<p>This paper presents an approach to identify the vehicle in the static images using color and corner map. The detection of vehicles in a traffic scene can address wide range of traffic problems. Here an attempt has been made to reduce the search time to find the possible vehicle candidates thereby reducing the computation time without a full search. A color transformation is used to project all the colors of input pixels to a new feature space such that vehicle pixels can be easily distinguished from non-vehicle ones. Bayesian classifier is adopted for verifying the vehicle pixels from the background. Corner map is used for removing the false detections and to verify the vehicle candidates. © 2010 IEEE.</p>
cited By (since 1996)1; Conference of org.apache.xalan.xsltc.dom.DOMAdapter@739571e8 ; Conference Date: org.apache.xalan.xsltc.dom.DOMAdapter@586971a0 Through org.apache.xalan.xsltc.dom.DOMAdapter@72a2ecb8; Conference Code:80503
R. Aarthi, Dr. Padmavathi S., and Amudha, J., “Vehicle detection in static images using color and corner map”, in ITC 2010 - 2010 International Conference on Recent Trends in Information, Telecommunication, and Computing, Kochi, Kerala, 2010, pp. 244-246.