Learning 3D Reconstructions for Geometrically aware Robotic Grasping

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Publication Type honors thesis
School or College College of Engineering
Department Computing
Faculty Mentor Tucker Hermans
Creator Van der Merwe, Mark
Title Learning 3D Reconstructions for Geometrically aware Robotic Grasping
Date 2020
Description Robotic grasping is a crucial subtask of many important robotic applications, such as in-home robotic assistance, emergency responce robots, and industrial robotics. Deep learning has enabled remarkable improvements in robotic grasp synthesis for previously unseen objects from partial object views. However, existing approaches lack the ability to explicitly reason about the full 3D geometry of the object when selecting a grasp, relying on indirect geometric reasoning derived when learning grasp success networks. This abandons explicit geometric reasoning, such as avoiding undesired robot object collisions. In this thesis, we propose to utilize a novel, learned 3D reconstruction to enable geometric awareness in a grasping system. We leverage the structure of the reconstruction network to learn a grasp success classifier which serves as the objective function for a continuous grasp optimization. We additionally explicitly constrain the optimization to avoid undesired contact, directly using the reconstruction. We examine the role of geometry in grasping both in the training of grasp metrics and through 96 robot grasping trials.
Type Text
Publisher University of Utah
Language eng
Rights Management (c) Mark Van der Merwe
Format Medium application/pdf
Permissions Reference URL https://collections.lib.utah.edu/ark:/87278/s6bc9hv7
ARK ark:/87278/s6m674z1
Setname ir_htoa
ID 1579665
Reference URL https://collections.lib.utah.edu/ark:/87278/s6m674z1
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