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Underexposed Image Enhancement via Unsupervised Feature Attention Network

机译:曝光过度的图像通过无监督的特征注意网络增强

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In order to solve the problem that deep learning method needs a lot of paired data sets in image enhancement, this paper proposes unsupervised feature attention network (UFANet), which uses a new illumination estimation that combines pixel estimation and channel estimation to guide the network to decompose underexposed images. In addition, a feature attention residual network is trained to decompose under-exposed images into illumination and reflectance. Through a set of carefully designed non reference loss functions, which implicitly enhance the quality and drive the learning of the network, we train UFANet without any paired images. A large number of experiments on various benchmarks have proved the advantages of our method over the latest methods in terms of quality and quantity. Compared to the state-of-the-art methods, our method only needs to be trained on 350 underexposed images. All the above advantages make our UFANet attractive in practical applications.
机译:为了解决深度学习方法在图像增强中需要大量成对数据集的问题,本文提出了无监督的特征注意网络(UFANET),它使用结合像素估计和信道估计来引导网络的新照明估计来引导网络 分解曝光不足的图像。 此外,特征注意力剩余网络训练以将暴露的图像分解为照明和反射率。 通过一套精心设计的非参考损失功能,隐含地提高了质量并驱动了网络的学习,我们在没有任何配对图像的情况下训练Ufanet。 在各种基准上的大量实验证明了我们在质量和数量方面的最新方法的方法。 与最先进的方法相比,我们的方法只需要在350个曝光图像上培训。 所有上述优势使我们的UFANET在实际应用中具有吸引力。

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