Education, Science, Technology, Innovation and Life
Open Access
Sign In

Design of Intelligent Education Service Robots for Big Data

Download as PDF

DOI: 10.23977/aetp.2021.57027 | Downloads: 13 | Views: 899

Author(s)

Xiaojun Liu 1, Chunrun Guo 2

Affiliation(s)

1 School of Electromechanical and Automobile Engineering, Huanggang Normal University, Huanggang 438000, Hubei, China
2 Hubei Zhongke Research Institute of Industrial Technology, Huanggang 438000, Hubei, China

Corresponding Author

Xiaojun Liu

ABSTRACT

With the development of robot technology, service robots have gradually come into people's lives, which also makes human-computer interaction more and more frequent. However, most of the current robot control algorithms have low accuracy and difficult operation, and people can't wait to find more effective algorithms. In order to design the most convenient and accurate intelligent education service robot, this paper uses SF algorithm and improved PCNN to establish a hybrid model, and proposes an improved saliency region extraction algorithm based on education service robot. The algorithm compares the standard database with the real environment, and the PR curve of the proposed algorithm is improved by about 5%. It is 10% higher than the SF algorithm in the AUC index, and the comprehensive F value is improved by 3.4% ~ 7.4%. This paper fully demonstrates that the saliency area generated by the proposed algorithm is closer to the true value, which can effectively suppress the high-brightness background area in the detection results of the SF algorithm. It also verifies that the PCNN model with the neuron propagation stimulation mechanism as the core more effective simulation of biological vision systems. Combining compressed sensing technology, this paper proposes a speech recognition scheme that is easy to implement in hardware. The algorithm performance of the robot is verified, and the optimal effect parameters are selected through comparative experiments. The method uses Chinese phonetic phrase (sentence) test to obtain good recognition results, and it can be used as an effective improvement scheme for the speech input of the proposed robot voice interaction system.

KEYWORDS

Big Data, Intelligent Education Service Robot, Saliency Region Extraction Algorithm, Visual System, Voice Interaction System

CITE THIS PAPER

Xiaojun Liu, Chunrun Guo. Design of Intelligent Education Service Robots for Big Data. Advances in Educational Technology and Psychology (2021) 5: 203-217. DOI: http://dx.doi.org/10.23977/aetp.2021.57027

REFERENCES

[1] Paul Baxter, Emily Ashurst, Robin Read, James Kennedy, & Tony Belpaeme. (2017). Robot education peers in a situated primary school study: personalisation promotes child learning. Plos One, 12(5), e0178126.
[2] Catherine Lovegrove, Kamran Ahmed, Giacomo Novara, Khurshid Guru, & Prokar Dasgupta. (2016). Modular training for robot-assisted radical prostatectomy: where to begin?. Journal of Surgical Education, 74(3), 486-494.
[3] Paulo José Costa, Nuno Moreira, Daniel Campos, José Gonçalves, José Lima, & Pedro Luís Costa. (2016). Localization and navigation of an omnidirectional mobile robot: the robot@factory case study. IEEE Revista Iberoamericana De Tecnologias Del Aprendizaje, 11(1), 1-9.
[4] Maja Lutovac, Zoran Dimic, Stefan Mitrovic, Aleksandar Stepanovic, & Vladimir Kvrgic. (2016). Reconfigurable virtual environment for multirobot operations and its application in education. Telfor Journal, 8(2), 127-132.
[5] Marsha Langer Ellison, Erin D. Reilly, Lisa Mueller, Mark R. Schultz, & Charles E. Drebing. (2018). A supported education service pilot for returning veterans with posttraumatic stress disorder. Psychol Serv,15(2), 200-207.
[6] Hashem, Ibrahim Abaker Targio, Chang, Victor, Anuar, Nor Badrul, Adewole, Kayode, Yaqoob, Ibrar, & Gani, Abdullah. (2016). The role of big data in smart city. International Journal of Information Management,36(5), 748-758.
[7] Kan Zheng, Zhe Yang, Kuan Zhang, Periklis Chatzimisios, Kan Yang, & Wei Xiang. (2016). Big data-driven optimization for mobile networks toward 5g. IEEE Network, 30(1), 44-51.
[8] Xu, Zhenning, Frankwick, Gary L., & Ramirez, Edward. (2016). Effects of big data analytics and traditional marketing analytics on new product success: a knowledge fusion perspective. Journal of Business Research,69(5), 1562-1566.
[9] Dimitris Berberidis, Vassilis Kekatos, & Georgios B. Giannakis. (2016). Online censoring for large-scale regressions with application to streaming big data. IEEE Transactions on Signal Processing, 64(15), 3854-3867.
[10] Hongming Cai, Boyi Xu, Lihong Jiang, & Athanasios V. Vasilakos. (2017). Iot-based big data storage systems in cloud computing: perspectives and challenges. IEEE Internet of Things Journal, 4(1), 75-87.

All published work is licensed under a Creative Commons Attribution 4.0 International License.

Copyright © 2016 - 2031 Clausius Scientific Press Inc. All Rights Reserved.