A Segmentation Framework for Vehicle Counting &Classification for Non-lane Indian Roads

  • Mr.Siddalingesh G
  • DR.LATHA PARTHIBAN
Keywords: Vehicle detection, background subtraction, morphological operator, traffic analysis

Abstract

As we are moving towards maximum independent automation systems to avoid manual errors, corruption and ultimately increasing awareness of rules and regulations for citizens of India, it becomes mandatory to introduce automation without any intervention in traffic monitoring and regulation system. In proposed system we are trying to implement such a system which is applicable for Indian non- lane roads. In proposed system MATLAB simulation software is used for implementation. In Matlab video processing toolbox is mainly used. Outcome of this proposed system is to count & detect different types of vehicle through video processing. This paper is proposing real time vehicle counting and classification in traffic for Non-lane roads. It will be especially beneficial for Indian roads supposed to be one step towards following traffic rules.

References

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Published
2016-06-18
How to Cite
G, M., & PARTHIBAN, D. (2016). A Segmentation Framework for Vehicle Counting &Classification for Non-lane Indian Roads. Asian Journal For Convergence In Technology (AJCT) ISSN -2350-1146, 2(2). Retrieved from http://asianssr.org/index.php/ajct/article/view/539
Section
Electronics and Telecommunication

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