Publication | Closed Access
M-SIFT: A new method for Vehicle Logo Recognition
32
Citations
22
References
2012
Year
Unknown Venue
Vehicle Logo RecognitionImage ClassificationImage AnalysisMachine VisionFeature DetectionMachine LearningPattern RecognitionEngineeringBiometricsFeature FusionComputer ScienceImage SimilarityDeep LearningStandard Sift MethodNew AlgorithmComputer VisionPattern Recognition Application
In this paper, a new algorithm for Vehicle Logo Recognition is proposed, on the basis of an enhanced Scale Invariant Feature Transform (Merge-SIFT or M-SIFT). The algorithm is assessed on a set of 1500 logo images that belong to 10 distinctive vehicle manufacturers. A series of experiments are conducted, splitting the 1500 images to a training set (database) and to a testing set (query). It is shown that the MSIFT approach, which is proposed in this paper, boosts the recognition accuracy compared to the standard SIFT method. The reported results indicate an average of 94.6% true recognition rate in vehicle logos, while the processing time remains low (~0.8sec).
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