从照片中提取渐晕和颗粒过滤效果

A. Abdelhamed, Jonghwa Yim, Abhijith Punnappurath, Michael S. Brown, Jihwan Choe, Kihwan Kim
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引用次数: 0

摘要

大多数智能手机都支持使用实时相机滤镜,为拍摄的图像赋予视觉效果。目前,这样的过滤器是预装在设备上的,或者需要在使用前下载并安装(例如,Instagram过滤器)。最近的研究[24]提出了一种直接从已经应用了滤镜的示例照片中提取相机滤镜的方法。[24]中的工作只关注底层滤波器的颜色和色调方面。本文介绍了一种提取设备上相机滤波器常用的两种空间变化效果的方法,即图像渐晕和图像颗粒。具体来说,我们展示了如何提取示例图像中存在的渐晕和图像颗粒的参数,并将这些效果复制为设备上的滤波器。我们使用轻量级的cnn来估计滤波器参数,并使用有效的技术-各向同性高斯滤波器和单纯形噪声-来重新生成滤波器。我们的设计在效率和现实主义之间实现了合理的权衡。我们表明,与颜色和风格转移方法相比,我们的方法可以从风格化的照片中提取渐晕和图像颗粒过滤器,并在捕获的图像上更忠实地复制过滤器。我们的方法非常高效,已经在数百万部旗舰智能手机上得到了应用。
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Extracting Vignetting and Grain Filter Effects from Photos
Most smartphones support the use of real-time camera filters to impart visual effects to captured images. Currently, such filters come preinstalled on-device or need to be downloaded and installed before use (e.g., Instagram filters). Recent work [24] proposed a method to extract a camera filter directly from an example photo that has already had a filter applied. The work in [24] focused only on the color and tonal aspects of the underlying filter. In this paper, we introduce a method to extract two spatially varying effects commonly used by on-device camera filters—namely, image vignetting and image grain. Specifically, we show how to extract the parameters for vignetting and image grain present in an example image and replicate these effects as an on-device filter. We use lightweight CNNs to estimate the filter parameters and employ efficient techniques—isotropic Gaussian filters and simplex noise—for regenerating the filters. Our design achieves a reasonable trade-off between efficiency and realism. We show that our method can extract vignetting and image grain filters from stylized photos and replicate the filters on captured images more faithfully, as compared to color and style transfer methods. Our method is significantly efficient and has been already deployed to millions of flagship smartphones.
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