Journal of Optics

, Volume 46, Issue 2, pp 108–115 | Cite as

2-D and 3-D lens model for computer vision

  • Y. V. ChavanEmail author
  • D. K. Mishra
  • D. S. Bormane
  • A. D. Shaligram
  • N. S. Mujumdar
Research Article


The lenses are modified in its design to meet the refractive index used for various applications like automated vehicle driving, micro-scopes, telescope etc. These application work well along with correct and effective modeling and implementations (Adelson and Wang in IEEE Trans Pattern Anal Mach Intell 14(2):99–106, 12; Chavan and Mishra in Int J Math Sci Eng Appl 1(1):199–218, 13). In this paper one such modeling and its simulation is presented as 2-D and 3-D model of lens which can be used in camera for computer vision system. The model gives the results considering physical parameters as constants, (camera coordinates and image coordinates), and are based on the angle of the object with axes and focal distance. This model has been implemented using ‘C’ and results are plotted.


2-D lens modeling 3-D lens modeling Image processing Computer vision Machine vision Camera modeling 


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Copyright information

© The Optical Society of India 2017

Authors and Affiliations

  • Y. V. Chavan
    • 1
    Email author
  • D. K. Mishra
    • 2
  • D. S. Bormane
    • 3
  • A. D. Shaligram
    • 4
  • N. S. Mujumdar
    • 3
  1. 1.Electronics DepartmentGovernment PolytechnicOsmanabadIndia
  2. 2.SGSITSIndoreIndia
  3. 3.Rajarshi Shahu College of Engineering TathawadePuneIndia
  4. 4.Electronic ScienceUniversity of PunePuneIndia

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