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Performance Measurements of Feature Tracking and Histogram Based Traffic Congestion Algorithms


Affiliations
1 Proline Bilisim Sistemleri, Istanbul, Turkey
 

In this paper, feature tracking based and histogram based traffic congestion detection systems are developed. Developed all system are designed to run as real time application. In this work, ORB (Oriented FAST and Rotated BRIEF) feature extraction method have been used to develop feature tracking based traffic congestion solution. ORB is a rotation invariant, fast and resistant to noise method and contains the power of FAST and BRIEF feature extraction methods. Also, two different approaches, which are standard deviation and weighed average, have been applied to find out the congestion information by using histogram of the image to develop histogram based traffic congestion solution. Both systems have been tested on different weather conditions such as cloudy, sunny and rainy to provide various illumination at both daytime and night. For all developed systems performance results are examined to show the advantages and drawbacks of these systems.

Keywords

Traffic Congestion, Feature Extraction, ORB, Histogram.
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  • Performance Measurements of Feature Tracking and Histogram Based Traffic Congestion Algorithms

Abstract Views: 234  |  PDF Views: 127

Authors

Ozgur Altun
Proline Bilisim Sistemleri, Istanbul, Turkey
Kenan Aksoy
Proline Bilisim Sistemleri, Istanbul, Turkey

Abstract


In this paper, feature tracking based and histogram based traffic congestion detection systems are developed. Developed all system are designed to run as real time application. In this work, ORB (Oriented FAST and Rotated BRIEF) feature extraction method have been used to develop feature tracking based traffic congestion solution. ORB is a rotation invariant, fast and resistant to noise method and contains the power of FAST and BRIEF feature extraction methods. Also, two different approaches, which are standard deviation and weighed average, have been applied to find out the congestion information by using histogram of the image to develop histogram based traffic congestion solution. Both systems have been tested on different weather conditions such as cloudy, sunny and rainy to provide various illumination at both daytime and night. For all developed systems performance results are examined to show the advantages and drawbacks of these systems.

Keywords


Traffic Congestion, Feature Extraction, ORB, Histogram.