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Automatic image enhancement by learning adaptive patch selection

机译:通过学习自动图像增强通过学习自适应补丁选择

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摘要

Today, digital cameras are widely used in taking photos. However, some photos lack detail and need enhancement. Many existing image enhancement algorithms are patch based and the patch size is always fixed throughout the image. Users must tune the patch size to obtain the appropriate enhancement. In this study, we propose an automatic image enhancement method based on adaptive patch selection using both dark and bright channels. The double channels enhance images with various exposure problems. The patch size used for channel extraction is selected automatically by thresholding a contrast feature, which is learned systematically from a set of natural images crawled from the web. Our proposed method can automatically enhance foggy or under-exposed/backlit images without any user interaction. Experimental results demonstrate that our method can provide a significant improvement in existing patch-based image enhancement algorithms.
机译:如今,数码相机广泛用于拍照。 但是,有些照片缺乏细节和需要增强。 许多现有的图像增强算法是基于补丁的,并且始终固定图像大小。 用户必须调整修补程序大小以获取适当的增强功能。 在本研究中,我们提出了一种基于暗和明亮通道的自适应贴片选择的自动图像增强方法。 双通道增强了各种曝光问题的图像。 通过阈值触摸对比度来自动选择用于通道提取的补丁尺寸,该对比度是从从网络爬行的一组自然图像系统地学习的。 我们所提出的方法可以自动增强有雾或未暴露/背光的图像,而无需任何用户交互。 实验结果表明,我们的方法可以提供现有的基于补丁图像增强算法的显着改进。

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