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AC-VRNN: Attentive Conditional-VRNN for multi-future trajectory prediction

Alessia Bertugli, Simone Calderara, Pasquale Coscia, Lamberto Ballan, Rita Cucchiara

2021Computer Vision and Image Understanding36 citationsDOIOpen Access PDF

Abstract

Anticipating human motion in crowded scenarios is essential for developing intelligent transportation systems, social-aware robots and advanced video surveillance applications. A key component of this task is represented by the inherently multi-modal nature of human paths which makes socially acceptable multiple futures when human interactions are involved. To this end, we propose a generative architecture for multi-future trajectory predictions based on Conditional Variational Recurrent Neural Networks (C-VRNNs). Conditioning mainly relies on prior belief maps, representing most likely moving directions and forcing the model to consider past observed dynamics in generating future positions. Human interactions are modelled with a graph-based attention mechanism enabling an online attentive hidden state refinement of the recurrent estimation. To corroborate our model, we perform extensive experiments on publicly-available datasets (e.g., ETH/UCY, Stanford Drone Dataset, STATS SportVU NBA, Intersection Drone Dataset and TrajNet++) and demonstrate its effectiveness in crowded scenes compared to several state-of-the-art methods.

Topics & Concepts

Computer scienceDroneArtificial intelligenceTrajectoryKey (lock)Machine learningGraphComponent (thermodynamics)Task (project management)RobotGenerative modelGenerative grammarIntersection (aeronautics)Forcing (mathematics)Theoretical computer scienceMathematicsGeneticsManagementAstronomyEconomicsAerospace engineeringBiologyMathematical analysisThermodynamicsPhysicsComputer securityEngineeringVideo Surveillance and Tracking MethodsAutonomous Vehicle Technology and SafetyAnomaly Detection Techniques and Applications
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