Robotics: Science and Systems X 2014
DOI: 10.15607/rss.2014.x.015
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Modeling High-Dimensional Humans for Activity Anticipation using Gaussian Process Latent CRFs

Abstract: Abstract-For robots, the ability to model human configurations and temporal dynamics is crucial for the task of anticipating future human activities, yet requires conflicting properties: On one hand, we need a detailed high-dimensional description of human configurations to reason about the physical plausibility of the prediction; on the other hand, we need a compact representation to be able to parsimoniously model the relations between the human and the environment.We therefore propose a new model, GP-LCRF, … Show more

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Cited by 30 publications
(30 citation statements)
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“…Among the aforementioned approaches, Div-M There are variants of CRFs that rely on sequential models as well such as, Dynamic CRF (dCRF) [40], Infinite Hidden CRF [2], Gaussian Process Latent CRF [17] and Hierarchical Semi-Markov CRF (HSCRF). Although they are applicable to videos, we are not aware of any tractable method to compute a belief over any of the aforementioned graphical model.…”
Section: Background and Related Workmentioning
confidence: 99%
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“…Among the aforementioned approaches, Div-M There are variants of CRFs that rely on sequential models as well such as, Dynamic CRF (dCRF) [40], Infinite Hidden CRF [2], Gaussian Process Latent CRF [17] and Hierarchical Semi-Markov CRF (HSCRF). Although they are applicable to videos, we are not aware of any tractable method to compute a belief over any of the aforementioned graphical model.…”
Section: Background and Related Workmentioning
confidence: 99%
“…It is also common to compute a belief over latent nodes as in the case of infinte hidden CRF [2] and Gaussian Process Latent CRF [17]. However, they are not directly applicable to our problem since they can compute a belief only over the latent node.…”
Section: Background and Related Workmentioning
confidence: 99%
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“…For example, reasoning about the interactions with objects helps in activity detection [28,43,18], understanding the spatial and structural relationships between objects improves object detection [16] and retrieval [8], and understanding what actions are supported by the objects in an environment is essential for many robotic applications [17,30]. Our goal is to learn a rich functional representation of the environment in terms of object affordances from RGB-D videos of people interacting with their surrounding environment.…”
Section: Introductionmentioning
confidence: 99%