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Image Deblurring of Video Surveillance System in Rainy Environment

机译:雨云中视频监控系统的图像去掩饰

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摘要

Video surveillance system is used in various fields such as transportation and social life. The bad weather can lead to the degradation of the video surveillance image quality. In rainy environment, the raindrops and the background are mixed, which lead to make the image degradation, so the removal of the raindrops has great significance for image restoration. In this article, after analyzing the inter-frame difference method in detecting and removing raindrops, a background difference method is proposed based on Gaussian model. In this method, the raindrop is regarded as a moving object relative to the background. The principle and procedure of the method are given to detect and remove raindrops. The parameters of the single Gaussian background model are studied in this article. The important parameter of the learning rate of Gaussian model is explored in order to better detection and removal of raindrops. Experiment shows that the results of removal of raindrops by using the proposed algorithm are better than that by using the inter-frame difference method. The image processing effect is the best when the learning rate is 0.6. The research results can provide technical reference for similar research on eliminating the influence of rainy weather.
机译:视频监控系统用于各种领域,如运输和社交生活。恶劣天气可能导致视频监控图像质量的降低。在多雨环境中,混合雨滴和背景,这导致图像劣化,因此去除雨滴对图像恢复具有重要意义。在本文中,在分析检测和去除雨滴中的帧间差分方法之后,基于高斯模型提出了背景差制方法。在该方法中,雨滴被认为是相对于背景的移动物体。给出了该方法的原理和过程检测和去除雨滴。本文研究了单高斯背景模型的参数。探索了高斯模型学习率的重要参数,以便更好地检测和去除雨滴。实验表明,通过使用所提出的算法去除雨珠的结果优于使用帧间差分法的较好。当学习率为0.6时,图像处理效果是最佳的。研究结果可以为消除多雨天气影响的类似研究提供技术参考。

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