ROFeb 16, 2016

Multi-Sensor Surface Analysis for Robotic Ironing

arXiv:1602.04918v136 citations
Originality Incremental advance
AI Analysis

This addresses the problem of robotic manipulation of deformable objects like cloth for domestic or industrial automation, but is incremental as it builds on existing surface scanning techniques.

The paper tackles robotic ironing of cloth by developing a hybrid surface analysis method that fuses curvature and discontinuity scans to detect wrinkles, enabling a robot to effectively remove wrinkles from cloth surfaces.

Robotic manipulation of deformable objects remains a challenging task. One such task is to iron a piece of cloth autonomously. Given a roughly flattened cloth, the goal is to have an ironing plan that can iteratively apply a regular iron to remove all the major wrinkles by a robot. We present a novel solution to analyze the cloth surface by fusing two surface scan techniques: a curvature scan and a discontinuity scan. The curvature scan can estimate the height deviation of the cloth surface, while the discontinuity scan can effectively detect sharp surface features, such as wrinkles. We use this information to detect the regions that need to be pulled and extended before ironing, and the other regions where we want to detect wrinkles and apply ironing to remove the wrinkles. We demonstrate that our hybrid scan technique is able to capture and classify wrinkles over the surface robustly. Given detected wrinkles, we enable a robot to iron them using shape features. Experimental results show that using our wrinkle analysis algorithm, our robot is able to iron the cloth surface and effectively remove the wrinkles.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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