Johannes Wagner


2022

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Nkululeko: A Tool For Rapid Speaker Characteristics Detection
Felix Burkhardt | Johannes Wagner | Hagen Wierstorf | Florian Eyben | Björn Schuller
Proceedings of the Thirteenth Language Resources and Evaluation Conference

We present advancements with a software tool called Nkululeko, that lets users perform (semi-) supervised machine learning experiments in the speaker characteristics domain. It is based on audformat, a format for speech database metadata description. Due to an interface based on configurable templates, it supports best practise and very fast setup of experiments without the need to be proficient in the underlying language: Python. The paper explains the handling of Nkululeko and presents two typical experiments: comparing the expert acoustic features with artificial neural net embeddings for emotion classification and speaker age regression.

2010

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The AVLaughterCycle Database
Jérôme Urbain | Elisabetta Bevacqua | Thierry Dutoit | Alexis Moinet | Radoslaw Niewiadomski | Catherine Pelachaud | Benjamin Picart | Joëlle Tilmanne | Johannes Wagner
Proceedings of the Seventh International Conference on Language Resources and Evaluation (LREC'10)

This paper presents the large audiovisual laughter database recorded as part of the AVLaughterCycle project held during the eNTERFACE’09 Workshop in Genova. 24 subjects participated. The freely available database includes audio signal and video recordings as well as facial motion tracking, thanks to markers placed on the subjects’ face. Annotations of the recordings, focusing on laughter description, are also provided and exhibited in this paper. In total, the corpus contains more than 1000 spontaneous laughs and 27 acted laughs. The laughter utterances are highly variable: the laughter duration ranges from 250ms to 82s and the sounds cover voiced vowels, breath-like expirations, hum-, hiccup- or grunt-like sounds, etc. However, as the subjects had no one to interact with, the database contains very few speech-laughs. Acted laughs tend to be longer than spontaneous ones and are more often composed of voiced vowels. The database can be useful for automatic laughter processing or cognitive science works. For the AVLaughterCycle project, it has served to animate a laughing virtual agent with an output laugh linked to the conversational partner’s input laugh.