Short-Term object-interaction Anticipation (STA) consists in detecting the location of the next-active objects, the noun and verb categories of the interaction, as well as the time to contact from the observation of egocentric video. This ability is fundamental for wearable assistants to understand user's goals and provide timely assistance, or to enable human-robot interaction. In this work, we present a method to improve the performance of STA predictions. Our contributions are two-fold: 1) We propose STAformer and STAformer++, two novel attention-based architectures integrating frame-guided temporal pooling, dual image-video attention, and multiscale feature fusion to support STA predictions froman image-input video pair; 2)We introduce two novelmodules to ground STA predictions on human behavior by modeling affordances. First,we integrate an environment affordance modelwhich acts as a persistent memory of interactions that can take place in a given physical scene. We explore how to integrate environment affordances via simple late fusion and with an approach which adaptively learns how to best fuse affordances with end-to-end predictions. Second, we predict interaction hotspots from the observation of hands and object trajectories, increasing confidence in STA predictions localized around the hotspot. Our results show significant improvements on Overall Top-5 mAP, with gain up to +23% on Ego4D and +31% on a novel set of curated EPICKitchens STA labels. We released the https://github.com/lmur98/ AFFttention code, annotations, and pre-extracted affordances on Ego4D and EPIC-Kitchens to encourage future research in this area.

Integrating Affordances and Attention Models for Short-Term Object Interaction Anticipation

Farinella G. M.;Furnari A.
2026-01-01

Abstract

Short-Term object-interaction Anticipation (STA) consists in detecting the location of the next-active objects, the noun and verb categories of the interaction, as well as the time to contact from the observation of egocentric video. This ability is fundamental for wearable assistants to understand user's goals and provide timely assistance, or to enable human-robot interaction. In this work, we present a method to improve the performance of STA predictions. Our contributions are two-fold: 1) We propose STAformer and STAformer++, two novel attention-based architectures integrating frame-guided temporal pooling, dual image-video attention, and multiscale feature fusion to support STA predictions froman image-input video pair; 2)We introduce two novelmodules to ground STA predictions on human behavior by modeling affordances. First,we integrate an environment affordance modelwhich acts as a persistent memory of interactions that can take place in a given physical scene. We explore how to integrate environment affordances via simple late fusion and with an approach which adaptively learns how to best fuse affordances with end-to-end predictions. Second, we predict interaction hotspots from the observation of hands and object trajectories, increasing confidence in STA predictions localized around the hotspot. Our results show significant improvements on Overall Top-5 mAP, with gain up to +23% on Ego4D and +31% on a novel set of curated EPICKitchens STA labels. We released the https://github.com/lmur98/ AFFttention code, annotations, and pre-extracted affordances on Ego4D and EPIC-Kitchens to encourage future research in this area.
2026
Affordances
Egocentric video understanding
Short-term forecasting
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.11769/713532
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