Classifier combination in speech recognition
نویسنده
چکیده
In this course project, I will attempt to write up a survey of combination methods used in speech recognition. I will attempt to evaluate them with a more general view of classifier combining, and also consider the usability of some adaptive combination methods that have used in my previous research within the domain of speech recognition. Thus the project consists of two parts, a survey into existing research, and some speculation on my part, based on previous experiences, but leaving out any practical experimentation as that would probably prove to simply take too much time and effort for the scope of a course project.
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