Endnote export

 

%T Speaker trait characterization in web videos: Uniting speech, language, and facial features
%A Weninger, Felix
%A Wagner, Claudia
%A Wöllmer, Martin
%A Schuller, Björn
%A Morency, Louis-Philipp
%P 3647-3651
%D 2013
%I IEEE
%K speaker classification; computational paralinguistics; multi-modal fusion; Linguistic Inquiry and Word Count; LIWC
%@ 2379-190X
%@ 978-1-4799-0356-6
%> https://nbn-resolving.org/urn:nbn:de:0168-ssoar-66084-2
%X We present a multi-modal approach to speaker characterization using
acoustic, visual and linguistic features. Full realism is provided by
evaluation on a database of real-life web videos and automatic feature
extraction including face and eye detection, and automatic speech
recognition. Different segmentations are evaluated for the audio and
video streams, and the statistical relevance of Linguistic Inquiry and
Word Count (LIWC) features is confirmed. In the result, late multimodal
fusion delivers 73, 92 and 73% average recall in binary age,
gender and race classification on unseen test subjects, outperforming
the best single modalities for age and race.
%C USA
%G en
%9 Konferenzbeitrag
%W GESIS - http://www.gesis.org
%~ SSOAR - http://www.ssoar.info