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A Sensor Image Dehazing Algorithm Based on Feature Learning

机译:一种基于特征学习的传感器图像脱水算法

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To solve the problems of color distortion and structure blurring in images acquired by sensors during bad weather, an image dehazing algorithm based on feature learning is put forward to improve the quality of sensor images. First, we extracted the multiscale structure features of the haze images by sparse coding and the various haze-related color features simultaneously. Then, the generative adversarial network (GAN) was used for sample training to explore the mapping relationship between different features and the scene transmission. Finally, the final haze-free image was obtained according to the degradation model. Experimental results show that the method has obvious advantages in its detail recovery and color retention. In addition, it effectively improves the quality of sensor images.
机译:为了解决在恶劣天气期间由传感器获取的图像中的图像中的颜色失真和结构模糊的问题,提高了特征学习的基于特征学习的图像脱水算法来提高传感器图像的质量。 首先,我们通过稀疏编码和各种雾霾相关颜色特征同时提取雾度图像的多尺度结构特征。 然后,生成的对抗性网络(GaN)用于样本训练,以探索不同特征与场景传输之间的映射关系。 最后,根据降解模型获得最终的雾度图像。 实验结果表明,该方法在其细节恢复和颜色保留方面具有明显的优势。 此外,它有效提高了传感器图像的质量。

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