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A Study on Efficient Vehicle Tracking System using Dynamic Programming Method
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  • Journal title : Journal of Digital Convergence
  • Volume 13, Issue 12,  2015, pp.209-215
  • Publisher : The Society of Digital Policy and Management
  • DOI : 10.14400/JDC.2015.13.12.209
 Title & Authors
A Study on Efficient Vehicle Tracking System using Dynamic Programming Method
Kwon, Hee-Chul;
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In the past, there have been many theory and algorithms for vehicle tracking. But the time complexity of many feature point matching methods for vehicle tracking are exponential. Also, object segmentation and detection algorithms presented for vehicle tracking are exhaustive and time consuming. Therefore, we present the fast and efficient two stages method that can efficiently track the many moving vehicles on the road. The first detects the vehicle plate regions and extracts the feature points of vehicle plates. The second associates the feature points between frames using dynamic programming.
Vehicle Tracking;Feature Point;Matching Algorithm;Dynamic Programming;Plate Detection;
 Cited by
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