EPIC-Fusion: Audio-Visual Temporal Binding for Egocentric Action Recognition
About
We focus on multi-modal fusion for egocentric action recognition, and propose a novel architecture for multi-modal temporal-binding, i.e. the combination of modalities within a range of temporal offsets. We train the architecture with three modalities -- RGB, Flow and Audio -- and combine them with mid-level fusion alongside sparse temporal sampling of fused representations. In contrast with previous works, modalities are fused before temporal aggregation, with shared modality and fusion weights over time. Our proposed architecture is trained end-to-end, outperforming individual modalities as well as late-fusion of modalities. We demonstrate the importance of audio in egocentric vision, on per-class basis, for identifying actions as well as interacting objects. Our method achieves state of the art results on both the seen and unseen test sets of the largest egocentric dataset: EPIC-Kitchens, on all metrics using the public leaderboard.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Action Recognition | EPIC-KITCHENS 100 (test) | Top-1 Verb Acc66 | 101 | |
| Action Recognition | EPIC-KITCHENS (val) | Verb Top-1 Acc66 | 36 | |
| Action Recognition | EPIC-Kitchens v1 (test s2 (unseen)) | Actions Top-1 Acc21 | 32 | |
| Action Recognition | EPIC-Kitchens s1 (seen) v1 (test) | Actions Top-1 Accuracy36.7 | 29 | |
| Action Recognition | EPIC-KITCHENS (test) | Average Score46.33 | 25 | |
| Video Action Recognition | EPIC-KITCHENS 100 (test) | Top-1 Action Accuracy36.7 | 24 | |
| Action Classification | Epic Kitchens 100 | -- | 22 | |
| Action Recognition | Epic-100 (test) | Action Accuracy38.3 | 20 | |
| Action Recognition | EPIC-KITCHENS 1 (S1 Seen kitchens) | Top-1 Accuracy (Verb)66.1 | 17 | |
| Egocentric Action Recognition | EPIC-Kitchens test (S1) | Top-1 Acc (Verb)64.75 | 16 |