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Human-Aware Motion Deblurring (ICCV2019)

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Human-Aware Motion Deblurring

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Ziyi Shen, Wenguan Wang, Xiankai Lu, Jianbin Shen, Haibin Ling, Tingfa Xu and Ling Shao

International Conference on Computer Vision (ICCV), 2019

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🔥🔥🔥HIDE Dataset

In this work, we propose a new blurry image dataset (HIDE) with respect to the dynamic deblurring problem. The multiple blurs caused by the relative movement between an imaging device and a scene, mainly include camera shaking and object movement. To fully capture the dynamic blurs caused by the passive device interference and initiative actions, our HIDE dataset is eleborately collected to cover both wide-range and close-range scenes and address human-aware motion deblurring.

We release the HIDE dataset with the blurry and sharp image pair, it could be downloaded from HIDE_dataset. The annotations of the HIDE dataset in terms of the depths(long-shot📡/close-up🔎) and quantity of human(scattered🚶/crowded👪) as well be provided. Please feel free to download.

HIDE Quantity of People
(Scattered /Crowded)
Depth of Object
(Long-shot/Close-ups)
Dataset Splits
(Training/Testing)
8422 4202/4220 1304/7118(HIDE I/ HIDE II) 6397/2025

The foreground human bounding box annotations will be provided for this human-aware delurrring task (Coming Soon).😊

image

Citation

@inproceedings{HAdeblur,
   author={Shen, Ziyi and Wang, Wenguan and Shen, Jianbing and Ling, Haibin and Xu, Tingfa and Shao, Ling}, 
   title={Human-Aware Motion Deblurring}, 
   booktitle={IEEE International Conference on Computer Vision},
   year={2019}
}
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