INCREMENTAL SUPPORT VECTOR MACHINES FOR FAST RELIABLE INCREMENTAL SUPPORT VECTOR MACHINES FOR FAST RELIABLE IMAGE RECOGNITION

This work addresses the reliable classification of images i n a 5-class problem. To this end, an automatic (SVM) as the underlying algorithm has been developed and applied to the recognition of images (SVM) as the underlying algorithm has been developed and applied to the recognition of images computationally intensive task since it implies training s everal SVM to classify a single example classification time efficiency, an approach to the increme ntal training of SVM has been used as classifier is high, comparable to the one corresponding to t he use of standard SVM as the underlying ) , ( , ... ), , (

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