Actor-Action Video Classification CSC 249/449 Spring 2020 Challenge
Report
- URL: http://arxiv.org/abs/2008.00141v2
- Date: Tue, 18 Aug 2020 16:19:49 GMT
- Title: Actor-Action Video Classification CSC 249/449 Spring 2020 Challenge
Report
- Authors: Jing Shi, Zhiheng Li, Haitian Zheng, Yihang Xu, Tianyou Xiao, Weitao
Tan, Xiaoning Guo, Sizhe Li, Bin Yang, Zhexin Xu, Ruitao Lin, Zhongkai
Shangguan, Yue Zhao, Jingwen Wang, Rohan Sharma, Surya Iyer, Ajinkya
Deshmukh, Raunak Mahalik, Srishti Singh, Jayant G Rohra, Yipeng Zhang, Tongyu
Yang, Xuan Wen, Ethan Fahnestock, Bryce Ikeda, Ian Lawson, Alan Finkelstein,
Kehao Guo, Richard Magnotti, Andrew Sexton, Jeet Ketan Thaker, Yiyang Su,
Chenliang Xu
- Abstract summary: This report summarizes submissions and compiles from Actor-Action video classification challenge held as a final project in CSC 249/449 Machine Vision course (Spring 2020) at University of Rochester.
- Score: 35.68691609842939
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This technical report summarizes submissions and compiles from Actor-Action
video classification challenge held as a final project in CSC 249/449 Machine
Vision course (Spring 2020) at University of Rochester
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