IEEE Access (Jan 2018)

Cognition-Based Context-Aware Cloud Computing for Intelligent Robotic Systems in Mobile Education

  • Jianbo Zheng,
  • Qieshi Zhang,
  • Shihao Xu,
  • Hong Peng,
  • Qin Wu

DOI
https://doi.org/10.1109/ACCESS.2018.2867880
Journal volume & issue
Vol. 6
pp. 49103 – 49111

Abstract

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At present, artificial intelligence (AI) has made considerable progress in recognition of speech, face, and emotion. Potential application to robots could bring significant improvement on intelligent robotic systems. However, limited resource on robots cannot satisfy the large-scale computation and storage that the AI recognition requires. Cloud provides an efficient way for robots, where they off-load the computation too. Therefore, we present a cognition-based context-aware cloud computing framework, which is designed to help robot's sense environments including user's emotions. Based on the recognized context information, robots could optimize their responses and improve the user's experience on interaction. The framework contains a customizable context monitoring system on the mobile end to collect and process the data from the robot's sensors. Besides, it integrates various AI recognition services in the cloud to extract the context facts by analyzing and understanding the data. Once the context data is extracted, the results are pushed back to mobile end for making a better decision in the next interactions. In this paper, we demonstrate and evaluate the framework by a real case, an educational mobile app for English learning. The results show that the proposed framework could significantly improve the interaction and intelligence of mobile robots.

Keywords