Journal of the Robotics Society of Japan
Online ISSN : 1884-7145
Print ISSN : 0289-1824
ISSN-L : 0289-1824
Paper
Grasping Detection using Deep Convolutional Neural Network with Graspability
Ryosuke ArakiTakahiro HasegawaYuji YamauchiTakayoshi YamashitaHironobu FujiyoshiYukiyasu DomaeRyosuke KawanishiMakito Seki
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2018 Volume 36 Issue 8 Pages 559-566

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Abstract

Accurate grasping of objects such as industrial parts and everyday necessities is an important task for industrial robots and living-support robots. Many methods have been proposed for grasp point detection for robots, some that utilize machine learning and some that do not. Recently, a grasp point detection method using a 2-stage deep neural network has been proposed. Although the 2-stage deep neural network could detect the grasping point of no-learned objects, the computation cost would be high. In this paper, we propose a method for detecting grasping points using one deep convolutional neural network (DCNN) introducing graspability. Simultaneous detection of grasping points and graspability in one neural network lessens calculation costs. Evaluation experiments confirmed that grasping points could be properly detected using graspability.

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© 2018 The Robotics Society of Japan
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