Vehicle Interaction
Vehicle interaction research focuses on understanding and modeling how vehicles, drivers, and passengers interact in various driving scenarios to improve safety and efficiency. Current research emphasizes developing accurate perception models (often using convolutional neural networks and transformers) for object detection and driver behavior recognition, as well as robust decision-making algorithms (including game theory and reinforcement learning) for autonomous vehicles navigating complex interactions. These advancements are crucial for enhancing the safety and reliability of autonomous driving systems and improving human-machine interfaces within vehicles, ultimately impacting the design and deployment of safer and more efficient transportation systems.
Papers
Looking for a better fit? An Incremental Learning Multimodal Object Referencing Framework adapting to Individual Drivers
Amr Gomaa, Guillermo Reyes, Michael Feld, Antonio Krüger
Trustworthy Automated Driving through Qualitative Scene Understanding and Explanations
Nassim Belmecheri, Arnaud Gotlieb, Nadjib Lazaar, Helge Spieker
Multi-modality action recognition based on dual feature shift in vehicle cabin monitoring
Dan Lin, Philip Hann Yung Lee, Yiming Li, Ruoyu Wang, Kim-Hui Yap, Bingbing Li, You Shing Ngim
Driving Towards Inclusion: Revisiting In-Vehicle Interaction in Autonomous Vehicles
Ashish Bastola, Julian Brinkley, Hao Wang, Abolfazl Razi