Publication | Closed Access
An Evolutionary Support Vector Machines Classifier for Pedestrian Detection
14
Citations
9
References
2006
Year
Unknown Venue
Support Vector MachineImage ClassificationMachine VisionMachine LearningImage AnalysisEngineeringPattern RecognitionObject DetectionBiometricsHuman IdentificationClassifier SystemSvm Training ModelSvm ClassifierPedestrian DetectionComputer Vision
In a pedestrian detection system, a classifier is usually designed to recognize whether a candidate is a pedestrian. Support vector machines (SVM) has become a primary technique to train a classifier for pedestrian detection. However, it is hard to give the best training model which has a tremendous effect to the performance of a SVM classifier. In this paper, we design special code/decode scheme and evaluation function for a training model firstly; and then use genetic algorithm to optimize key parameters which represent the SVM training model. Therefore a most suitable SVM classifier can be obtained for pedestrian detection. Experiments have been carried out in a single camera based pedestrian detection system. The results show that the evolutionary SVM classifier has a better detection rate; moreover, RBF kernel is more suitable than polynomial kernel when chosen in an evolutionary SVM classifier for pedestrian detection
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