Dropout is designed to relieve the overfitting problem in high-level vision tasks but is rarely applied in low-level vision tasks, like image super-resolution (SR). As a classic regression problem, SR exhibits a different behaviour as high-level tasks and is sensitive to the dropout operation. However, in this paper, we show that appropriate usage of dropout benefits SR networks and improves the generalization ability. Specifically, dropout is better embedded at the end of the network and is significantly helpful for the multi-degradation settings. This discovery breaks our common sense and inspires us to explore its working mechanism. We further use two analysis tools -- one is from recent network interpretation works, and the other is specially designed for this task. The analysis results provide side proofs to our experimental findings and show us a new perspective to understand SR networks.
翻译:辍学的目的是为了缓解高层次愿景任务中的过度适应问题,但很少应用于低层次愿景任务,如图像超分辨率(SR)等。作为一个典型的回归问题,斯洛伐克共和国表现出了不同的行为,作为高级别任务,对辍学行动敏感。然而,我们在本文件中表明,适当使用辍学对SR网络有好处,提高了普及能力。具体地说,辍学在网络的终端中更能嵌入网络,对多降解环境有很大帮助。这一发现打破了我们的常识,激励我们探索其工作机制。我们进一步使用两种分析工具 -- -- 一种来自最近的网络解释工作,另一种是专门为这项任务设计的。分析结果为我们实验发现提供了侧面证据,向我们展示了理解SR网络的新视角。