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Papers/Shuffle and Learn: Unsupervised Learning using Temporal Or...

Shuffle and Learn: Unsupervised Learning using Temporal Order Verification

Ishan Misra, C. Lawrence Zitnick, Martial Hebert

2016-03-28Pose EstimationVideo AlignmentAction RecognitionTemporal Action LocalizationSelf-Supervised Action Recognition
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Abstract

In this paper, we present an approach for learning a visual representation from the raw spatiotemporal signals in videos. Our representation is learned without supervision from semantic labels. We formulate our method as an unsupervised sequential verification task, i.e., we determine whether a sequence of frames from a video is in the correct temporal order. With this simple task and no semantic labels, we learn a powerful visual representation using a Convolutional Neural Network (CNN). The representation contains complementary information to that learned from supervised image datasets like ImageNet. Qualitative results show that our method captures information that is temporally varying, such as human pose. When used as pre-training for action recognition, our method gives significant gains over learning without external data on benchmark datasets like UCF101 and HMDB51. To demonstrate its sensitivity to human pose, we show results for pose estimation on the FLIC and MPII datasets that are competitive, or better than approaches using significantly more supervision. Our method can be combined with supervised representations to provide an additional boost in accuracy.

Results

TaskDatasetMetricValueModel
Activity RecognitionUCF1013-fold Accuracy50.9Shuffle and Learn (AlexNet)
Activity RecognitionHMDB51Top-1 Accuracy19.8Shuffle and Learn (AlexNet)
Action RecognitionUCF1013-fold Accuracy50.9Shuffle and Learn (AlexNet)
Action RecognitionHMDB51Top-1 Accuracy19.8Shuffle and Learn (AlexNet)

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