Anticipating human actions by correlating past with the future with Jaccard similarity measures
About
We propose a framework for early action recognition and anticipation by correlating past features with the future using three novel similarity measures called Jaccard vector similarity, Jaccard cross-correlation and Jaccard Frobenius inner product over covariances. Using these combinations of novel losses and using our framework, we obtain state-of-the-art results for early action recognition in UCF101 and JHMDB datasets by obtaining 91.7 % and 83.5 % accuracy respectively for an observation percentage of 20. Similarly, we obtain state-of-the-art results for Epic-Kitchen55 and Breakfast datasets for action anticipation by obtaining 20.35 and 41.8 top-1 accuracy respectively.
Basura Fernando, Samitha Herath• 2021
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Action Anticipation | Breakfast | -- | 64 | |
| Action Anticipation | Epic-Kitchen 55 (val) | Top-1 Acc20.35 | 33 | |
| Early Action Recognition | JHMDB | Accuracy83.5 | 9 | |
| Early Action Prediction | UCF101 20% observation | Accuracy91.7 | 7 |
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