Litcius/Paper detail

Graph-SIM: A Graph-based Spatiotemporal Interaction Modelling for Pedestrian Action Prediction

Tiffany Yau, Saber Malekmohammadi, Amir Rasouli, Peter Lakner, Mohsen Rohani, Jun Luo

202122 citationsDOI

Abstract

One of the most crucial yet challenging tasks for autonomous vehicles in urban environments is predicting the future behaviour of nearby pedestrians, especially at points of crossing. Predicting behaviour depends on many social and environmental factors, particularly interactions between road users. Capturing such interactions requires a global view of the scene and dynamics of the road users in three-dimensional space. This information, however, is missing from the current pedestrian behaviour benchmark datasets. Motivated by these challenges, we propose 1) a novel graph-based model for predicting pedestrian crossing action. Our method models pedestrians’ interactions with nearby road users through clustering and relative importance weighting of interactions using features obtained from the bird’s-eye-view. 2) We introduce a new dataset that provides 3D bounding box and pedestrian behavioural annotations for the existing nuScenes dataset. On the new data, our approach achieves state-of-the-art performance by improving on various metrics by more than 15% in comparison to existing methods. The dataset is available at https://github.com/huawei-noah/datasets/PePScenes.

Topics & Concepts

PedestrianComputer scienceWeightingCluster analysisMinimum bounding boxGraphBounding overwatchBenchmark (surveying)Data miningMachine learningArtificial intelligenceTheoretical computer scienceTransport engineeringGeographyMedicineRadiologyGeodesyEngineeringImage (mathematics)Autonomous Vehicle Technology and SafetyVideo Surveillance and Tracking MethodsTraffic and Road Safety
Graph-SIM: A Graph-based Spatiotemporal Interaction Modelling for Pedestrian Action Prediction | Litcius