QuickGrasp: Lightweight Antipodal Grasp Planning with Point Clouds
Journal:
arXiv
Published Date:
Apr 28, 2025
Abstract
Grasping has been a long-standing challenge in facilitating the final
interface between a robot and the environment. As environments and tasks become
complicated, the need to embed higher intelligence to infer from the
surroundings and act on them has become necessary. Although most methods
utilize techniques to estimate grasp pose by treating the problem via pure
sampling-based approaches in the six-degree-of-freedom space or as a learning
problem, they usually fail in real-life settings owing to poor generalization
across domains. In addition, the time taken to generate the grasp plan and the
lack of repeatability, owing to sampling inefficiency and the probabilistic
nature of existing grasp planning approaches, severely limits their application
in real-world tasks. This paper presents a lightweight analytical approach
towards robotic grasp planning, particularly antipodal grasps, with little to
no sampling in the six-degree-of-freedom space. The proposed grasp planning
algorithm is formulated as an optimization problem towards estimating grasp
points on the object surface instead of directly estimating the end-effector
pose. To this extent, a soft-region-growing algorithm is presented for
effective plane segmentation, even in the case of curved surfaces. An
optimization-based quality metric is then used for the evaluation of grasp
points to ensure indirect force closure. The proposed grasp framework is
compared with the existing state-of-the-art grasp planning approach, Grasp pose
detection (GPD), as a baseline over multiple simulated objects. The
effectiveness of the proposed approach in comparison to GPD is also evaluated
in a real-world setting using image and point-cloud data, with the planned
grasps being executed using a ROBOTIQ gripper and UR5 manipulator.