VisDrone-CC2020: The Vision Meets Drone Crowd Counting Challenge Results
- URL: http://arxiv.org/abs/2107.08766v1
- Date: Mon, 19 Jul 2021 11:48:29 GMT
- Title: VisDrone-CC2020: The Vision Meets Drone Crowd Counting Challenge Results
- Authors: Dawei Du, Longyin Wen, Pengfei Zhu, Heng Fan, Qinghua Hu, Haibin Ling,
Mubarak Shah, Junwen Pan, Ali Al-Ali, Amr Mohamed, Bakour Imene, Bin Dong,
Binyu Zhang, Bouchali Hadia Nesma, Chenfeng Xu, Chenzhen Duan, Ciro
Castiello, Corrado Mencar, Dingkang Liang, Florian Kr\"uger, Gennaro Vessio,
Giovanna Castellano, Jieru Wang, Junyu Gao, Khalid Abualsaud, Laihui Ding,
Lei Zhao, Marco Cianciotta, Muhammad Saqib, Noor Almaadeed, Omar Elharrouss,
Pei Lyu, Qi Wang, Shidong Liu, Shuang Qiu, Siyang Pan, Somaya Al-Maadeed,
Sultan Daud Khan, Tamer Khattab, Tao Han, Thomas Golda, Wei Xu, Xiang Bai,
Xiaoqing Xu, Xuelong Li, Yanyun Zhao, Ye Tian, Yingnan Lin, Yongchao Xu,
Yuehan Yao, Zhenyu Xu, Zhijian Zhao, Zhipeng Luo, Zhiwei Wei, Zhiyuan Zhao
- Abstract summary: We collect a large-scale dataset and organize the Vision Meets Drone Crowd Counting Challenge (VisDrone-CC 2020)
The collected dataset is formed by $3,360$ images, including $2,460$ images for training, and $900$ images for testing.
We provide a detailed analysis of the evaluation results and conclude the challenge.
- Score: 186.53282837739548
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Crowd counting on the drone platform is an interesting topic in computer
vision, which brings new challenges such as small object inference, background
clutter and wide viewpoint. However, there are few algorithms focusing on crowd
counting on the drone-captured data due to the lack of comprehensive datasets.
To this end, we collect a large-scale dataset and organize the Vision Meets
Drone Crowd Counting Challenge (VisDrone-CC2020) in conjunction with the 16th
European Conference on Computer Vision (ECCV 2020) to promote the developments
in the related fields. The collected dataset is formed by $3,360$ images,
including $2,460$ images for training, and $900$ images for testing.
Specifically, we manually annotate persons with points in each video frame.
There are $14$ algorithms from $15$ institutes submitted to the VisDrone-CC2020
Challenge. We provide a detailed analysis of the evaluation results and
conclude the challenge. More information can be found at the website:
\url{http://www.aiskyeye.com/}.
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