Traffic Scene
Traffic scene understanding aims to comprehensively model and predict the complex interactions within dynamic road environments, crucial for autonomous driving and intelligent transportation systems. Current research heavily focuses on developing robust perception models using deep learning architectures like Graph Neural Networks and transformers, often incorporating multi-modal data (RGB, depth, LiDAR) and leveraging techniques such as contrastive learning and self-supervised pretraining to improve accuracy and generalization. These advancements are driving progress in tasks such as object detection, motion prediction, and scene understanding, ultimately contributing to safer and more efficient transportation systems.
Papers
Self Supervised Clustering of Traffic Scenes using Graph Representations
Maximilian Zipfl, Moritz Jarosch, J. Marius Zöllner
Fingerprint of a Traffic Scene: an Approach for a Generic and Independent Scene Assessment
Maximilian Zipfl, Barbara Schütt, J. Marius Zöllner, Eric Sax
Relation-based Motion Prediction using Traffic Scene Graphs
Maximilian Zipfl, Felix Hertlein, Achim Rettinger, Steffen Thoma, Lavdim Halilaj, Juergen Luettin, Stefan Schmid, Cory Henson