@InProceedings{kawamura:iros:2020, author = {Kawamura, Yoichiro and Murooka, Masaki and Hiraoka, Naoki and Ito, Hideaki and Okada, Kei and Inaba, Masayuki}, title = {Learning of Tool Force Adjustment Skills by a Life-sized Humanoid using Deep Reinforcement Learning and Active Teaching Request}, booktitle = {IEEE/RSJ International Conference on Intelligent Robots and Systems}, year = {2020}, address = {Las Vegas (NV), USA}, month = {October 25-October 29}, note = {Online}, url = {https://ras.papercept.net/proceedings/IROS20/1467.pdf}, keywords = {Force, Humanoid robots, Reinforcement learning, Tools, Robot learning, Task analysis, Intelligent robots}, doi = {10.1109/IROS45743.2020.9341803}, abstract = {The purpose of this study is to make life-sized humanoid robots acquire tool manipulation skills that require complicated force adjustment. The difficulty in acquisition of tool manipulation skills comes from the hardship in physical modeling. Recent research have revealed that deep reinforcement learning (DRL), a model-free approach, performs superior in such tasks. However, DRL in general has a drawback in sample efficiency, and this becomes critical in robot learning especially in life-sized humanoid robots. In this study, we propose an integrated system incorporating DRL method and active learning. Our method also leverages a variety of previous studies on life-sized humanoid robots to overcome the sample efficiency issue. We demonstrated the effectiveness of our proposed system through a hacksaw skill acquisition and a Japanese planer (Kanna) skill acquisition by a life-sized humanoid robot.} }