Efficient Collection and Representation of Preverbal Data in Typical and Atypical Development

2020 | journal article; research paper. A publication with affiliation to the University of Göttingen.

Jump to: Cite & Linked | Documents & Media | Details | Version history

Cite this publication

​Efficient Collection and Representation of Preverbal Data in Typical and Atypical Development​
Pokorny, F. B.; Bartl-Pokorny, K. D.; Zhang, D. ; Marschik, P. B. ; Schuller, D. & Schuller, B. W.​ (2020) 
Journal of Nonverbal Behavior,.​ DOI: https://doi.org/10.1007/s10919-020-00332-4 

Documents & Media

document.pdf722.06 kBAdobe PDF

License

GRO License GRO License

Details

Authors
Pokorny, Florian B.; Bartl-Pokorny, Katrin D.; Zhang, Dajie ; Marschik, Peter B. ; Schuller, Dagmar; Schuller, Björn W.
Abstract
Human preverbal development refers to the period of steadily increasing vocal capacities until the emergence of a child’s first meaningful words. Over the last decades, research has intensively focused on preverbal behavior in typical development. Preverbal vocal patterns have been phonetically classified and acoustically characterized. More recently, specific preverbal phenomena were discussed to play a role as early indicators of atypical development. Recent advancements in audio signal processing and machine learning have allowed for novel approaches in preverbal behavior analysis including automatic vocalization-based differentiation of typically and atypically developing individuals. In this paper, we give a methodological overview of current strategies for collecting and acoustically representing preverbal data for intelligent audio analysis paradigms. Efficiency in the context of data collection and data representation is discussed. Following current research trends, we set a special focus on challenges that arise when dealing with preverbal data of individuals with late detected developmental disorders, such as autism spectrum disorder or Rett syndrome.
Issue Date
2020
Journal
Journal of Nonverbal Behavior 
ISSN
0191-5886; 1573-3653
Language
English

Reference

Citations


Social Media