Robust Perception
Robust perception aims to develop artificial systems capable of reliably interpreting sensory information, even under challenging conditions like adverse weather, sensor malfunctions, or unexpected events. Current research focuses on improving the robustness of perception models through techniques such as multi-sensor fusion (combining data from cameras, lidar, radar), data augmentation (synthetically generating diverse training data), and the development of novel architectures like diffusion models and vision transformers. These advancements are crucial for enabling safe and reliable operation of autonomous vehicles, assistive robotics, and other applications requiring dependable environmental understanding.
Papers
SpectralWaste Dataset: Multimodal Data for Waste Sorting Automation
Sara Casao, Fernando Peña, Alberto Sabater, Rosa Castillón, Darío Suárez, Eduardo Montijano, Ana C. Murillo
AIDE: An Automatic Data Engine for Object Detection in Autonomous Driving
Mingfu Liang, Jong-Chyi Su, Samuel Schulter, Sparsh Garg, Shiyu Zhao, Ying Wu, Manmohan Chandraker