Deep Stacked Hierarchical Multi-Patch Network for Image Deblurring
Data61 · Australian Centre for Robotic Vision · +3 more institutions
Abstract
Despite deep end-to-end learning methods have shown their superiority in removing non-uniform motion blur, there still exist major challenges with the current multi-scale and scale-recurrent models: 1) Deconvolution/upsampling operations in the coarse-to-fine scheme result in expensive runtime; 2) Simply increasing the model depth with finer-scale levels cannot improve the quality of deblurring. To tackle the above problems, we present a deep {hierarchical multi-patch network} inspired by Spatial Pyramid Matching to deal with blurry images via a fine-to-coarse hierarchical representation. To deal with the performance saturation w.r.t. depth, we propose a stacked version of our multi-patch model. Our proposed…
Citation impact
- FWCI
- 27.86
- Percentile
- 100%
- References
- 36
Authors
4- HZHongguang ZhangCorresponding
Data61, Australian Centre for Robotic Vision, Commonwealth Scientific and Industrial Research Organisation, Australian National University
- YDYuchao Dai
Northwestern Polytechnical University
- HLHongdong Li
Australian National University, Australian Centre for Robotic Vision
- PKPiotr Koniusz
Commonwealth Scientific and Industrial Research Organisation, Data61, Australian National University
Topics & keywords
- Deblurring
- Computer science
- Upsampling
- Artificial intelligence
- Deep learning
- Deconvolution
- Computer vision
- Scale (ratio)