Publication | Closed Access
Vehicle logo recognition by weighted multi‐class support vector machine ensembles based on sharpness histogram features
17
Citations
20
References
2015
Year
EngineeringMachine LearningFeature DetectionBiometricsImage FeatureAppropriate Kernel FunctionSupport Vector MachineClassification MethodImage AnalysisImage ClassificationPattern RecognitionMultiple Classifier SystemVehicle Logo RecognitionMachine VisionImage SimilarityVehicle LogosComputer VisionData ClassificationClassifier SystemSharpness Histogram Features
Classical methods recognise vehicle logos with image feature matching approaches. Different from these methods, this study proposes a novel algorithm to recognise the vehicle logos in real time by constructing the weighted multi‐class support vector machine (SVM) ensemble model to classify the vehicle logos based on sharpness histogram features. To evaluate the performance of the proposed algorithm, extensive experiments have been performed. Experimental results indicate that the sharpness histogram features proposed by the authors has better distinguishability than colour histogram features. Moreover, they show that the proposed algorithm has the best average recognition performance, and its performance is the most robust. Conveniently, the proposed algorithm can avoid the burden of choosing the appropriate kernel function and parameters comparing with multi‐class SVM model.
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