Publication | Open Access
A License Plate-Recognition Algorithm for Intelligent Transportation System Applications
721
Citations
31
References
2006
Year
Concentric WindowsEngineeringBiometricsIntelligent Traffic ManagementImage ClassificationImage AnalysisPattern RecognitionText RecognitionAutomatic IdentificationCharacter RecognitionTransportation EngineeringMachine VisionOptical Character RecognitionLicense Plate-recognition AlgorithmCar License PlatesDeep LearningOptical Image RecognitionNew AlgorithmComputer VisionPattern Recognition Application
In this paper, a new algorithm for vehicle license plate identification is proposed, on the basis of a novel adaptive image segmentation technique (sliding concentric windows) and connected component analysis in conjunction with a character recognition neural network. The algorithm was tested with 1334 natural-scene gray-level vehicle images of different backgrounds and ambient illumination. The camera focused in the plate, while the angle of view and the distance from the vehicle varied according to the experimental setup. The license plates properly segmented were 1287 over 1334 input images (96.5%). The optical character recognition system is a two-layer probabilistic neural network (PNN) with topology 108-180-36, whose performance for entire plate recognition reached 89.1%. The PNN is trained to identify alphanumeric characters from car license plates based on data obtained from algorithmic image processing. Combining the above two rates, the overall rate of success for the license-plate-recognition algorithm is 86.0%. A review in the related literature presented in this paper reveals that better performance (90% up to 95%) has been reported, when limitations in distance, angle of view, illumination conditions are set, and background complexity is low.
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