Skip to content

Latest commit

 

History

History
45 lines (31 loc) · 1.22 KB

README.md

File metadata and controls

45 lines (31 loc) · 1.22 KB

Inertial Odometry with Reinforcement Learning

The goal of the project is to perform end-to-end inertial navigation with deep reinforcement learning

Project To-Do List

Research

  • Research and implement non-linear Kalman Filters
  • Read and understand TLIO and IMO research papers

Implementation

  • Implement and understand the concepts from the TLIO and IMO papers
  • Create the Husky Dataset
  • Recreate the TLIO Paper with the Husky Dataset

Simulation

  • Create a simulated world environment
  • Create and implement an end-to-end inertial navigation algorithm in the simulation

Real-World Application

  • Zero-Shot Implementation
  • Offline Reinforcement Learning
  • Online Reinforcement Learning
  • Imitation Learning (BC, Dagger,...)
  • Classic Method (MPC,...)

Simulation To-Do List

Gazebo Classic

  • Create Different Trajectories for the Husky
  • Collect Simulation Dataset
  • Create Reinforcement Learning Framework
  • Train Online Reinforcement Learning

Isaac Sim

  • Get Isaac ROS to work with Isaac Sim
  • Implement VSLAM
  • Create different different trajectories
  • Collect Simulation Data
  • Implement Online Reinforcement Learning