International Journal of Advanced Robotic Systems (Jul 2022)

Cloth manipulation based on category classification and landmark detection

  • Oscar Gustavsson,
  • Thomas Ziegler,
  • Michael C Welle,
  • Judith Bütepage,
  • Anastasiia Varava,
  • Danica Kragic

DOI
https://doi.org/10.1177/17298806221110445
Journal volume & issue
Vol. 19

Abstract

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Cloth manipulation remains a challenging problem for the robotic community. Recently, there has been an increased interest in applying deep learning techniques to problems in the fashion industry. As a result, large annotated data sets for cloth category classification and landmark detection were created. In this work, we leverage these advances in deep learning to perform cloth manipulation. We propose a full cloth manipulation framework that, performs category classification and landmark detection based on an image of a garment, followed by a manipulation strategy. The process is performed iteratively to achieve a stretching task where the goal is to bring a crumbled cloth into a stretched out position. We extensively evaluate our learning pipeline and show a detailed evaluation of our framework on different types of garments in a total of 140 recorded and available experiments. Finally, we demonstrate the benefits of training a network on augmented fashion data over using a small robotic-specific data set.