重新注意网络:一种图像去雾网络

Shuai Song, Ren-Yuan Zhang, Zhipeng Qiu, Jiawei Jin, Shangbin Yu
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引用次数: 3

摘要

在图像去雾任务中,有三个关键的子任务需要完成。第一个是提取更精细的尺度特征,例如被雾霾覆盖的物体的细节纹理。第二种方法是尽可能完整地保留较粗的尺度特征,例如物体的轮廓。第三个是将细尺度特征和粗尺度特征融合在一起。针对这三点,我们提出了一种基于类似于U -Net的编码-解码结构的单幅图像去雾网络——re - attention Net。以提取细节纹理和提取轮廓为目标,设计了re - attention Net的编码器和解码器。我们通过不同深度的残差块(RBs)和下采样构造了re - attention Net的编码器,用于执行前两个子任务,即从原始模糊图像中提取多尺度图像特征。re - attention的解码器基于注意门(AGs)和上采样。解码器可以从编码器的输出中检索粗尺度特征,也可以将它们与编码器的多尺度特征融合在一起。也就是说,解码器是用来执行最后两个子任务的。实验结果表明,所提出的re - attention Net比目前几种方法的性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Res-Attention Net: An Image Dehazing Network
In the image dehazing task, there are three key subtasks need to be performed. The first one is extracting the finer scale features, e.g. the detail textures of objects, covered by haze. The second one is retaining the coarser scale features, e.g. the contours of objects, as complete as possible. And third one is fusing the finer scale features and the coarser scale features together. Aiming at the three points, we propose a single image dehazing network named Res-Attention Net based on the encoding-decoding structure similar to U -Net. The encoder and decoder of Res-Attention Net are designed for the objective that extracting the detail textures and retrieving the contours at the same time. We construct the encoder of the Res-Attention Net by the residual blocks (RBs) with different depths and downsampling for performing the first two subtasks, i.e. extracting the multiscale image features from the original hazy image. The decoder of the Res-Attention is based on the attention gates (AGs) and upsampling. The decoder can retrieve the coarser scale features from the output of the encoder and can also fuse them with the multiscale features from the encoder together. That is to say, the decoder is for performing the last two subtasks. The experimental results show that the Res-Attention Net proposed performs better than several state-of-the-art methods.
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