Home /Research /Multi-Type Activity Recognition from a Robot's Viewpoint
PERCEPTION

Multi-Type Activity Recognition from a Robot's Viewpoint

Ilaria Gori, J.K. Aggarwal, Larry Matthies, Michael S. Ryoo

Year
2017
Citations
2
Access
Open access

Abstract

The literature in computer vision is rich of works where different types of activities -- single actions, two persons interactions or ego-centric activities, to name a few -- have been analyzed. However, traditional methods treat such types of activities separately, while in real settings detecting and recognizing different types of activities simultaneously is necessary. We first design a new unified descriptor, called Relation History Image (RHI), which can be extracted from all the activity types we are interested in. We then formulate an optimization procedure to detect and recognize activities of different types. We assess our approach on a new dataset recorded from a robot-centric perspective as well as on publicly available datasets, and evaluate its quality compared to multiple baselines.

Keywords

Perspective (graphical)Computer scienceArtificial intelligenceRelation (database)RobotQuality (philosophy)Machine learningHuman–computer interactionData mining

Related papers

Browse all PERCEPTION papers