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IMAGE DEBLURRING BASED ON LIGHTWEIGHT MULTI-INFORMATION FUSION NETWORK

Citation Author(s):
Yanni Zhang, Yiming Liu, Qiang Li, Miao Qi, Dahong Xu, Jun Kong, Jianzhong Wang
Submitted by:
yanni zhang
Last updated:
23 September 2021 - 8:26pm
Document Type:
Poster
Document Year:
2021
Event:
Presenters Name:
Yanni Zhang
Paper Code:
ICIP-1701

Abstract 

Abstract: 

Recently, deep learning based image deblurring has been well
developed. However, exploiting the detailed image features in a
deep learning framework always requires a mass of parameters,
which inevitably makes the network suffer from high computational
burden. To solve this problem, we propose a lightweight multi-
information fusion network (LMFN) for image deblurring. The
proposed LMFN is designed as an encoder-decoder architecture. In
the encoding stage, the image feature is reduced to various small-
scale spaces for multi-scale information extraction and fusion
without a large amount of information loss. Then, a distillation
network is used in the decoding stage, which allows the network
benefit the most from residual learning while remaining sufficiently
lightweight. Meanwhile, an information fusion strategy between
distillation modules and feature channels is also carried out by
attention mechanism. Through fusing different information in the
proposed approach, our network can achieve state-of-the-art image
deblurring result with smaller number of parameters and
outperforms existing methods in model complexity.

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Dataset Files

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