Timezone: »

Deep Non-Blind Deconvolution via Generalized Low-Rank Approximation
Wenqi Ren · Jiawei Zhang · Lin Ma · Jinshan Pan · Xiaochun Cao · Wangmeng Zuo · Wei Liu · Ming-Hsuan Yang

Wed Dec 05 07:45 AM -- 09:45 AM (PST) @ Room 517 AB #116

In this paper, we present a deep convolutional neural network to capture the inherent properties of image degradation, which can handle different kernels and saturated pixels in a unified framework. The proposed neural network is motivated by the low-rank property of pseudo-inverse kernels. We first compute a generalized low-rank approximation for a large number of blur kernels, and then use separable filters to initialize the convolutional parameters in the network. Our analysis shows that the estimated decomposed matrices contain the most essential information of the input kernel, which ensures the proposed network to handle various blurs in a unified framework and generate high-quality deblurring results. Experimental results on benchmark datasets with noise and saturated pixels demonstrate that the proposed algorithm performs favorably against state-of-the-art methods.

Author Information

Wenqi Ren (Chinese Academy of Sciences)
Jiawei Zhang (Sensetime Research)
Lin Ma (Tencent AI Lab)
Jinshan Pan (Nanjing University of Science and Technology)
Xiaochun Cao (Chinese Academy of Sciences)
Wangmeng Zuo (Harbin Institute of Technology)
Wei Liu (Tencent AI Lab)
Ming-Hsuan Yang (UC Merced / Google)

More from the Same Authors