Grasp selection analysis for two-step manipulation tasks
This work addresses grasp selection for robotic manipulation tasks, providing incremental insights for researchers in robotics by refining metric application in specific scenarios.
The study tackled the problem of selecting grasps for two-step manipulation tasks by evaluating three ranking strategies using a previously proposed manipulation metric, finding that combining start and goal state metrics improves performance for pick-and-place tasks, while start state metrics suffice for less constrained tasks like pouring, with validation on a physical robot manipulator.
Manipulation tasks are sequential in nature. Grasp selection approaches that take into account the con- straints at each task step are critical, since they allow to both (1) Identify grasps that likely require simple arm motions through the whole task and (2) To discard grasps that, although feasible to achieve at earlier steps, might not be executable at later stages due to goal task constraints. In this paper, we study how to use our previously proposed manipulation metric for tasks in which 2 steps are required (pick-and-place and pouring tasks). Even for such simple tasks, it was not clear how to use the results of applying our metric (or any metric for that matter) to rank all the candidate grasps: Should only the start state be considered, or only the goal, or a combination of both? In order to find an answer, we evaluated the (best) grasps selected by our metric under each of these 3 considerations. Our main conclusion was that for tasks in which the goal state is more constrained (pick-and-place), using a combination of the metric measured at the start and goal states renders better performance when compared with choosing any other candidate grasp, whereas in tasks in which the goal constraints are less rigidly defined, the metric measured at the start state should be mainly considered. We present quantitative results in simulation and validate our approach's practicality with experimental results in our physical robot manipulator, Crichton.