Automatic speech recognition: a statistical affair
نویسنده
چکیده
ost of us frequently use speech to communicate with other people. Most of us will also communicate regularly with a computer, but rarely by means of speech. The computer input usually comes from a keyboard or a mouse, and the output goes to the monitor or a printer. Still, in many cases the communication with a computer would be facilitated if speech could be used, if only because most people speak faster than they type. A necessary requirement for this is that the computer is able to recognise our speech: automatic speech recognition (ASR).
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تاریخ انتشار 1999