Shuqiang Jiang's homepage
Shuqiang Jiang
Ph.D
Tel:
010-62600505
Email:
sqjiang@ict.ac.cn
Address:
No.6 Kexueyuan South Road Zhongguancun,Haidian District Beijing,China The Institute of Computing Technology of the Chinese Academy of Sciences Key Laboratory of Intelligent Information Processing 100190

Dual Track Multimodal Automatic Learning through Human-Robot Interaction.

Shuqiang Jiang, Weiqing Min, Xue Li, Huayang Wang, Jian Sun, Jiaqi Zhou,
IJCAI 2017: 4485-4491, Melbourne, Australia, August 19-25, 2017
[PDF ]

Abstract

Human beings are constantly improving their cog- nitive ability via automatic learning from the inter- action with the environment. Two important as- pects of automatic learning are the visual percep- tion and knowledge acquisition. The fusion of these two aspects is vital for improving the intelligence and interaction performance of robots. Many auto- matic knowledge extraction and recognition meth- ods have been widely studied. However, little work focuses on integrating automatic knowledge extrac- tion and recognition into a unified framework to enable jointly visual perception and knowledge ac- quisition. To solve this problem, we propose a Dual Track Multimodal Automatic Learning (DT- MAL) system, which consists of two components: Hybrid Incremental Learning (HIL) from the vi- sion track and Multimodal Knowledge Extraction (MKE) from the knowledge track. HIL can in- crementally improve recognition ability of the sys- tem by learning new object samples and new ob- ject concepts. MKE is capable of constructing and updating the multimodal knowledge items based on the recognized new objects from HIL and oth- er knowledge by exploring the multimodal signals. The fusion of the two tracks is a mutual promotion process and jointly devote to the dual track learn- ing. We have conducted the experiments through human-machine interaction and the experimental results validated the effectiveness of our proposed system.

  • Shuqiang Jiang, Weiqing Min, Xue Li, Huayang Wang, Jian Sun, Jiaqi Zhou, Dual Track Multimodal Automatic Learning through Human-Robot Interaction. IJCAI 2017: 4485-4491, Melbourne, Australia, August 19-25, 2017



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