Abstract

Despite the steady progress in video analysis led by the adoption of convolutional neural networks (CNNs), the relative improvement has been less drastic as that in 2D static image classification. Three main challenges exist including spatial (image) feature representation, temporal information representation, and model/computation complexity. It was recently shown by Carreira and Zisserman that 3D CNNs, inflated from 2D networks and pretrained on ImageNet, could be a promising way for spatial and temporal representation learning. However, as for model/computation complexity, 3D CNNs are much more expensive than 2D CNNs and prone to overfit. We seek a balance between speed and accuracy by building an effective and efficient video classification system through systematic exploration of critical network design choices. In particular, we show that it is possible to replace many of the 3D convolutions by low-cost 2D convolutions. Rather surprisingly, best result (in both speed and accuracy) is achieved when replacing the 3D convolutions at the bottom of the network, suggesting that temporal representation learning on high-level “semantic” features is more useful. Our conclusion generalizes to datasets with very different properties. When combined with several other cost-effective designs including separable spatial/temporal convolution and feature gating, our system results in an effective video classification system that that produces very competitive results on several action classification benchmarks (Kinetics, Something-something, UCF101 and HMDB), as well as two action detection (localization) benchmarks (JHMDB and UCF101-24).

Keywords

Computer scienceOverfittingRepresentation (politics)Artificial intelligenceConvolutional neural networkFeature (linguistics)Convolution (computer science)Pattern recognition (psychology)Contextual image classificationComputationFeature learningSpeedupMachine learningImage (mathematics)Artificial neural networkAlgorithm

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Publication Info

Year
2018
Type
book-chapter
Pages
318-335
Citations
1431
Access
Closed

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1431
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209
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Cite This

Saining Xie, Chen Sun, Jonathan Huang et al. (2018). Rethinking Spatiotemporal Feature Learning: Speed-Accuracy Trade-offs in Video Classification. Lecture notes in computer science , 318-335. https://doi.org/10.1007/978-3-030-01267-0_19

Identifiers

DOI
10.1007/978-3-030-01267-0_19
PMID
41306523
PMCID
PMC12645823
arXiv
1712.04851

Data Quality

Data completeness: 79%