NTU-X: An Enhanced Large-scale Dataset for Improving Pose-based Recognition of Subtle Human Actions

27 Jan 2021  ยท  Neel Trivedi, Anirudh Thatipelli, Ravi Kiran Sarvadevabhatla ยท

The lack of fine-grained joints (facial joints, hand fingers) is a fundamental performance bottleneck for state of the art skeleton action recognition models. Despite this bottleneck, community's efforts seem to be invested only in coming up with novel architectures. To specifically address this bottleneck, we introduce two new pose based human action datasets - NTU60-X and NTU120-X. Our datasets extend the largest existing action recognition dataset, NTU-RGBD. In addition to the 25 body joints for each skeleton as in NTU-RGBD, NTU60-X and NTU120-X dataset includes finger and facial joints, enabling a richer skeleton representation. We appropriately modify the state of the art approaches to enable training using the introduced datasets. Our results demonstrate the effectiveness of these NTU-X datasets in overcoming the aforementioned bottleneck and improve state of the art performance, overall and on previously worst performing action categories. Code and pretrained models can be found at https://github.com/skelemoa/ntu-x .

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Datasets


Introduced in the Paper:

NTU-X

Used in the Paper:

NTU RGB+D
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Skeleton Based Action Recognition NTU60-X 4s-ShiftGCN Accuracy (Body + Fingers joints) 91.78 # 1
Accuracy (Body joints) 89.56 # 3
Accuracy (Body + Fingers + Face joints) 89.64 # 3
Skeleton Based Action Recognition NTU60-X PA-ResGCN Accuracy (Body + Fingers joints) 91.64 # 3
Accuracy (Body joints) 89.98 # 2
Accuracy (Body + Fingers + Face joints) 89.79 # 2
Skeleton Based Action Recognition NTU60-X MS-G3D Accuracy (Body + Fingers joints) 91.76 # 2
Accuracy (Body joints) 91.26 # 1
Accuracy (Body + Fingers + Face joints) 91.12 # 1

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