Title :
Automatic indexing of lecture presentations using unsupervised learning of presumed discourse markers
Author :
Kawahara, Tatsuya ; Hasegawa, Masahiro ; Shitaoka, Kazuya ; Kitade, Tasuku ; Nanjo, Hiroaki
Author_Institution :
Sch. of Informatics, Kyoto Univ., Japan
fDate :
7/1/2004 12:00:00 AM
Abstract :
A new method for automatic detection of section boundaries and extraction of key sentences from lecture audio archives is proposed. The method makes use of ´discourse markers´ (DMs), which are characteristic expressions used in initial utterances of sections, together with pause and language model information. The DMs are derived in a totally unsupervised manner based on word statistics. An experimental evaluation using the Corpus of Spontaneous Japanese (CSJ) demonstrates that the proposed method provides better indexing of section boundaries compared with a simple baseline method using pause information only, and that it is robust against speech recognition errors. The method is also applied to extraction of key sentences that can index the section topics. The statistics of the presumed DMs are used to define the importance of sentences, which favors potentially section-initial ones. The measure is also combined with the conventional tf-idf measure based on content words. Experimental results confirm the effectiveness of using the DMs in combination with the keyword-based method. The paper also describes a statistical framework for transforming raw speech transcriptions into the document style for defining appropriate sentence units and improving readability.
Keywords :
audio signal processing; indexing; natural languages; speech recognition; statistical analysis; unsupervised learning; word processing; TF-IDF measure; automatic indexing; key sentence extraction; keyword-based method; language model information; lecture audio archives; pause model information; presumed discourse markers; raw speech transcriptions; section boundaries automatic detection; simple baseline method; speech recognition error; spontaneous Japanese corpus; unsupervised learning; word statistics; Broadcasting; Data mining; Machine assisted indexing; Natural languages; Robustness; Speech recognition; Statistics; Unsupervised learning; Vocabulary; Voice mail;
Journal_Title :
Speech and Audio Processing, IEEE Transactions on
DOI :
10.1109/TSA.2004.828701