Design of Computer Vision System for Objects Recognition in Automation Industries

  • Tushar Jain Mechanical Engineering Department, MIET Meerut, Meerut, Uttar Pradesh, India
  • Meenu Mechanical Engineering Department, NIT Kurukshetra, Thanesar, Haryana, India
  • H. K. Sardana 3 Central Scientific Instrument Organizations (CSIO), Chandigarh, Punjab, India

Abstract

The field of machine vision has been developing at quick pace. The development in this field, dissimilar to most settled fields,
has been both in expansiveness and profundity of ideas and procedures. Object recognition is widely used in the manufacturing
industry for the purpose of inspection. Mechanically manufactured parts have recognition difficulties due to manufacturing process
including machine malfunctioning, tool wear, and variations in raw material. This paper considers the problem of recognizing and
classifying the objects of such parts. RGB images of different objects are used as an input. The Fourier descriptor technique is used
for recognition of objects. Artificial Neural Network (ANN) is used for classification of different objects. These objects are kept in
different orientations for invariant rotation, translation and scaling. Invariant example acknowledgment utilizing neural systems is
an especially appealing methodology on account of its closeness with natural frameworks. This paper shows the effect of different
network architecture and numbers of hidden nodes on the classification accuracy of objects.

Published
2020-03-17
How to Cite
, T. J., Meenu, & H. K. Sardana. (2020). Design of Computer Vision System for Objects Recognition in Automation Industries. Global Journal of Enterprise Information System, 10(1), 86-90. Retrieved from https://www.gjeis.com/index.php/GJEIS/article/view/277
Share |