CONF
Motlicek_MAVEBA2019_2019/IDIAP
AM-FM DECOMPOSITION OF SPEECH SIGNAL: APPLICATIONS FOR SPEECH PRIVACY AND DIAGNOSIS
Motlicek, Petr
Hermansky, Hynek
Madikeri, Srikanth
Prasad, Amrutha
Ganapathy, Sriram
EXTERNAL
https://publications.idiap.ch/attachments/papers/2020/Motlicek_MAVEBA2019_2019.pdf
PUBLIC
https://publications.idiap.ch/index.php/publications/showcite/Motlicek_Idiap-RR-01-2020
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Universita Degli Studi Firenze - 11th International workshop on Models and Analysis of Vocal Emissions for Biomedical Applications
Firenze, Italy
2019
http://maveba.dinfo.unifi.it/
URL
Although current trends in speech processing consider deep learning through data-driven technologies, many potential applications exhibit lack of training or development data. Therefore, considerably light signal processing techniques are still of interest. This paper describes an efficient technique for decomposing the AM and FM components of the speech signal, which is not based on frame-by-frame short-time analysis of the signal. Instead, we estimate all-pole models of frequency-localized Hilbert envelopes of large segments of speech signal at different frequencies. The technique on decomposition of speech signal into AM and FM
components appears to be of interest in voice studies benefiting from alleviation of the message-bearing components of speech (e.g. security oriented applications such as speaker recognition, or speech diagnosis often relying on spectra averaging to discard the content of the speech). Similarly, discarding speaker information while preserving the message in the speech is of interest for privacy-oriented applications. experimental results on automatic speech and speaker recognition tasks clearly show that the AM component preserves the content (message) of the speech, while the FM component carries the information related to the speaker.
REPORT
Motlicek_Idiap-RR-01-2020/IDIAP
AM-FM DECOMPOSITION OF SPEECH SIGNAL: APPLICATIONS FOR SPEECH PRIVACY AND DIAGNOSIS
Motlicek, Petr
Hermansky, Hynek
Madikeri, Srikanth
Prasad, Amrutha
Ganapathy, Sriram
AM
Automatic Speech Recognition
FM
Linear prediction
speaker recognition
EXTERNAL
https://publications.idiap.ch/attachments/reports/2019/Motlicek_Idiap-RR-01-2020.pdf
PUBLIC
Idiap-RR-01-2020
2020
Idiap
Rue Marconi 19
January 2020
Although current trends in speech processing consider deep learning through data-driven technologies, many potential applications exhibit lack of training or development data. Therefore, considerably light signal processing techniques are still of interest. This paper describes an efficient technique for decomposing the AM and FM components of the speech signal, which is not based on frame-by-frame short-time analysis of the signal. Instead, we estimate all-pole models of frequency-localized Hilbert envelopes of large segments of speech signal at different frequencies. The technique on decomposition of speech signal into AM and FM components appears to be of interest in voice studies benefiting from alleviation of the message-bearing components of speech (e.g. security oriented applications such as speaker recognition, or speech diagnosis often relying on spectra averaging to discard the content of the speech). Similarly, discarding speaker information while preserving the message in the speech is of interest for privacy-oriented applications. Experimental results on automatic speech and speaker recognition tasks clearly show that the AM component preserves the content (message) of the speech, while the FM component carries the information related to the speaker.