State Estimation
State estimation aims to accurately determine the current state of a system—be it a robot, vehicle, or other dynamic entity—by fusing data from various sensors and incorporating models of system dynamics. Current research emphasizes robust and efficient algorithms, such as Kalman filters (including variations like Invariant Extended Kalman Filters and Moving Horizon Estimation), particle filters, and neural network-based approaches, to handle nonlinearity, sensor noise, and uncertainties in complex environments. These advancements are crucial for improving the performance and reliability of autonomous systems in diverse applications, ranging from robotics and autonomous driving to marine navigation and multi-agent coordination.
Papers
Transcendental Idealism of Planner: Evaluating Perception from Planning Perspective for Autonomous Driving
Wei-Xin Li, Xiaodong Yang
Kalman Filter Auto-tuning through Enforcing Chi-Squared Normalized Error Distributions with Bayesian Optimization
Zhaozhong Chen, Harel Biggie, Nisar Ahmed, Simon Julier, Christoffer Heckman