4.7 Article

Meta-Learning-Based Degradation Representation for Blind Super-Resolution

期刊

IEEE TRANSACTIONS ON IMAGE PROCESSING
卷 32, 期 -, 页码 3383-3396

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2023.3283922

关键词

Blind super-resolution; meta-learning; knowledge distillation; implicit degradation representation

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Blind Super Resolution (SR) aims to generate high-resolution (HR) images from low-resolution (LR) input images without knowledge of the degradations. The majority of blind SR methods introduce degradation estimators to help adjust to unknown degradation scenarios. However, it is impractical to provide concrete labels for all combinations of degradations, and specific designs hinder generalization. Therefore, an implicit degradation estimator is proposed to extract discriminative degradation representations without the supervision of ground-truth degradation. Extensive experiments demonstrate the superiority of the proposed Meta-Learning based Region Degradation Aware SR Network (MRDA) in various degradation settings.
Blind image super-resolution (blind SR) aims to generate high-resolution (HR) images from low-resolution (LR) input images with unknown degradations. To enhance the performance of SR, the majority of blind SR methods introduce an explicit degradation estimator, which helps the SR model adjust to unknown degradation scenarios. Unfortunately, it is impractical to provide concrete labels for the multiple combinations of degradations (e. g., blurring, noise, or JPEG compression) to guide the training of the degradation estimator. Moreover, the special designs for certain degradations hinder the models from being generalized for dealing with other degradations. Thus, it is imperative to devise an implicit degradation estimator that can extract discriminative degradation representations for all types of degradations without requiring the supervision of degradation ground-truth. 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 ground-truth 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 LR and 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. Furthermore, we introduce an RDAN module that is capable of discerning regional degradations, allowing IDR to adaptively influence various texture patterns. Extensive experiments under classic and real-world degradation settings show that MRDA achieves SOTA performance and can generalize to various degradation processes.

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