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Top-1 Solution of Multi-Moments in Time Challenge 2019

2020-03-12 15:11:38
Manyuan Zhang, Hao Shao, Guanglu Song, Yu Liu, Junjie Yan

Abstract

In this technical report, we briefly introduce the solutions of our team 'Efficient' for the Multi-Moments in Time challenge in ICCV 2019. We first conduct several experiments with popular Image-Based action recognition methods TRN, TSN, and TSM. Then a novel temporal interlacing network is proposed towards fast and accurate recognition. Besides, the SlowFast network and its variants are explored. Finally, we ensemble all the above models and achieve 67.22\% on the validation set and 60.77\% on the test set, which ranks 1st on the final leaderboard. In addition, we release a new code repository for video understanding which unifies state-of-the-art 2D and 3D methods based on PyTorch. The solution of the challenge is also included in the repository, which is available at this https URL.

Abstract (translated)

URL

https://arxiv.org/abs/2003.05837

PDF

https://arxiv.org/pdf/2003.05837.pdf


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