Pose And Joint-Aware Action Recognition

16 Oct 2020  ยท  Anshul Shah, Shlok Mishra, Ankan Bansal, Jun-Cheng Chen, Rama Chellappa, Abhinav Shrivastava ยท

Recent progress on action recognition has mainly focused on RGB and optical flow features. In this paper, we approach the problem of joint-based action recognition. Unlike other modalities, constellation of joints and their motion generate models with succinct human motion information for activity recognition. We present a new model for joint-based action recognition, which first extracts motion features from each joint separately through a shared motion encoder before performing collective reasoning. Our joint selector module re-weights the joint information to select the most discriminative joints for the task. We also propose a novel joint-contrastive loss that pulls together groups of joint features which convey the same action. We strengthen the joint-based representations by using a geometry-aware data augmentation technique which jitters pose heatmaps while retaining the dynamics of the action. We show large improvements over the current state-of-the-art joint-based approaches on JHMDB, HMDB, Charades, AVA action recognition datasets. A late fusion with RGB and Flow-based approaches yields additional improvements. Our model also outperforms the existing baseline on Mimetics, a dataset with out-of-context actions.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Action Recognition AVA v2.1 JMRN + SlowFast-R101-NL mAP (Val) 28.4 # 3
Action Classification Charades JMRN + R101-NL-LFB MAP 43.23 # 23
Action Classification Charades JMRN (Pose only) MAP 16.2 # 49
Action Recognition HMDB-51 Ours + ResNext101 BERT Average accuracy of 3 splits 84.53 # 7
Action Recognition HMDB-51 JRMN Average accuracy of 3 splits 54.2 # 73
Skeleton Based Action Recognition JHMDB (2D poses only) JMRN (No GT pose) Average accuracy of 3 splits 68.55 # 2
Action Recognition Mimetics SIP-Net mAP 38.3 # 2
Action Recognition Mimetics JMRN mAP 40 # 1

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