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Abstract
We propose and address a new generalisation problem: can a model trained for action recognition successfully classify actions when they are performed within a previously unseen scenario and in a previously unseen location? To answer this question, we introduce the Action Recognition Generalisation Over scenarios and locations dataset ARGO1M, which contains 1.1M video clips from the large-scale Ego4D dataset, across 10 scenarios and 13 locations. We demonstrate recognition models struggle to generalise over 10 proposed test splits, each of an unseen scenario in an unseen location. We thus propose CIR, a method to represent each video as a Cross-Instance Reconstruction of videos from other domains. Reconstructions are paired with text narrations to guide the learning of a domain generalisable representation. We provide extensive analysis and ablations on ARGO1M that show CIR outperforms prior domain generalisation works on all test splits.
Original language | English |
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Number of pages | 8 |
Publication status | Published - 6 Oct 2023 |
Event | International Conference on Computer Vision - France, Paris, France Duration: 2 Oct 2023 → 6 Oct 2023 https://iccv2023.thecvf.com/ |
Conference
Conference | International Conference on Computer Vision |
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Abbreviated title | ICCV |
Country/Territory | France |
City | Paris |
Period | 2/10/23 → 6/10/23 |
Internet address |
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Equipment
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HPC (High Performance Computing) and HTC (High Throughput Computing) Facilities
Sadaf R Alam (Manager), Steven A Chapman (Manager), Polly E Eccleston (Other), Simon H Atack (Other) & D A G Williams (Manager)
Facility/equipment: Facility