TY - GEN
T1 - Hardware-friendly Scalable Image Super Resolution with Progressive Structured Sparsity
AU - Ye, Fangchen
AU - Lin, Jin
AU - Huang, Hongzhan
AU - Fan, Jianping
AU - Xie, Yuan
AU - Qu, Yanyun
N1 - Publisher Copyright:
© 2023 ACM.
PY - 2023/10/27
Y1 - 2023/10/27
N2 - Single image super-resolution (SR) is an important low-level vision task, and the dynamic SR trading off performance and efficiency are increasingly in demand. The existing dynamic SR methods are divided into two classes: the structured pruning and non-structured compressing methods. The former removes redundant structures in the network, which often leads to significant performance degradation, and the latter searches for extremely sparse parameter masks, achieving promising performance, but they are not deployable in hardware platforms with irregular memory access. In order to solve the mentioned problems, we propose Hardware-friendly Scalable SR (HSSR) with progressively structured sparsity. The superiority of our method is that with only a single scalable model it covers multiple SR models with different sizes, without extra retraining or post-processing. HSSR contains the forward and backward processing. In the forward process, we gradually shrink the SR networks with structured iterative sparsity where grouping convolution together with knowledge distillation is conducted to reduce the amount of SR parameters and the computational complexity while keeping the performance, and in the backward process, we gradually expand the compressed SR networks with structured iterative recovery. Comprehensive experiments on benchmark datasets show that HSSR is perfectly compatible with common convolution baselines. Compared with the Slimmable method, our model is superior in performance, flops, and model size. Experimental results demonstrate that HSSR achieves significant compression, saving up to 1500K parameters and 100 GFlops calculation compared to the original model in real-world applications.
AB - Single image super-resolution (SR) is an important low-level vision task, and the dynamic SR trading off performance and efficiency are increasingly in demand. The existing dynamic SR methods are divided into two classes: the structured pruning and non-structured compressing methods. The former removes redundant structures in the network, which often leads to significant performance degradation, and the latter searches for extremely sparse parameter masks, achieving promising performance, but they are not deployable in hardware platforms with irregular memory access. In order to solve the mentioned problems, we propose Hardware-friendly Scalable SR (HSSR) with progressively structured sparsity. The superiority of our method is that with only a single scalable model it covers multiple SR models with different sizes, without extra retraining or post-processing. HSSR contains the forward and backward processing. In the forward process, we gradually shrink the SR networks with structured iterative sparsity where grouping convolution together with knowledge distillation is conducted to reduce the amount of SR parameters and the computational complexity while keeping the performance, and in the backward process, we gradually expand the compressed SR networks with structured iterative recovery. Comprehensive experiments on benchmark datasets show that HSSR is perfectly compatible with common convolution baselines. Compared with the Slimmable method, our model is superior in performance, flops, and model size. Experimental results demonstrate that HSSR achieves significant compression, saving up to 1500K parameters and 100 GFlops calculation compared to the original model in real-world applications.
KW - image super-resolution
KW - structured scalable networks
UR - https://www.scopus.com/pages/publications/85179549454
U2 - 10.1145/3581783.3611875
DO - 10.1145/3581783.3611875
M3 - 会议稿件
AN - SCOPUS:85179549454
T3 - MM 2023 - Proceedings of the 31st ACM International Conference on Multimedia
SP - 9061
EP - 9069
BT - MM 2023 - Proceedings of the 31st ACM International Conference on Multimedia
PB - Association for Computing Machinery, Inc
T2 - 31st ACM International Conference on Multimedia, MM 2023
Y2 - 29 October 2023 through 3 November 2023
ER -