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Video Modeling with Correlation Networks

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Motion is a salient cue to recognize actions in video. Modern action recognition models leverage motion information either explicitly by using optical flow as input or implicitly by means of 3D convolutional filters that simultaneously capture appearance and motion information. This paper proposes an alternative approach based on a learnable correlation operator that can be used to establish frame-toframe matches over convolutional feature maps in the different layers of the network. The proposed architecture enables the fusion of this explicit temporal matching information with traditional appearance cues captured by 2D convolution. Our correlation network compares favorably with widely-used 3D CNNs for video modeling, and achieves competitive results over the prominent two-stream network while being much faster to train. We empirically demonstrate that correlation networks produce strong results on a variety of video datasets, and outperform the state of the art on four popular benchmarks for action recognition: Kinetics, Something-Something, Diving48 and Sports1M.

Heng Wang, Du Tran, Lorenzo Torresani, Matt Feiszli• 2019

Related benchmarks

TaskDatasetResultRank
Action RecognitionKinetics-400
Top-1 Acc81
413
Action RecognitionSomething-something v1 (val)
Top-1 Acc53.3
257
Action RecognitionKinetics 400 (test)
Top-1 Accuracy79.2
245
Video ClassificationKinetics 400 (val)
Top-1 Acc81
204
Action RecognitionSomething-something v1 (test)
Top-1 Accuracy53.3
189
Action RecognitionSomething-Something V1
Top-1 Acc53.3
162
Action RecognitionKinetics-400 full (val)
Top-1 Acc79.2
136
Video ClassificationKinetics-400
Top-1 Acc79.2
131
Video ClassificationSomething-something v1 (test)
Top-1 Accuracy53.3
115
Action RecognitionDiving-48
Top-1 Acc38.6
82
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