论文标题
深度光图像增强的深度双侧视网膜
Deep Bilateral Retinex for Low-Light Image Enhancement
论文作者
论文摘要
弱光图像,即在低光条件下捕获的图像,其可见性很差,这是由于低对比度,颜色失真和明显的测量噪声所致。低光图像增强涉及改善低光图像的可见性。由于低光图像中的测量噪声通常具有显着而复杂的具有空间变化的特征,因此如何有效地处理噪声是低光图像增强的重要问题。基于自然图像的视网膜分解,本文提出了一种深度学习方法,以提高低光图像的增强,以特定的重点是处理测量噪声。基本思想是训练一个神经网络,以生成一组像素的操作员,以同时预测噪声和照明层,在双边空间中定义了操作员。这种综合方法使我们能够在存在明显的空间变化测量噪声的情况下对反射层进行准确的预测。在几个基准数据集上进行的广泛实验表明,该方法对最先进的方法非常有竞争力,并且在处理在极低的照明条件下捕获的图像时,比其他方法具有显着优势。
Low-light images, i.e. the images captured in low-light conditions, suffer from very poor visibility caused by low contrast, color distortion and significant measurement noise. Low-light image enhancement is about improving the visibility of low-light images. As the measurement noise in low-light images is usually significant yet complex with spatially-varying characteristic, how to handle the noise effectively is an important yet challenging problem in low-light image enhancement. Based on the Retinex decomposition of natural images, this paper proposes a deep learning method for low-light image enhancement with a particular focus on handling the measurement noise. The basic idea is to train a neural network to generate a set of pixel-wise operators for simultaneously predicting the noise and the illumination layer, where the operators are defined in the bilateral space. Such an integrated approach allows us to have an accurate prediction of the reflectance layer in the presence of significant spatially-varying measurement noise. Extensive experiments on several benchmark datasets have shown that the proposed method is very competitive to the state-of-the-art methods, and has significant advantage over others when processing images captured in extremely low lighting conditions.