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Pose for Action - Action for Pose

About

In this work we propose to utilize information about human actions to improve pose estimation in monocular videos. To this end, we present a pictorial structure model that exploits high-level information about activities to incorporate higher-order part dependencies by modeling action specific appearance models and pose priors. However, instead of using an additional expensive action recognition framework, the action priors are efficiently estimated by our pose estimation framework. This is achieved by starting with a uniform action prior and updating the action prior during pose estimation. We also show that learning the right amount of appearance sharing among action classes improves the pose estimation. We demonstrate the effectiveness of the proposed method on two challenging datasets for pose estimation and action recognition with over 80,000 test images.

Umar Iqbal, Martin Garbade, Juergen Gall• 2016

Related benchmarks

TaskDatasetResultRank
Human Pose EstimationJ-HMDB sub
Head Accuracy90.3
49
Action RecognitionPenn-Action (test)
Accuracy92.9
27
Pose EstimationPenn Action Dataset (test)
Head89.1
19
Human Pose EstimationPenn-Action
Head Acc89.1
16
Action Recognitionsub-J-HMDB (test)
Accuracy74.6
9
2D action recognitionPenn-Action
Accuracy92.9
7
Pose EstimationPenn-Action
PCK81.1
6
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