Litcius/Paper detail

Pedestrian and Ego-vehicle Trajectory Prediction from Monocular Camera

Lukáš Neumann, Andrea Vedaldi

202140 citationsDOI

Abstract

Predicting future pedestrian trajectory is a crucial component of autonomous driving systems, as recognizing critical situations based only on current pedestrian position may come too late for any meaningful corrective action (e.g. breaking) to take place. In this paper, we propose a new method to predict future position of pedestrians, with respect to a predicted future position of the ego-vehicle, thus giving a assistive/autonomous driving system sufficient time to respond. The method explicitly disentangles actual movement of pedestrians in real world from the ego-motion of the vehicle, using a future pose prediction network trained in self-supervised fashion, which allows the method to observe and predict the intrinsic pedestrian motion in a normalised view, that captures the same real-world location across multiple frames.

Topics & Concepts

PedestrianTrajectoryPosition (finance)Computer scienceArtificial intelligenceComputer visionMonocularMotion (physics)Id, ego and super-egoEngineeringPsychologyTransport engineeringEconomicsPhysicsPsychoanalysisAstronomyFinanceAutonomous Vehicle Technology and SafetyVideo Surveillance and Tracking MethodsHuman Pose and Action Recognition