2022
DOI: 10.3390/app12147202
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The Potential of Speech as the Calibration Sound for Level Calibration of Non-Laboratory Listening Test Setups

Abstract: The pandemic of COVID-19 and the resulting countermeasures have made it difficult or impossible to perform listening tests in controlled laboratory environments. This paper examines the possibility of using speech for level calibration of sound reproduction systems used in listening tests performed in non-laboratory conditions, i.e., when such tests are distributed through the means of electronic communication and performed in a home environment. Moreover, a larger pool of potential test subjects can be reache… Show more

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Cited by 4 publications
(4 citation statements)
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“…How to treat the uncalibrated mobile device and additional hardware in non-laboratory setups remains a challenge. Kisić et al (2022), for instance, proposed that human speech might be an appropriate and stable test signal for microphone calibration while Scharf et al (2023) considered the whistling sound of a 0.33 l beer bottle as a rough calibration signal.…”
Section: Limitations and Outlookmentioning
confidence: 99%
“…How to treat the uncalibrated mobile device and additional hardware in non-laboratory setups remains a challenge. Kisić et al (2022), for instance, proposed that human speech might be an appropriate and stable test signal for microphone calibration while Scharf et al (2023) considered the whistling sound of a 0.33 l beer bottle as a rough calibration signal.…”
Section: Limitations and Outlookmentioning
confidence: 99%
“…In reality, the speech signal is way more complicated than just simple Lombard vs. non-Lombard differentiation. One may even argue about the definition of “normal” speech [ 22 ]. For example, silence or unvoiced fragments may occur, or there may be a mixture of speech, etc.…”
Section: Lombard Speech Detection Processmentioning
confidence: 99%
“…For example, silence or unvoiced fragments may occur, or there may be a mixture of speech, etc. Moreover, rarely is it known whether recordings are collected in a controlled environment [ 22 ]. Therefore, the detection is always an approximation of the speech type; however, incorporating an averaging procedure allows for building a near real time Lombard speech detection process.…”
Section: Lombard Speech Detection Processmentioning
confidence: 99%
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