Litcius/Paper detail

Context-Aware Human Trajectories Prediction via Latent Variational Model

Abel Díaz Berenguer, Mitchel Alioscha‐Perez, Meshia Cédric Oveneke, Hichem Sahli

2020IEEE Transactions on Circuits and Systems for Video Technology27 citationsDOI

Abstract

Understanding human-contextual interaction to predict human trajectories is a challenging problem. Most of previous trajectory prediction approaches focused on modeling the human-human interaction located in a near neighborhood and neglected the influence of individuals which are farther in the scene as well as the scene layout. To alleviate these limitations, in this article we propose a model to address pedestrian trajectory prediction using a latent variable model aware of the human-contextual interaction. Our proposal relies on contextual information that influences the trajectory of pedestrians to encode human-contextual interaction. We model the uncertainty about future trajectories via latent variational model and captures relative interpersonal influences among all the subjects within the scene and their interaction with the scene layout to decode their trajectories. In extensive experiments, on publicly available datasets, it is shown that using contextual information and latent variational model, our trajectory prediction model achieves competitive results compared to state-of-the-art models.

Topics & Concepts

TrajectoryComputer scienceLatent variableENCODEContext (archaeology)Latent variable modelPedestrianArtificial intelligenceHuman behaviorContextual designMachine learningHidden variable theoryObject (grammar)PhysicsBiochemistryBiologyEngineeringQuantum mechanicsQuantumAstronomyPaleontologyTransport engineeringChemistryGeneVideo Surveillance and Tracking MethodsAutonomous Vehicle Technology and SafetyHuman Pose and Action Recognition