2022
DOI: 10.3390/math11010169
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Acoustic Gender and Age Classification as an Aid to Human–Computer Interaction in a Smart Home Environment

Abstract: The advanced smart home environment presents an important trend for the future of human wellbeing. One of the prerequisites for applying its rich functionality is the ability to differentiate between various user categories, such as gender, age, speakers, etc. We propose a model for an efficient acoustic gender and age classification system for human–computer interaction in a smart home. The objective was to improve acoustic classification without using high-complexity feature extraction. This was realized wit… Show more

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Cited by 6 publications
(2 citation statements)
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“…Finally, the gender perspective introduced in this research offers a novel and enriched dimension to blockchain studies within the HCI domain. While previous works such as Fröhlich et al (2022) have provided systematic reviews of cryptocurrency and blockchain in HCI, and Vlaj and Zgank (2022) have explored gender classification in HCI, this study uniquely identifies gender‐specific responsiveness to transparency and immutability. It paves the way for more nuanced, gender‐sensitive theorizations and designs, aligning with broader efforts to include diverse perspectives in technological interactions (e.g., Al‐Hunaiyyan et al, 2021).…”
Section: Discussionmentioning
confidence: 93%
“…Finally, the gender perspective introduced in this research offers a novel and enriched dimension to blockchain studies within the HCI domain. While previous works such as Fröhlich et al (2022) have provided systematic reviews of cryptocurrency and blockchain in HCI, and Vlaj and Zgank (2022) have explored gender classification in HCI, this study uniquely identifies gender‐specific responsiveness to transparency and immutability. It paves the way for more nuanced, gender‐sensitive theorizations and designs, aligning with broader efforts to include diverse perspectives in technological interactions (e.g., Al‐Hunaiyyan et al, 2021).…”
Section: Discussionmentioning
confidence: 93%
“…Fonetika in fonologija sta precej specifičen uporabnik, ki bolj kot same korpuse potrebujeta določene jezikovnotehnološke servise za avtomatsko predpripravo korpusnih podatkov za analizo, kot jih ponuja na primer WebMAUS. 9 Na drugi strani so velik in zelo aktiven uporabnik govornih korpusov tehnologije: avtomatsko razpoznavanje govora (Gril idr., 2021), klasifikacija (Vlaj in Žgank, 2023) in prepoznavanje govorcev (Ljubešić in Rupnik, 2022), procesiranje govorjenega jezika (Lee idr., 2021), govorjeni sistemi dialoga (Chen idr., 2021) itd. Med razpoložljivimi govornimi korpusi je poleg referenčnih kar nekaj korpusov specializiranih, pri čemer prevladujejo korpusi parlamentarnega govora (Ogrodniczuk idr., 2020) in govor v akademskem okolju (Verdonik, 2018; korpus MICASE 10 ), verjetno predvsem zaradi lahke dostopnosti tovrstnih podatkov v primerjavi z drugimi področji.…”
Section: Uporabnikiunclassified