Learning Sim-to-Real Dense Object Descriptors for Robotic Manipulation

April 18, 2023 Β· Declared Dead Β· πŸ› IEEE International Conference on Robotics and Automation

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Authors Hoang-Giang Cao, Weihao Zeng, I-Chen Wu arXiv ID 2304.08703 Category cs.RO: Robotics Cross-listed cs.CV Citations 3 Venue IEEE International Conference on Robotics and Automation Last Checked 4 months ago
Abstract
It is crucial to address the following issues for ubiquitous robotics manipulation applications: (a) vision-based manipulation tasks require the robot to visually learn and understand the object with rich information like dense object descriptors; and (b) sim-to-real transfer in robotics aims to close the gap between simulated and real data. In this paper, we present Sim-to-Real Dense Object Nets (SRDONs), a dense object descriptor that not only understands the object via appropriate representation but also maps simulated and real data to a unified feature space with pixel consistency. We proposed an object-to-object matching method for image pairs from different scenes and different domains. This method helps reduce the effort of training data from real-world by taking advantage of public datasets, such as GraspNet. With sim-to-real object representation consistency, our SRDONs can serve as a building block for a variety of sim-to-real manipulation tasks. We demonstrate in experiments that pre-trained SRDONs significantly improve performances on unseen objects and unseen visual environments for various robotic tasks with zero real-world training.
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