Litcius/Paper detail

MG-GAN: A Multi-Generator Model Preventing Out-of-Distribution Samples in Pedestrian Trajectory Prediction

Patrick Dendorfer, Sven Elflein, Laura Leal-Taixé

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)118 citationsDOI

Abstract

Pedestrian trajectory prediction is challenging due to its uncertain and multimodal nature. While generative adversarial networks can learn a distribution over future trajectories, they tend to predict out-of-distribution samples when the distribution of future trajectories is a mixture of multiple, possibly disconnected modes. To address this issue, we propose a multi-generator model for pedestrian trajectory prediction. Each generator specializes in learning a distribution over trajectories routing towards one of the primary modes in the scene, while a second network learns a categorical distribution over these generators, conditioned on the dynamics and scene input. This architecture allows us to effectively sample from specialized generators and to significantly reduce the out-of-distribution samples compared to single generator methods.

Topics & Concepts

TrajectoryGenerator (circuit theory)Categorical variablePedestrianComputer scienceDistribution (mathematics)Generative grammarSample (material)Generative modelCategorical distributionArtificial intelligenceMachine learningMathematicsEngineeringBayesian probabilityBayes' theoremPower (physics)PhysicsThermodynamicsQuantum mechanicsAstronomyMathematical analysisBayesian hierarchical modelingTransport engineeringAutonomous Vehicle Technology and SafetyAnomaly Detection Techniques and ApplicationsTraffic and Road Safety