Research Analyzer
← Back

TrackDLO: Tracking Deformable Linear Objects under Occlusion with Motion Coherence

Jingyi Xiang, Holly Dinkel, Harry Zhao, Naixiang Gao, Brian Coltin, Trey Smith, Timothy Bretl

PDF
Key figure (auto-extracted from paper)

Abstract

The TrackDLO algorithm estimates the shape of a Deformable Linear Object (DLO) under occlusion from a sequence of RGB-D images. TrackDLO is vision-only and runs in real-time. It requires no external state information from physics modeling, simulation, visual markers, or contact as input. The algorithm improves on previous approaches by addressing three common scenarios which cause tracking failure: tip occlu- sion, mid-section occlusion, and self-occlusion. This is achieved through the application of Motion Coherence Theory to impute the spatial velocity of occluded nodes, the use of the topolog- ical geodesic distance to track self-occluding DLOs, and the introduction of a non-Gaussian kernel that only penalizes lower- order spatial displacement derivatives to reflect DLO physics. Improved real-time DLO tracking under mid-section occlusion, tip occlusion, and self-occlusion is demonstrated experimentally. The source code and demonstration data are publicly released.

Index terms

RGB-D Perception Visual Tracking Perception for Grasping and Manipulation