Title :
Sentence-Based Sentiment Analysis for Expressive Text-to-Speech
Author :
Trilla, Alexandre ; Alías, Francesc
Author_Institution :
Campus La Salle, Grup de Recerca en Tecnologies Media, Univ. Ramon Llull, Barcelona, Spain
Abstract :
Current research to improve state of the art Text-To-Speech (TTS) synthesis studies both the processing of input text and the ability to render natural expressive speech. Focusing on the former as a front-end task in the production of synthetic speech, this article investigates the proper adaptation of a Sentiment Analysis procedure (positive/neutral/negative) that can then be used as an input feature for expressive speech synthesis. To this end, we evaluate different combinations of textual features and classifiers to determine the most appropriate adaptation procedure. The effectiveness of this scheme for Sentiment Analysis is evaluated using the Semeval 2007 dataset and a Twitter corpus, for their affective nature and their granularity at the sentence level, which is appropriate for an expressive TTS scenario. The experiments conducted validate the proposed procedure with respect to the state of the art for Sentiment Analysis.
Keywords :
feature extraction; signal classification; social networking (online); speech synthesis; Semeval 2007 dataset; TTS; Twitter corpus; expressive text-to-speech synthesis; feature extraction; natural expressive speech; sentence-based sentiment analysis; textual features; Data models; Feature extraction; Speech; Speech processing; Twitter; Vectors; Vocabulary; Expressive text-to-speech (TTS) synthesis; feature engineering; sentiment analysis; text classification;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2012.2217129