aligned structured sparsity learning
Aligned Structured Sparsity Learning for Efficient Image Super-Resolution
Lightweight image super-resolution (SR) networks have obtained promising results with moderate model size. Many SR methods have focused on designing lightweight architectures, which neglect to further reduce the redundancy of network parameters. On the other hand, model compression techniques, like neural architecture search and knowledge distillation, typically consume considerable memory and computation resources. In contrast, network pruning is a cheap and effective model compression technique. However, it is hard to be applied to SR networks directly, because filter pruning for residual blocks is well-known tricky.
Supplementary Material: Aligned Structured Sparsity Learning for Efficient Image Super-Resolution
Our proposed aligned structured sparsity learning (ASSL) algorithm is summarized in Algorithm 1. There are in total 16 residual blocks in EDSR_baseline. We provide more visual comparisons in Figure 1. In contrast, our ASSLN can better recover more structural details. While, our ASSLN can better alleviate the blurring artifacts.
Aligned Structured Sparsity Learning for Efficient Image Super-Resolution
Lightweight image super-resolution (SR) networks have obtained promising results with moderate model size. Many SR methods have focused on designing lightweight architectures, which neglect to further reduce the redundancy of network parameters. On the other hand, model compression techniques, like neural architecture search and knowledge distillation, typically consume considerable memory and computation resources. In contrast, network pruning is a cheap and effective model compression technique. However, it is hard to be applied to SR networks directly, because filter pruning for residual blocks is well-known tricky.