Survey on biomarkers in human vocalizations
- URL: http://arxiv.org/abs/2407.17505v2
- Date: Thu, 8 Aug 2024 20:22:10 GMT
- Title: Survey on biomarkers in human vocalizations
- Authors: Aki Härmä, Bert den Brinker, Ulf Grossekathofer, Okke Ouweltjes, Srikanth Nallanthighal, Sidharth Abrol, Vibhu Sharma,
- Abstract summary: Survey paper proposes a general taxonomy of the technologies and a broad overview of current progress and challenges.
Vocal biomarkers are often secondary measures that are approximating a signal of another sensor or identifying an underlying mental, cognitive, or physiological state.
- Score: 4.697541589139523
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent years has witnessed an increase in technologies that use speech for the sensing of the health of the talker. This survey paper proposes a general taxonomy of the technologies and a broad overview of current progress and challenges. Vocal biomarkers are often secondary measures that are approximating a signal of another sensor or identifying an underlying mental, cognitive, or physiological state. Their measurement involve disturbances and uncertainties that may be considered as noise sources and the biomarkers are coarsely qualified in terms of the various sources of noise involved in their determination. While in some proposed biomarkers the error levels seem high, there are vocal biomarkers where the errors are expected to be low and thus are more likely to qualify as candidates for adoption in healthcare applications.
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