Description: Hours: Three hours lecture in the lab per week. Prerequisites: Admission to the Computer Science or Mathematics Graduate Program New and emerging applications of pattern recognition (PR) such as data mining, web searching, multimedia data retrieval, face recognition, and cursive handwriting recognition - require robust and efficient techniques. Statistical decision making and estimation are fundamental to the study of PR. Pattern content is analyzed using feature extraction and classification. The principles and concepts underpinning PR, and the evolution, utility and limitations of various techniques (including neural networks) will be studied. Programming exercises will be used to implement examples and applications of PR processes, and their performance on a variety of diverse examples will be studied.
Units: 3.00
Grading: Letter Grade
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Session Section Class # Type Days Time Location Instructor Course Details [Key]
E1 1 2512 LEC ARR Online William Barber Course open Course Details Asynchronous Online Course Extended University Course

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Course open= Course Open Course Closed= Course Closed Course Details= Course Details
Textbook Info= Textbook Info General Education Class= General Education Extended University Class= Extended University
Service Learning Class= Service Learning In Person Class= In Person Asynchronous Online Class= Asynchronous Online
Synchronous Online Class= Synchronous Online Synchronous/Asynchronous Class= Synchronous/Asynchronous Blended Class= Blended
Synchronous/Asynchronous Class= No Cost Course Materials Low Cost Course Materials= Low Cost Course Materials
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