siniscalchi09@interspeech_2009@ISCA

Total: 1

#1 Exploring universal attribute characterization of spoken languages for spoken language recognition [PDF] [Copy] [Kimi1]

Authors: Sabato Marco Siniscalchi ; Jeremy Reed ; Torbjørn Svendsen ; Chin-Hui Lee

We propose a novel universal acoustic characterization approach to spoken language identification (LID), in which any spoken language is described with a common set of fundamental units defined “universally.” Specifically, manner and place of articulation form this unit inventory and are used to build a set of universal attribute models with data-driven techniques. Using the vector space modeling approaches to LID a spoken utterance is first decoded into a sequence of attributes. Then, a feature vector consisting of co-occurrence statistics of attribute units is created, and the final LID decision is implemented with a set of vector space language classifiers. Although the present study is just in its preliminary stage, promising results comparable to acoustically rich phone-based LID systems have already been obtained on the NIST 2003 LID task. The results provide clear insight for further performance improvements and encourage a continuing exploration of the proposed framework.