Temporal Relational Reasoning in Videos
Author(s)
Zhou, Bolei; Andonian, Alexander Joseph; Oliva, Aude; Torralba, Antonio
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Temporal relational reasoning, the ability to link meaningful transformations of objects or entities over time, is a fundamental property of intelligent species. In this paper, we introduce an effective and interpretable network module, the Temporal Relation Network (TRN), designed to learn and reason about temporal dependencies between video frames at multiple time scales. We evaluate TRN-equipped networks on activity recognition tasks using three recent video datasets - Something-Something, Jester, and Charades - which fundamentally depend on temporal relational reasoning. Our results demonstrate that the proposed TRN gives convolutional neural networks a remarkable capacity to discover temporal relations in videos. Through only sparsely sampled video frames, TRN-equipped networks can accurately predict human-object interactions in the Something-Something dataset and identify various human gestures on the Jester dataset with very competitive performance. TRN-equipped networks also outperform two-stream networks and 3D convolution networks in recognizing daily activities in the Charades dataset. Further analyses show that the models learn intuitive and interpretable visual common sense knowledge in videos (Code and models are available at http://relation.csail.mit.edu/.).
Date issued
2018-10Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence Laboratory; Massachusetts Institute of Technology. Department of Electrical Engineering and Computer ScienceJournal
Computer Vision - EECV 2018
Publisher
Springer International Publishing
Citation
Zhou, Bolei, et al. "Temporal Relational Reasoning in Videos." European Conference on Computer Vision, 2018, Munich, Germany
Version: Author's final manuscript
ISBN
9783030012458
9783030012465
ISSN
0302-9743
1611-3349