Username   Password       Forgot your password?  Forgot your username? 


Smart Home based on Kinect Gesture Recognition Technology

Volume 15, Number 1, January 2019, pp. 261-269
DOI: 10.23940/ijpe.19.01.p26.261269

Yanfei Penga, Jianjun Penga, Jiping Lib, Chunlong Yaoa, and Xiuying Shia

aSchool of Information Science and Engineering, Dalian Polytechnic University, Dalian, 116034, China
bCollege of Mathematics and Informatics, South China Agricultural University, Guangzhou, 510642, China

(Submitted on October 10, 2018; Revised on November 20, 2018; Accepted on December 26, 2018)


In order to satisfy the needs of people’s intelligent home environment, this paper proposes an intelligent home control system based on gesture recognition technology. To obtain and recognize gestures of human by the depth data, skeleton data and 3D point clouds uses Kinect. The Arduino microprocessor is used to process the received data to realize the intelligent control of home appliances. The body mass index BMI was generated by the acquired biological characteristics, and detects the user’s physical condition. The experimental results show that the system can achieve effective control of household appliances and accurately measure human biological characteristics by receiving and recognizing human body posture. It proves that the system is innovative and practical.


References: 22

      1. C. Qu, J. Sun, and J. Z. Wang, “Automatic Detection of Fall in Old People based on Kinect Sensor,” Journal of Sensing Technology, Vol. 29, No. 3, pp. 378-383, 2016
      2. M. Kepski and B. Kwolek, “Fall Detection on Embedded Platform using Kinect and Wireless Accelerometer,” Computers Helping People with Special Needs, Springer Berlin Heidelberg, pp. 407-414, 2012
      3. C. X. Lu, “Research and Implementation of Intelligent Home Lighting Energy Saving Control System based on Embedded Linux,” Microelectronics & Amp; Computer, Vol. 33, No. 10, pp. 139-142, 2016
      4. Y. Y. Hou, D. T. Yang, and Y. Liu, “Intelligent Home Life and Security System based on Wireless Bluetooth Technology,” Journal of Jiaying University, Vol. 34, No. 5, pp. 36-40, 2016
      5. K. Gill, S. H. Yang, and F. Yao, “A Zigbee-based Home Automation System,” IEEE Transactions on Consumer Electronics, Vol. 55, No. 2, pp. 422-430, 2009
      6. Y. Agarwal, B. Balaji, and R. Gupta, “Occupancy-Driven Energy Management for Smart Building Automation,” in Proceedings of the 2nd ACM Workshop on Embedded Sensing Systems for Energy-Efficiency in Building, pp. 1-6, 2010
      7. S. Y. Chen, T. Liu, and C. Shen, “Smart Home Energy Optimization based on Wearable Device Perception,” Computer Research and Development, Vol. 53, No. 3, pp. 704-715, 2016
      8. J. Smisek, M. Jancosek, and T. Pajdla, “3D with Kinect,” Advances in Computer Vision & Pattern Recognition, Vol. 21, No. 5, pp. 1154-1160, 2013
      9. M. Kepski and B. Kwolek, “Human Fall Detection using Kinect Sensor,” in Proceedings of the 8th International Conference on Computer Recognition Systems, pp. 743-752, 2013
      10. J. Lee, L. Jin, and D. Park, “Automatic Recognition of Aggressive Behavior in Pigs using a Kinect Depth Sensor,” Sensors, Vol. 15, No. 5, pp. 631, 2016
      11. M. Zhang, “Body Motion Tracking and Recognition of Fracture Patients after Operation based on Kinect,” in Proceedings of International Conference on Electronics, Electrical Engineering and Information Science, pp. 580-588, 2016
      12. R. Ibañez, A. Soria, and A. R. Teyseyre, “A Comparative Study of Machine Learning Techniques for Gesture Recognition using Kinect,” Handbook of Research on Human-Computer Interfaces, Developments, and Applications, 2016
      13. F. L. Liu, B. X. Du, and Q. H. Wang, “Hand Gesture Recognition using Kinect Via Deterministic Learning,” in Proceedings of Control and Decision Conference, pp. 196-199, IEEE, 2017
      14. D. D. Nguyen and H. S. Le, “Kinect Gesture Recognition: SVM vs. RVM,” in Proceedings of the Seventh International Conference on Knowledge and Systems Engineering, pp. 395-400, IEEE, 2016
      15. B. Y. L. Li, A. S. Mian, and W. Liu, “Using Kinect for Face Recognition under Varying Poses, Expressions, Illumination and Disguise,” in Proceedings of IEEE Workshop on Applications of Computer Vision, pp. 186-192, IEEE Computer Society, 2013
      16. G. Barbon, M. Margolis, and F. Palumbo, “Taking Arduino to the Internet of Things: The ASIP Programming Model,” Computer Communications, Vol. 89-90, pp. 128-140, 2016
      17. C. Klemenjak, D. Egarter, and W. Elmenreich, “YoMo: the Arduino-based Smart Metering Board,” Computer Science - Research and Development, Vol. 31, No. 1-2, pp. 97-103, 2016
      18. R. Krauss, “Combining Raspberry Pi and Arduino to form a Low-Cost, Real-Time Autonomous Vehicle Platform,” in Proceedings of American Control Conference, pp. 6628-6633, IEEE, 2016
      19. H. D. Wang, N. Liu, Z. H. Cui, W. Yang, A. Huang, G. J. Zhao, et al., “Based on XBee’s Wireless Data Acquisition System Design and Implementation,” Electronic Technology, Vol. 45, No. 1, pp. 67-70+55, 2016
      20. M. L. Yang, X. M. Lou, Y. L. Peng, R. J. Wang, L. Li, and W. W. Guo, “Correlation of College Students’ BMI with Physical Fitness Indicators,” Chinese School Health, Vol. 34, No. 9, pp. 1093-1095+1098, 2013
      21. E. R. Melgar, C. C. Diez, and P. Jaworski, “Arduino and Kinect Projects,” 2012
      22. M. J. Liu, Q. Zhang, Y. W. Mu, “Design of High-Precision Electronic Scales based on HX711,” Information Communication, No. 1, pp. 142-144, 2017


          Please note : You will need Adobe Acrobat viewer to view the full articles.Get Free Adobe Reader

          This site uses encryption for transmitting your passwords.