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StillFast: An End-to-End Approach for Short-Term Object Interaction Anticipation

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Anticipation problem has been studied considering different aspects such as predicting humans' locations, predicting hands and objects trajectories, and forecasting actions and human-object interactions. In this paper, we studied the short-term object interaction anticipation problem from the egocentric point of view, proposing a new end-to-end architecture named StillFast. Our approach simultaneously processes a still image and a video detecting and localizing next-active objects, predicting the verb which describes the future interaction and determining when the interaction will start. Experiments on the large-scale egocentric dataset EGO4D show that our method outperformed state-of-the-art approaches on the considered task. Our method is ranked first in the public leaderboard of the EGO4D short term object interaction anticipation challenge 2022. Please see the project web page for code and additional details: https://iplab.dmi.unict.it/stillfast/.

Francesco Ragusa, Giovanni Maria Farinella, Antonino Furnari• 2023

Related benchmarks

TaskDatasetResultRank
Short-Term AnticipationEgo4D STA v2 (val)
N mAP20.26
16
Spatial-Temporal AnticipationEgo4D STA v1, v2 (val)
Base Performance (B)27.78
14
Short-Term AnticipationEgo4D-STA v1 (test)
mAP (N)19.51
9
Short-term object interaction anticipationEgo4D
mAP (Noun)20.2
9
Short-term object interaction anticipationEgo4D-STA v1 (val)
Error (N)16.21
8
Short-term object interaction anticipationEGO4D v2 (test)
Noun Top-5 mAP25.06
8
Spatio-Temporal AnticipationEgo4D-STA v2 (test)
mAP (Noun)25.06
8
Short-term object interaction anticipationEPIC-KITCHENS (val)
Noun mAP21.24
5
Short-term object interaction anticipationEGO4D v2 (val)
Top-5 Noun mAP20.26
3
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