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Application research on improved CGAN in image raindrop removal

机译:改进的CANG在图像雨滴中改进的应用研究

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摘要

Rainy weather can greatly reduce the image quality and hinder the subsequent processing of the image. In order to achieve raindrop removal on rainy images, the single image raindrop removal method based on conditional generative adversarial networks (CGAN) is proposed. In this method, CGAN is used as the basic framework. The network receives the raindrop image as an additional condition information and adds Lipschitz constraint on the network. The network model is trained by the combination of condition adversarial loss, content loss, and perception loss to repair the raindrop area and reconstruct the image. The experimental results show that the proposed method has better raindrop removal effect than the existing algorithm and can avoid image blurring on the basis of ensuring the raindrop removal effect.
机译:多雨天气可以大大降低图像质量并阻碍图像的后续处理。为了在雨水图像上取出雨滴,提出了基于条件生成对抗网络(CGAN)的单一图像雨滴去除方法。在此方法中,Cgan被用作基本框架。网络接收雨滴图像作为附加条件信息,并在网络上添加Lipschitz约束。网络模型采用条件发生的侵犯损失,内容损失和感知损失的组合培训,以修复雨滴区域并重建图像。实验结果表明,该方法具有比现有算法更好的雨滴清除效果,并且可以在确保雨滴去除效果的基础上避免图像模糊。

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