Visual Completion Of 3D Object Shapes From A Single View For Robotic Tasks.

ROBIO(2019)

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摘要
The goal of this paper is to predict 3D object shape to improve the visual perception of robots in grasping and manipulation tasks. The planning of image-based robotic manipulation tasks depends on the recognition of the object’s shape. Mostly, the manipulator robots usually use a camera with configuration eye-in-hand. This fact limits the calculation of the grip on the visible part of the object. In this paper, we present a 3D Deep Convolutional Neural Network to predict the hidden parts of objects from a single-view and to accomplish recovering the complete shape of them. We have tested our proposal with both previously seen objects and novel objects from a well-known dataset.
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关键词
manipulator robots,configuration eye-in-hand,3D Deep Convolutional Neural Network,single-view,visual completion,image-based robotic manipulation tasks,3D object shape recognition
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