cff-version: 1.2.0 abstract: "<p><span style="background-color: rgb(255, 250, 234);">This collection contains all code to produce the results of </span><span style="color: rgb(51, 51, 51);">"Reinforcement Learning Compensated Extended Kalman Filter for Attitude Estimation," </span><em style="color: rgb(51, 51, 51);">2021 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)</em><span style="color: rgb(51, 51, 51);">, Prague, Czech Republic, 2021, pp. 6854-6859, doi: 10.1109/IROS51168.2021.9635963. </span>This paper leverages reinforcement learning to compensate for the classical extended Kalman filter estimation, i.e., to learn the filter gain from the sensor</p><p>measurements. <span style="color: rgb(51, 51, 51);">The code is written in python. To use the code, the readers could set up the Python environment according to "requirements.txt." For details, please follow "README.md". </span></p>" authors: - family-names: Tang given-names: Yujie - family-names: Hu given-names: Liang - family-names: Zhang given-names: Qingrui - family-names: Pan given-names: Wei title: "Code underlying publication: Reinforcement Learning Compensated Extended Kalman Filter for Attitude Estimation" keywords: version: 1 identifiers: - type: doi value: 10.4121/9da2c9da-9031-4b02-8c01-04f47494afd2.v1 license: MIT date-released: 2024-10-29