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V4D:4D Convolutional Neural Networks for Video-level Representation Learning

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Most existing 3D CNNs for video representation learning are clip-based methods, and thus do not consider video-level temporal evolution of spatio-temporal features. In this paper, we propose Video-level 4D Convolutional Neural Networks, referred as V4D, to model the evolution of long-range spatio-temporal representation with 4D convolutions, and at the same time, to preserve strong 3D spatio-temporal representation with residual connections. Specifically, we design a new 4D residual block able to capture inter-clip interactions, which could enhance the representation power of the original clip-level 3D CNNs. The 4D residual blocks can be easily integrated into the existing 3D CNNs to perform long-range modeling hierarchically. We further introduce the training and inference methods for the proposed V4D. Extensive experiments are conducted on three video recognition benchmarks, where V4D achieves excellent results, surpassing recent 3D CNNs by a large margin.

Shiwen Zhang, Sheng Guo, Weilin Huang, Matthew R. Scott, Limin Wang• 2020

Related benchmarks

TaskDatasetResultRank
Action RecognitionSomething-something v1 (val)
Top-1 Acc50.4
257
Action RecognitionSomething-Something V1
Top-1 Acc50.4
162
Video RecognitionKinetics-400 1.0 (val)
Top-1 Acc77.4
43
Snitch localizationCATER (test)
Top-1 Accuracy47.2
38
Action RecognitionActivityNet v1.3
mAP88.9
31
Video RecognitionSomething-Something V1
Accuracy50.4
27
Video ClassificationMini-Kinetics-200 (val)
Top-1 Acc80.7
11
Human Activity RecognitionDUET cross-location
Accuracy8.26
6
Human Activity RecognitionDUET (cross-subject)
Accuracy7.79
6
Untrimmed Video RecognitionActivityNet v1.3 (val)
mAP88.9
5
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