We present a novel underwater image enhancement method termed SCNet to improve the image quality meanwhile cope with the degradation diversity caused by the water. SCNet is based on normalization schemes across both spatial and channel dimensions with the key idea of learning water type desensitized features. Specifically, we apply whitening to de-correlate activations across spatial dimensions for each instance in a mini-batch. We also eliminate channel-wise correlation by standardizing and re-injecting the first two moments of the activations across channels. The normalization schemes of spatial and channel dimensions are performed at each scale of the U-Net to obtain multi-scale representations. With such water type irrelevant encodings, the decoder can easily reconstruct the clean signal and be unaffected by the distortion types. Experimental results on two real-world underwater image datasets show that our approach can successfully enhance images with diverse water types, and achieves competitive performance in visual quality improvement.
翻译:我们提出了一个名为SCNet的新型水下图像增强方法,以提高图像质量,同时应对水造成的退化多样性。 SCNet基于空间和频道层面的正常化计划,主要理念是学习水型不敏化特征。 具体地说,我们用白色来在微型批量中对每个空间层面进行脱碳启动。 我们还通过在跨渠道启动的前两个时刻进行标准化和再注入来消除频道间的相关性。 空间和频道层面的正常化计划是在U-Net的每个尺度上进行,以获得多尺度的演示。 有了这种与水型无关的编码,解码器可以很容易地重建干净的信号,不受扭曲类型的影响。 两个真实世界水下图像数据集的实验结果表明,我们的方法可以成功地用多种水类型增强图像,并在视觉质量改进方面实现竞争性的性能。