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Course detail
ÚSI-2IDKRAcad. year: 2016/2017
The course focuses on the classification and recognition with an accent on statistical methods. Content of the course includes following: The tasks of classification and pattern recognition, basic schema of a classifier, data and evaluation of individual methods, statistical pattern recognition, Bayes learning, maximum likelihood method, GMM, EM algorithm, discriminative training, kernel methods, hybrid systems, how to merge classifiers, basics of AdaBoost, structural recognition, speech processing applications - speaker recognition, language identification, speech recognition, keyword spotting, image processing - 2D object recognition, face detection, OCR, and natural language processing - document classification, text analysis.
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Specification of controlled education, way of implementation and compensation for absences
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branch RIS , 2 year of study, summer semester, compulsory-optional
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