Error Analysis of Single Speaker Urdu Speech Recognition System
نویسندگان
چکیده
Speaker independent, spontaneous and continuous speech recognition system (ASR) can be integrated to other technologies like mobile to create an interface between technology and illiterate people so that they can use modern technologies. One of the major hurdles in such ASR is unacceptable word error rate. The paper explores the possibility of analyzing the Urdu speech corpus based on recognition results to improve word error rate (WER).
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