Position Estimation
Position estimation aims to accurately determine the location of an object or entity, a crucial task across diverse fields. Current research focuses on improving accuracy and robustness using various sensor modalities (e.g., GNSS, radar, IMU, cameras, UWB) and advanced algorithms like particle filters, Kalman filters, and neural networks (including CNNs and GANs), often incorporating physics-informed models or data-driven approaches to mitigate noise and environmental challenges. These advancements are driving progress in applications ranging from autonomous navigation and robotics to smart city infrastructure and medical imaging, where precise localization is essential for functionality and safety.
Papers
Ultra-low-power Range Error Mitigation for Ultra-wideband Precise Localization
Simone Angarano, Francesco Salvetti, Vittorio Mazzia, Giovanni Fantin, Dario Gandini, Marcello Chiaberge
Data-Driven Target Localization Using Adaptive Radar Processing and Convolutional Neural Networks
Shyam Venkatasubramanian, Sandeep Gogineni, Bosung Kang, Ali Pezeshki, Muralidhar Rangaswamy, Vahid Tarokh