Learning to Grasp Clothing Structural Regions for Garment Manipulation Tasks

06/26/2023
by   Wei Chen, et al.
0

When performing cloth-related tasks, such as garment hanging, it is often important to identify and grasp certain structural regions – a shirt's collar as opposed to its sleeve, for instance. However, due to cloth deformability, these manipulation activities, which are essential in domestic, health care, and industrial contexts, remain challenging for robots. In this paper, we focus on how to segment and grasp structural regions of clothes to enable manipulation tasks, using hanging tasks as case study. To this end, a neural network-based perception system is proposed to segment a shirt's collar from areas that represent the rest of the scene in a depth image. With a 10-minute video of a human manipulating shirts to train it, our perception system is capable of generalizing to other shirts regardless of texture as well as to other types of collared garments. A novel grasping strategy is then proposed based on the segmentation to determine grasping pose. Experiments demonstrate that our proposed grasping strategy achieves 92%, 80%, and 50% grasping success rates with one folded garment, one crumpled garment and three crumpled garments, respectively. Our grasping strategy performs considerably better than tested baselines that do not take into account the structural nature of the garments. With the proposed region segmentation and grasping strategy, challenging garment hanging tasks are successfully implemented using an open-loop control policy. Supplementary material is available at https://sites.google.com/view/garment-hanging

READ FULL TEXT

page 1

page 3

page 4

page 6

research
08/13/2020

Cloth Region Segmentation for Robust Grasp Selection

Cloth detection and manipulation is a common task in domestic and indust...
research
05/29/2020

Multi-modal Transfer Learning for Grasping Transparent and Specular Objects

State-of-the-art object grasping methods rely on depth sensing to plan r...
research
12/16/2022

AnyGrasp: Robust and Efficient Grasp Perception in Spatial and Temporal Domains

As the basis for prehensile manipulation, it is vital to enable robots t...
research
09/27/2022

SGTM 2.0: Autonomously Untangling Long Cables using Interactive Perception

Cables are commonplace in homes, hospitals, and industrial warehouses an...
research
07/04/2021

Hierarchical Policies for Cluttered-Scene Grasping with Latent Plans

6D grasping in cluttered scenes is a longstanding robotic manipulation p...
research
10/06/2021

Grasp-Oriented Fine-grained Cloth Segmentation without Real Supervision

Automatically detecting graspable regions from a single depth image is a...
research
07/21/2022

Closed-Loop Next-Best-View Planning for Target-Driven Grasping

Picking a specific object from clutter is an essential component of many...

Please sign up or login with your details

Forgot password? Click here to reset