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Dance with Flow: Two-in-One Stream Action Detection

2019-04-01CVPR 2019Code Available0· sign in to hype

Jiaojiao Zhao, Cees G. M. Snoek

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Abstract

The goal of this paper is to detect the spatio-temporal extent of an action. The two-stream detection network based on RGB and flow provides state-of-the-art accuracy at the expense of a large model-size and heavy computation. We propose to embed RGB and optical-flow into a single two-in-one stream network with new layers. A motion condition layer extracts motion information from flow images, which is leveraged by the motion modulation layer to generate transformation parameters for modulating the low-level RGB features. The method is easily embedded in existing appearance- or two-stream action detection networks, and trained end-to-end. Experiments demonstrate that leveraging the motion condition to modulate RGB features improves detection accuracy. With only half the computation and parameters of the state-of-the-art two-stream methods, our two-in-one stream still achieves impressive results on UCF101-24, UCFSports and J-HMDB.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
J-HMDBTwo-in-one Two StreamVideo-mAP 0.574.74Unverified
J-HMDBTwo-in-oneVideo-mAP 0.557.96Unverified
UCF101-24Two-in-oneVideo-mAP 0.275.48Unverified
UCF101-24Two-in-one Two StreamVideo-mAP 0.278.48Unverified
UCF SportsTwo-in-oneVideo-mAP 0.592.74Unverified
UCF SportsTwo-in-one Two StreamVideo-mAP 0.596.52Unverified

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