In recent years, a ton of research has been conducted on real image denoising tasks. However, the efforts are more focused on improving real image denoising through creating a better network architecture. We explore a different direction where we propose to improve real image denoising performance through a better learning strategy that can enable test-time adaptation on the multi-task network. The learning strategy is two stages where the first stage pre-train the network using meta-auxiliary learning to get better meta-initialization. Meanwhile, we use meta-learning for fine-tuning (meta-transfer learning) the network as the second stage of our training to enable test-time adaptation on real noisy images. To exploit a better learning strategy, we also propose a network architecture with self-supervised masked reconstruction loss. Experiments on a real noisy dataset show the contribution of the proposed method and show that the proposed method can outperform other SOTA methods.
翻译:近些年来,对真实的图像脱色任务进行了一吨的研究。然而,我们的努力更侧重于通过创建更好的网络架构来改善真实的图像脱色。我们探索了一个不同的方向,即我们提议通过更好的学习战略来改善真实的图像脱色性能,这样可以使多任务网络能够进行测试-时间适应。学习战略是两个阶段,第一阶段是利用元子辅助学习对网络进行预培训,以获得更好的元子初始化。与此同时,我们将元学习作为我们培训的第二阶段,以微调(元数据转移学习)网络,以便能够对真正吵闹的图像进行测试-时间适应。为了利用更好的学习战略,我们还提出了一个带有自我监督的蒙面重建损失的网络结构。关于真正吵闹的数据集的实验显示了拟议方法的贡献,并表明拟议的方法能够超越其他SOTA方法。