Image-level corruptions and perturbations degrade the performance of CNNs on different downstream vision tasks. Social media filters are one of the most common resources of various corruptions and perturbations for real-world visual analysis applications. The negative effects of these distractive factors can be alleviated by recovering the original images with their pure style for the inference of the downstream vision tasks. Assuming these filters substantially inject a piece of additional style information to the social media images, we can formulate the problem of recovering the original versions as a reverse style transfer problem. We introduce Contrastive Instagram Filter Removal Network (CIFR), which enhances this idea for Instagram filter removal by employing a novel multi-layer patch-wise contrastive style learning mechanism. Experiments show our proposed strategy produces better qualitative and quantitative results than the previous studies. Moreover, we present the results of our additional experiments for proposed architecture within different settings. Finally, we present the inference outputs and quantitative comparison of filtered and recovered images on localization and segmentation tasks to encourage the main motivation for this problem.
翻译:社交媒体过滤器是各种腐败和扰动的最常见资源之一,可用于真实世界的视觉分析应用。这些转移性因素的消极影响可以通过恢复原始图像的纯风格来推断下游的视觉任务而得到缓解。假设这些过滤器大量向社交媒体图像注入了额外的风格信息,我们就可以将恢复原始版本的问题表述为反向风格传输问题。我们引入了对比式Instagram过滤清除网络(CIFR),通过使用新的多层补全式对比式学习机制来强化Instagram过滤器清除的理念。实验显示,我们的拟议战略产生了比以往研究更好的定性和定量结果。此外,我们介绍了在不同环境中对拟议结构进行的额外实验的结果。最后,我们介绍了关于本地化和分解任务的过滤和回收图像的推断产出和定量比较,以鼓励这一问题的主要动机。