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Tracking Partially-Occluded Deformable Objects while Enforcing Geometric Constraints

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In order to manipulate a deformable object, such as rope or cloth, in unstructured environments, robots need a way to estimate its current shape. However, tracking the shape of a deformable object can be challenging because of the object's high flexibility, (self-)occlusion, and interaction with obstacles. Building a high-fidelity physics simulation to aid in tracking is difficult for novel environments. Instead we focus on tracking the object based on RGBD images and geometric motion estimates and obstacles. Our key contributions over previous work in this vein are: 1) A better way to handle severe occlusion by using a motion model to regularize the tracking estimate; and 2) The formulation of \textit{convex} geometric constraints, which allow us to prevent self-intersection and penetration into known obstacles via a post-processing step. These contributions allow us to outperform previous methods by a large margin in terms of accuracy in scenarios with severe occlusion and obstacles.

Yixuan Wang, Dale McConachie, Dmitry Berenson• 2020

Related benchmarks

TaskDatasetResultRank
Keypoint trackingRope
Absolute Error (mm)3.89
4
Keypoint trackingBranched Rope
Absolute Error (mm)5.08
4
Keypoint trackingFabric
Absolute Error (mm)13.28
4
Cross-frame DLO TrackingDLO Simulation (No occlusion)
MPNE11.18
3
Cross-frame DLO TrackingDLO Simulation (10% occluded)
MPNE12.58
3
Cross-frame DLO TrackingDLO Simulation 30% occluded
MPNE19.35
3
Cross-frame DLO TrackingDLO Simulation (50% occluded)
MPNE28.31
3
DLO TrackingROS dataset Static and Dynamic Occlusion scenarios (test)
Tracking Time (ms)16.495
3
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