MAP Estimation

Maximum a posteriori (MAP) estimation is a statistical method aiming to find the most probable parameter values given observed data and a prior distribution. Current research focuses on applying MAP estimation to diverse problems, including inverse problems in image processing and autonomous driving (using models like transformers and probabilistic graphical models for online map creation and prediction), and improving its efficiency and accuracy through techniques like neural network approximations and novel optimization algorithms. These advancements have significant implications for various fields, enabling more robust and efficient solutions in areas such as image restoration, autonomous navigation, and robot exploration.

Papers