Published on IIIA (http://www.iiia.csic.es)


Using Depth and Appearance Features for Informed Robot Grasping of Highly Wrinkled Clothes

Speaker: 
Arnau Ramisa
Institution: 
IRI, CSIC-UPC
Date: 
24 July 2012 - 12:00pm

Detecting grasping points is a key problem in cloth manipulation. Most current approaches follow a multiple re-grasp strategy for this purpose, in which clothes are sequentially grasped from different points until one of them yields to a desired configuration. In this paper, by contrast, we circumvent the need for multiple re-graspings by building a robust detector that identifies the grasping points, generally in one single step, even when clothes are highly wrinkled.
In order to handle the large variability a deformed cloth may have, we build a Bag of Features based detector that combines appearance and 3D geometry features. An image is scanned using a sliding window with a linear classifier, and the candidate windows are refined using a non-linear SVM and a “grasp goodness” criterion to select the best grasping point.
We demonstrate our approach detecting collars in deformed polo shirts, using a Kinect camera. Experimental results show a good performance of the proposed method not only in identifying the same trained textile object part under severe deformations and occlusions, but also the corresponding part in other clothes, exhibiting a degree of generalization.

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Source URL: http://www.iiia.csic.es/en/seminar/using-depth-and-appearance-features-informed-robot-grasping-highly-wrinkled-clothes