The optics of any camera degrades the sharpness of photographs, which is a key visual quality criterion. This degradation is characterized by the point-spread function (PSF), which depends on the wavelengths of light and is variable across the imaging field. In this paper, we propose a two-step scheme to correct optical aberrations in a single raw or JPEG image, i.e., without any prior information on the camera or lens. First, we estimate local Gaussian blur kernels for overlapping patches and sharpen them with a non-blind deblurring technique. Based on the measurements of the PSFs of dozens of lenses, these blur kernels are modeled as RGB Gaussians defined by seven parameters. Second, we remove the remaining lateral chromatic aberrations (not contemplated in the first step) with a convolutional neural network, trained to minimize the red/green and blue/green residual images. Experiments on both synthetic and real images show that the combination of these two stages yields a fast state-of-the-art blind optical aberration compensation technique that competes with commercial non-blind algorithms.
翻译:任何相机的光学都会降低照片的锐度,这是一个关键的视觉质量标准。这种退化的特征是点光功能(PSF),它取决于光的波长,在成像场各异。在本文中,我们提出一个两步方案,以纠正单一原始图像或JPEG图像中的光异常,即没有事先在照相机或镜头上提供任何信息。首先,我们估算当地高斯模糊的相重叠的隔热层,并用非盲目分解技术来磨炼。根据对几十个镜头的PSF的测量,这些模糊的内核以RGB高斯仪为模型,由七个参数定义。第二,我们用一个革命性神经网络去除剩余的横向色异常(在第一步中未考虑),经过培训以尽量减少红/绿色和蓝色/绿色残余图像。合成和真实图像的实验表明,这两个阶段的结合产生了一种快速状态的光学光谱反射法,与非商业性神经算法相竞争。