Map Representation
Create 2D and 3D occupancy grids. Use multilayer maps to store generic data such as costs. Represent obstacles using capsule-based collision objects.
Simultaneous Localization and Mapping (SLAM)
Implement customized multi-sensor SLAM solutions using robust pose graph optimization. Use interactive tools to review and modify loop closures.
Path Planning
Find paths through diverse environments using customizable sampling-based planners such as RRT and RRT*, or search-based planners such as A* and Hybrid A*.
Sensor Modeling
Model and tune parameters for various sensors such as IMU, GPS, GNSS, wheel encoders, and range finders. Visualize sensor orientation, velocity, trajectories, and measurements.
Multisensor Pose Estimation
Localize ground and aerial vehicles using inertial sensors with or without GPS. Automatically tune filters to minimize pose estimation error.
Navigation in Dynamic Environments
Plan local trajectories around a global path while avoiding moving obstacles. Follow the planned path or trajectories using Control algorithm.
Product Resources:
“Using MATLAB and Simulink, we designed a prototype for the motion controller and tested it on the hardware within a month. The localization algorithm was evaluated and challenges were clarified by performing simulations.”
Haruki Takemoto and Kenneth Renny Simba, Musashi Seimitsu Industry Co., Ltd.