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{Li Fei-Fei De-An Huang Edward Chou Serena Yeung Michelle Guo Shuran Song}

Abstract
We propose Neural Graph Matching (NGM) Networks, a novel framework that can learn to recognize a previous unseen 3D action class with only a few examples. We achieve this by leveraging the inherent structure of 3D data through a graphical representation. This allows us to modularize our model and lead to strong data-efficiency in few-shot learning. More specifically, NGM Networks jointly learn a graph generator and a graph matching metric function in a end-to-end fashion to directly optimize the few-shot learning objective. We evaluate NGM on two 3D action recognition datasets, CAD-120 and PiGraphs, and show that learning to generate and match graphs both lead to significant improvement of few-shot 3D action recognition over the holistic baselines.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| skeleton-based-action-recognition-on-cad-120 | NGM w/o Edges (5-shot) | Accuracy: 85.0% |
| skeleton-based-action-recognition-on-cad-120 | NGM (5-shot) | Accuracy: 91.1% |
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