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Multi-Patch and Feature Fusion Network for Single Image Dehazing

机译:单幅图像脱水的多贴片和特征融合网络

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The dehazing method based on deep learning has made significant progress in the field of image dehazing, but most methods still have the problem of incomplete dehazing and color distortion. To solve this problem, an image dehazing network based on multi-patch and feature fusion is proposed. The network consists of preprocessing, feature extraction, feature fusion and post-processing modules. The preprocessing module can adaptively extract image feature information from the patch. The feature extraction module uses cascaded dense residual blocks to extract deep feature information. The feature fusion module performs channel weighting and pixel weighting on the feature map to achieve the fusion of main features. The post-processing module performs nonlinear mapping on the fused feature map to obtain a dehazing image. Experiments show that this network has achieved ideal dehazing effects on both synthetic and real-world images, and can avoid color distortion after dehazing.
机译:基于深度学习的脱落方法在图像脱落领域取得了重大进展,但大多数方法仍然存在不完全脱水和颜色变形的问题。 为了解决这个问题,提出了一种基于多贴片和特征融合的图像脱水网络。 该网络由预处理,特征提取,特征融合和后处理模块组成。 预处理模块可以自适应地从补丁中提取图像特征信息。 特征提取模块使用级联密集的残余块来提取深度特征信息。 特征融合模块对特征映射执行信道加权和像素加权,以实现主要功能的融合。 后处理模块对融合特征映射执行非线性映射,以获得脱水图像。 实验表明,该网络对合成和现实世界的形象达到了理想的脱水效果,并且可以避免在去吸附后的颜色变形。

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