Deep Differentiable Grasp Planner for High-DOF Grippers

February 04, 2020 ยท Declared Dead ยท ๐Ÿ› Robotics: Science and Systems

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Authors Min Liu, Zherong Pan, Kai Xu, Kanishka Ganguly, Dinesh Manocha arXiv ID 2002.01530 Category cs.RO: Robotics Citations 94 Venue Robotics: Science and Systems Last Checked 3 months ago
Abstract
We present an end-to-end algorithm for training deep neural networks to grasp novel objects. Our algorithm builds all the essential components of a grasping system using a forward-backward automatic differentiation approach, including the forward kinematics of the gripper, the collision between the gripper and the target object, and the metric for grasp poses. In particular, we show that a generalized Q1 grasp metric is defined and differentiable for inexact grasps generated by a neural network, and the derivatives of our generalized Q1 metric can be computed from a sensitivity analysis of the induced optimization problem. We show that the derivatives of the (self-)collision terms can be efficiently computed from a watertight triangle mesh of low-quality. Altogether, our algorithm allows for the computation of grasp poses for high-DOF grippers in an unsupervised mode with no ground truth data, or it improves the results in a supervised mode using a small dataset. Our new learning algorithm significantly simplifies the data preparation for learning-based grasping systems and leads to higher qualities of learned grasps on common 3D shape datasets [7, 49, 26, 25], achieving a 22% higher success rate on physical hardware and a 0.12 higher value on the Q1 grasp quality metric.
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