论文标题
里拉:来自未知混合失真的终身图像恢复
LIRA: Lifelong Image Restoration from Unknown Blended Distortions
论文作者
论文摘要
大多数现有的图像恢复网络都是以一次性的方式设计的,在接受新的失真删除任务训练时,灾难性地忘记了以前学习的扭曲。为了减轻这个问题,我们提出了混合扭曲的新型终身图像恢复问题。我们首先设计了一个基本的叉-Join模型,其中多种预训练的专家模型,专门从事单个失真删除任务工作,并自适应地处理混合失真。当输入受到人类记忆系统中成人神经发生的启发的新变形降解时,我们制定了一种神经增长策略,以前训练的模型可以合并一个新的专家分支,并不断积累新知识而不会干扰学习知识。实验结果表明,所提出的方法不仅可以在PSNR/SSIM指标中的混合扭曲删除任务上实现最新性能,而且还可以在学习新的恢复任务时保持旧专业知识。
Most existing image restoration networks are designed in a disposable way and catastrophically forget previously learned distortions when trained on a new distortion removal task. To alleviate this problem, we raise the novel lifelong image restoration problem for blended distortions. We first design a base fork-join model in which multiple pre-trained expert models specializing in individual distortion removal task work cooperatively and adaptively to handle blended distortions. When the input is degraded by a new distortion, inspired by adult neurogenesis in human memory system, we develop a neural growing strategy where the previously trained model can incorporate a new expert branch and continually accumulate new knowledge without interfering with learned knowledge. Experimental results show that the proposed approach can not only achieve state-of-the-art performance on blended distortions removal tasks in both PSNR/SSIM metrics, but also maintain old expertise while learning new restoration tasks.