The most of CNN based super-resolution (SR) methods assume that the degradation is known (\eg, bicubic). These methods will suffer a severe performance drop when the degradation is different from their assumption. Therefore, some approaches attempt to train SR networks with the complex combination of multiple degradations to cover the real degradation space. To adapt to multiple unknown degradations, introducing an explicit degradation estimator can actually facilitate SR performance. However, previous explicit degradation estimation methods usually predict Gaussian blur with the supervision of groundtruth blur kernels, and estimation errors may lead to SR failure. Thus, it is necessary to design a method that can extract implicit discriminative degradation representation. To this end, we propose a Meta-Learning based Region Degradation Aware SR Network (MRDA), including Meta-Learning Network (MLN), Degradation Extraction Network (DEN), and Region Degradation Aware SR Network (RDAN). To handle the lack of groundtruth degradation, we use the MLN to rapidly adapt to the specific complex degradation after several iterations and extract implicit degradation information. Subsequently, a teacher network MRDA$_{T}$ is designed to further utilize the degradation information extracted by MLN for SR. However, MLN requires iterating on paired low-resolution (LR) and corresponding high-resolution (HR) images, which is unavailable in the inference phase. Therefore, we adopt knowledge distillation (KD) to make the student network learn to directly extract the same implicit degradation representation (IDR) as the teacher from LR images.
翻译:以CNN为基础的大多数超分辨率(SR)方法假定,降解是已知的(ge,双立方)方法。当降解与假设不同时,这些方法的性能会严重下降。因此,有些方法试图用多种降解的复杂组合对SR网络进行培训,以涵盖真正的降解空间。为了适应多种未知的降解,引入明确的降解估计仪实际上可以促进SR的性能。然而,以前的清晰的降解估计方法通常预测Gausian与地心模糊内核的监管模糊不清,而估计错误可能导致SR失败。因此,有必要设计一种方法,可以提取隐含的歧视性降解代表。为此,我们提议建立一个基于Met-LEAR的基于区域退化意识SR网络(MD),包括M-LN、退化估计网络(DER)和区域退化意识网络(REDR),我们使用MN快速适应具体的复杂退化,然后提取隐含性降解信息。随后,我们用MDAN的教学网络(MLQR)直接提取高分辨率。