dc.description.abstract |
Motion planning is an essential part of robotics. This is important for robots to perform
navigational and manipulative tasks. This aims at finding a path from a start position to a
goal position while avoiding collisions with obstacles. These days robots are being
deployed in public places where they need to deal with uncertainty and a dynamic
environment. A motion planning problem generally requires a robot to deal with a dynamic
environment, uncertainty, and kinodynamic (velocity, acceleration, and force/torque)
constraints. A significant amount of work has been done to solve the problem of motion
planning in a dynamic environment. Numerous ways to deal with movement arranging and
obstacle avoidance algorithms have been proposed. Those methods can be categorized into
sampling-based, imitation learning, and biological inspired, and deep learning. Those
approaches have been improved techniques and algorithms for solving motion planning
problems. Even though several new efficient techniques have been proposed and many
existing ones have been improved, the multitude of motion planning issues has been
steadily growing. These problems involve the determination of collision-free paths,
modeling of changing environment, real-time recognition of obstacles, and dynamic
constraints, etc. These limitations create movement arranging issues really testing and
require solid and effective calculations, procedures, and approaches. This study attempts
to introduce a deep learning-based planner to Kautham which is a motion planning
simulation tool for study and research purposes. Kautham uses OMPL which offers
sampling-based planners. Kautham relies on these planners, so it also inherits the problems
of sampling-based algorithms. We hope that a deep learning-based planner can reduce the
computation time for various environmental settings and can improve Kautham
performance and provide a chance to researchers and students to learn and understand deep
learning planners. This work results shows that machine learning based planner
computation time is less than the sampling based planner. |
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