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Instagram Filter Removal on Fashionable Images

机译:Instagram过滤在时尚图像上删除

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摘要

Social media images are generally transformed by filtering to obtain aesthetically more pleasing appearances. However, CNNs generally fail to interpret both the image and its filtered version as the same in the visual analysis of social media images. We introduce Instagram Filter Removal Network (IFRNet) to mitigate the effects of image filters for social media analysis applications. To achieve this, we assume any filter applied to an image substantially injects a piece of additional style information to it, and we consider this problem as a reverse style transfer problem. The visual effects of filtering can be directly removed by adaptively normalizing external style information in each level of the encoder. Experiments demonstrate that IFRNet outperforms all compared methods in quantitative and qualitative comparisons, and has the ability to remove the visual effects to a great extent. Additionally, we present the filter classification performance of our proposed model, and analyze the dominant color estimation on the images unfiltered by all compared methods.
机译:社交媒体图像通常通过过滤转换以获得美学上更令人愉悦的外观。然而,CNN通常无法在社交媒体图像的视觉分析中解释图像和其过滤的版本。我们介绍Instagram过滤器拆卸网络(IFRNET),以减轻图像过滤器对社交媒体分析应用的影响。为此,我们假设应用于图像的任何过滤器基本上向其注入一块附加样式信息,并且我们将此问题视为反向样式传输问题。通过在编码器的每个级别的外部样式信息自适应地归一化外部样式信息,可以直接去除滤波的视觉效果。实验表明,IFRNET在定量和定性比较方面的所有比较方法都优于所有比较方法,并且能够在很大程度上消除视觉效果。此外,我们介绍了我们所提出的模型的过滤器分类性能,并分析了所有比较方法未过滤的图像上的显色估计。

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