糊度标记之间的关系来获得自适应初始透射值。另外,该方法利用交通视频之间的空间和时间相关性来加速去雾处理并优化恢复的视频的块结构。大量的实验结果表明,该方法对不同雾度的图像具有较好的除雾和色彩平衡能力,可以实时还原退化的视频。我们的方法可以以每秒约57帧的速度恢复分辨率为720×592的视频,这比基于暗通道优先的方法快近四倍,比图像对比度增强的方法快一倍。

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