Speech and Speaker Recognition Application on the TMS320C541 board
نویسندگان
چکیده
1 Facultatea de Electronic Telecomunica ii i Tehnologia Informa iei, Catedra Comunica ii, str. Bari iu 26-28, 400027 Cluj-Napoca, [email protected] Abstract – The paper presents a speech and speaker recognition application developed on the EVM C541 board using the CCS. The application represents the implementation of the TESPAR coding method on a DSP support. The TESPAR alphabet for the coding process was obtained formerly. The speech/speaker information contained in the utterances is extracted by TESPAR coder and provides the TESPAR A matrices. For the recognition decision, the distances among the TESPAR A test matrix and the TESPAR A reference matrices are computed. The results of the experiments prove the high capabilities of the TESPAR method in the classification tasks.
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