Image restoration is a long-standing low-level vision problem, e.g., deblurring and deraining. In the process of image restoration, it is necessary to consider not only the spatial details and contextual information of restoration to ensure the quality, but also the system complexity. Although many methods have been able to guarantee the quality of image restoration, the system complexity of the state-of-the-art (SOTA) methods is increasing as well. Motivated by this, we present a mixed hierarchy network that can balance these competing goals. Our main proposal is a mixed hierarchy architecture, that progressively recovers contextual information and spatial details from degraded images while we design intra-blocks to reduce system complexity. Specifically, our model first learns the contextual information using encoder-decoder architectures, and then combines them with high-resolution branches that preserve spatial detail. In order to reduce the system complexity of this architecture for convenient analysis and comparison, we replace or remove the nonlinear activation function with multiplication and use a simple network structure. In addition, we replace spatial convolution with global self-attention for the middle block of encoder-decoder. The resulting tightly interlinked hierarchy architecture, named as MHNet, delivers strong performance gains on several image restoration tasks, including image deraining, and deblurring.
翻译:图像恢复是一个长期存在的低水平图像问题,例如,变形和脱线。在图像恢复过程中,不仅有必要考虑恢复的空间细节和背景信息,以确保质量,而且有必要考虑系统复杂性。虽然许多方法都能够保证图像恢复的质量,但最先进(SOTA)方法的系统复杂性也在增加。受此驱动,我们呈现了一个能够平衡这些相互竞争的目标的混合等级网络。我们的主要提议是一个混合的等级结构,它从退化图像中逐步恢复背景信息和空间细节,同时我们设计内部块以降低系统复杂性。具体地说,我们的模型首先利用编码-解码结构学习背景信息,然后将其与保存空间细节的高分辨率分支结合起来。为了降低这一结构的系统复杂性,以便进行方便的分析与比较,我们用一个简单的网络结构来取代或取消非线性激活功能。此外,我们用一个混合结构来取代空间变异,以全球自留,而我们设计了内部结构来降低系统复杂性。具体地,我们的模型首先使用编码-解码结构来学习背景信息,然后将这些背景信息与高分辨率分解图像结构。