Invited speakers

Keynote 1: Learning Vehicle Control without Explicit Supervision

Prof. Dr. Daniel Cremers (given by Qadeer Khan)

Computer Vision & Artificial Intelligence

Technical University of Munich (TUM)

Keynote 2: Co-Training for Unsupervised Domain Adaptation of Semantic Segmentation Models

Prof. Antonio M. López

Computer Vision Center (CVC)

Universitat Autònoma de Barcelona (UAB)

Keynote 3: Understanding the Challenges When 3D Semantic Segmentation Faces Class Imbalanced and OOD Data

Prof. Huijing Zhao

Department of Machine Intelligence

Peking University (PKU)

Keynote 4: Learning from Synthetic Data Generated by CARLA Simulator

Prof. Luis M. Bergasa

Department of Electronics

University of Alcalá (UAH)

Keynote 5: From Scene Understanding to SLAM: Scalable Perception for Automated Driving

Prof. Abhinav Valada

Robot Learning Lab

University of Freiburg

Keynote 6: Event-based Fusion for Motion Deblurring with Cross-modal Attention

Prof. Kaiwei Wang (given by Lei Sun)

State Key Laboratory of Modern Optical Instrumentation

Zhejiang University (ZJU)

Keynote 7: An Overview of Transfer Learning: A Practical View

Fernando German Torales Chorne

Bearcover GmbH

Keynote 8: Domain Adaptation and Label-Efficient Learning for Autonomous Driving

Dr. Dengxin Dai

Vision for Autonomous Systems (VAS) Group

Max Planck Institute for Informatics (MPII)

Keynote 9: Data Augmentation and Unsupervised Domain Adaptation Methods for Intelligent Vehicles

Dr. Yeqiang Qian

CyberC3 Intelligent Vehicle Lab

Shanghai Jiao Tong University (SJTU)

Keynote 10: Self-supervised 3D Perception for Autonomous Driving

Prof. David Held

Robotics Institute and the director of the RPAD lab

Carnegie Mellon University (CMU)