Title :
An automatic non-native speaker recognition system
Author :
Bozhao Tan ; Qi Li ; Foresta, Robert
Author_Institution :
Li Creative Technol., Inc., Florham Park, NJ, USA
Abstract :
Identification of non-native personnel is a critical piece of information for making crucial on-the-spot decisions for security purposes. Identification of a non-native speaker is often readily apparent in normal conversation with a native speaker through speech content and accent. Such identification which requires familiarity with language nuances may not be possible for a non-native interrogator or intelligence analyst or when conversing or listening through a machine language translator. Developing an automatic system to identify speakers as native or non-native, as well as their native language, including dialect, within input audio streams, is the major goal of this project. Such a system may be used alone or with other downstream applications such as machine language translation systems. In this paper we present four approaches to identify native and non-native speakers as a binary recognition problem. The approaches can be further categorized into phonetic-based approaches and non-phonetic-based approaches. These approaches were tested on two separate databases, including text-dependent read speech and text-independent spontaneous speech. The results show that our system is competitive in comparison with other published, state-of-the-art non-native speaker recognition systems. Key metrics for automated non-native recognition systems include: 1) positive identification rates, 2) false alarm/identification rates, and 3) length of captured speech sample required to reach a decision.
Keywords :
language translation; natural language processing; speaker recognition; binary recognition problem; machine language translator; nonnative personnel identification; nonnative speaker recognition system; phonetic-based approach; text-dependent read speech; text-independent spontaneous speech; Artificial neural networks; Classification algorithms; Databases; Hidden Markov models; Speaker recognition; Speech; Training; Gaussian Mixture Model; Hidden Markov Model; accent recognition; discriminative training; fusion; neural network; non-native; speaker recognition;
Conference_Titel :
Technologies for Homeland Security (HST), 2010 IEEE International Conference on
Conference_Location :
Waltham, MA
Print_ISBN :
978-1-4244-6047-2
DOI :
10.1109/THS.2010.5655088