Two-Step Image Dehazing with Intra-domain and Inter-domain Adaption
- URL: http://arxiv.org/abs/2102.03501v1
- Date: Sat, 6 Feb 2021 04:02:14 GMT
- Title: Two-Step Image Dehazing with Intra-domain and Inter-domain Adaption
- Authors: Xin Yi, Bo Ma, Yulin Zhang, Longyao Liu, JiaHao Wu
- Abstract summary: We propose a novel Two-Step Dehazing Network (TSDN) to minimize the intra-domain gap and the inter-domain gap.
Our framework performs favorably against the state-of-the-art algorithms both on the synthetic datasets and the real datasets.
- Score: 9.13515529835267
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recently, image dehazing task has achieved remarkable progress by
convolutional neural network. However, those approaches mostly treat haze
removal as a one-to-one problem and ignore the intra-domain gap. Therefore,
haze distribution shift of the same scene images is not handled well. Also,
dehazing models trained on the labeled synthetic datasets mostly suffer from
performance degradation when tested on the unlabeled real datasets due to the
inter-domain gap. Although some previous works apply translation network to
bridge the synthetic domain and the real domain, the intra-domain gap still
exists and affects the inter-domain adaption. In this work, we propose a novel
Two-Step Dehazing Network (TSDN) to minimize the intra-domain gap and the
inter-domain gap. First, we propose a multi-to-one dehazing network to
eliminate the haze distribution shift of images within the synthetic domain.
Then, we conduct an inter-domain adaption between the synthetic domain and the
real domain based on the aligned synthetic features. Extensive experimental
results demonstrate that our framework performs favorably against the
state-of-the-art algorithms both on the synthetic datasets and the real
datasets.
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