Improving Trajectory Optimization using a Roadmap Framework
This work addresses motion planning challenges for robotics applications where fast planning times are required, but it is incremental as it builds on existing trajectory optimization and roadmap methods.
The paper tackled the problem of motion planning in realistic scenarios by evaluating existing planners and introducing an integrated system that combines a sparse roadmap framework with trajectory optimization, showing superior performance in experiments with 5000 test cases across 4 scenarios.
We present an evaluation of several representative sampling-based and optimization-based motion planners, and then introduce an integrated motion planning system which incorporates recent advances in trajectory optimization into a sparse roadmap framework. Through experiments in 4 common application scenarios with 5000 test cases each, we show that optimization-based or sampling-based planners alone are not effective for realistic problems where fast planning times are required. To the best of our knowledge, this is the first work that presents such a systematic and comprehensive evaluation of state-of-the-art motion planners, which are based on a significant amount of experiments. We then combine different stand-alone planners with trajectory optimization. The results show that the combination of our sparse roadmap and trajectory optimization provides superior performance over other standard sampling-based planners combinations. By using a multi-query roadmap instead of generating completely new trajectories for each planning problem, our approach allows for extensions such as persistent control policy information associated with a trajectory across planning problems. Also, the sub-optimality resulting from the sparsity of roadmap, as well as the unexpected disturbances from the environment, can both be overcome by the real-time trajectory optimization process.