Authors
Aditya Patankar, Khiem Phi, Dasharadhan Mahalingam, Nilanjan Chakraborty, IV Ramakrishnan
Publication date
2023/10/1
Conference
2023 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)
Pages
6853-6860
Publisher
IEEE
Description
In this paper, we study the problem of task-oriented grasp synthesis from partial point cloud data using an eye-in-hand camera configuration. In task-oriented grasp synthesis, a grasp has to be selected so that the object is not lost during manipulation, and it is also ensured that adequate force/moment can be applied to perform the task. We formalize the notion of a gross manipulation task as a constant screw motion (or a sequence of constant screw motions) to be applied to the object after grasping. Using this notion of task, and a corresponding grasp quality metric developed in our prior work, we use a neural network to approximate a function for predicting the grasp quality metric on a cuboid shape. We show that by using a bounding box obtained from the partial point cloud of an object, and the grasp quality metric mentioned above, we can generate a good grasping region on the bounding box that can be used to …
Scholar articles
A Patankar, K Phi, D Mahalingam, N Chakraborty… - 2023 IEEE/RSJ International Conference on Intelligent …, 2023