基于全局光照估计的欠曝光图像增强网络

Yuan Fang, Wenzhe Zhu, Qing Zhu
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引用次数: 1

摘要

本文提出了一种新的神经网络增强欠曝光图像。采用平滑扩展卷积来估计输入图像的全局光照,实现了端到端的学习网络模型,取代了基于Retinex理论的分解方法。在此模型的基础上,我们建立了一个综合了内容、颜色、纹理和平滑损失的多项损失函数。大量的实验表明,该方法在欠曝光图像增强方面优于其他方法。它可以覆盖更多的色彩细节,并适用于各种曝光不足的图像。
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UGNet: Underexposed Images Enhancement Network based on Global Illumination Estimation
This paper proposes a new neural network for enhancing underexposed images. Instead of the decomposition method based on Retinex theory, we introduce smooth dilated convolution to estimate global illumination of the input image, and implement an end-to-end learning network model. Based on this model, we formulate a multi-term loss function that combines content, color, texture and smoothness losses. Our extensive experiments demonstrate that this method is superior to other methods in underexposed image enhancement. It can cover more color details and be applied to various underexposed images robustly.
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