Vol 5 No 3 (2019): IJRDO - Journal of Computer Science Engineering | ISSN: 2456-1843
Articles

Design of Portable Intelligent Classification Cosmetic Cabinet Based on Image Processing

Linhan Wang
Bio
Xinhao Wen
Bio
Xiaojuan Xia
Bio
Chunyan Zhang
Bio
Published April 2, 2019
Keywords
  • intelligent classification,
  • image processing,
  • mobile phone app,
  • voice control,
  • Python language
How to Cite
Meihua Zhang, Linhan Wang, Xinhao Wen, Xiaojuan Xia, & Chunyan Zhang. (2019). Design of Portable Intelligent Classification Cosmetic Cabinet Based on Image Processing. IJRDO - Journal of Computer Science Engineering (ISSN: 2456-1843), 5(3), 14-20. Retrieved from https://ijrdo.org/index.php/cse/article/view/2789

Abstract

A portable intelligent classification cosmetic cabinet based on image processing is proposed. Firstly, the structure of this intelligent classification cosmetic cabinet is designed in detail. Subsequently, the hardware and control principle are introduced. Finally, the control program is written in Python language, and the physical verification is carried out. Experimental result proves that the cosmetic cabinet can perform the expected functions, and the intelligent control of the cosmetic cabinet is realized by voice control.

Downloads

Download data is not yet available.

References

  1. Liu Li. Research on the cultivation of professional talents in art colleges and universities [D], Shandong: Shandong Normal University, 2017.
  2. Qinghua Liang, Huijun Zou, Jinqiu Mo. Interesting Institutions [M]. Beijing: Mechanical Industry Press, 2013
  3. Lianggui Yan, Guoding Chen, Liyan Wu. Mechanical Design (9th Edition) [M], Beijing: Higher Education Press, 2013.
  4. Lin Wei, Xiaohong Li. Mechanical Structure Analysis and Design [M]. Beijing: Beijing Institute of Technology Press, 2009.
  5. Chuan Liu. Research on QR code recognition algorithm based on mobile phone camera scanning [D]. Chongqing: Chongqing University, 2014.
  6. Qingqing Long. Research on Android smartphone guide system based on QR code recognition[D]. Zhejiang:China Jiliang University, 2013.
  7. Dandan Zhou, Jing Yang, Nan Ren. Acquisition of QR code information based on Raspberry Pi [J]. Electronic Technology & Software Engineering, 2017(8): 213-214.
  8. Jichang Huang, Baoping Cheng, Zhuqing Zhang, et al. 210 Cases of Sensor Detection and Control IC Applications [M], 2012.
  9. Zhengyi Wang, Wei Wang, Yanqi Wu. Principles and Applications of Electromechanical Systems Control [M]. Beijing: Beijing Institute of Technology Press, 2012.