Domain Independent Unsupervised Learning to grasp the Novel Objects
- URL: http://arxiv.org/abs/2001.05856v1
- Date: Thu, 9 Jan 2020 12:05:37 GMT
- Title: Domain Independent Unsupervised Learning to grasp the Novel Objects
- Authors: Siddhartha Vibhu Pharswan, Mohit Vohra, Ashish Kumar, and Laxmidhar
Behera
- Abstract summary: We present a novel unsupervised learning based algorithm for the selection of feasible grasp regions.
We define a novel concept of Grasp Decide Index (GDI) to select the best grasp pose in image plane.
We have conducted several experiments in clutter or isolated environment on standard objects of Amazon Robotics Challenge 2017 and Amazon Picking Challenge 2016.
- Score: 14.667956818920738
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: One of the main challenges in the vision-based grasping is the selection of
feasible grasp regions while interacting with novel objects. Recent approaches
exploit the power of the convolutional neural network (CNN) to achieve accurate
grasping at the cost of high computational power and time. In this paper, we
present a novel unsupervised learning based algorithm for the selection of
feasible grasp regions. Unsupervised learning infers the pattern in data-set
without any external labels. We apply k-means clustering on the image plane to
identify the grasp regions, followed by an axis assignment method. We define a
novel concept of Grasp Decide Index (GDI) to select the best grasp pose in
image plane. We have conducted several experiments in clutter or isolated
environment on standard objects of Amazon Robotics Challenge 2017 and Amazon
Picking Challenge 2016. We compare the results with prior learning based
approaches to validate the robustness and adaptive nature of our algorithm for
a variety of novel objects in different domains.
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