精密工学会誌
Online ISSN : 1882-675X
Print ISSN : 0912-0289
ISSN-L : 0912-0289
画像技術の実利用特集論文
操作タスク入力に基づく物体の機能部推定
石川 裕地石川 晴也秋月 秀一青木 義満
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2019 年 85 巻 12 号 p. 1136-1142

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Recently, the development of deep learning has enabled robots to grasp objects more reliably than ever. Given this fact, there is an increasing demand for helper robots or home robots. To make these robots real, robots need to understand not only how to grasp objects but also their functions. We propose a new representation for the functions of objects, task-oriented function, which is based on operational task input. This representation makes it possible to describe a variety of ways to use an object. We also propose a new dataset for task-oriented function and a network to detect it. This model reached 79.7% mean IOU in our dataset.

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