REPORT Motlicek_Idiap-RR-21-2014/IDIAP Development of Bilingual ASR System for MediaParl Corpus Motlicek, Petr Imseng, David Cernak, Milos Kim, Namhoon lan- guage identification Multilingual automatic speech recognition non-native speech EXTERNAL PUBLIC Idiap-RR-21-2014 2014 Idiap Rue Marconi 19 December 2014 The development of an Automatic Speech Recognition (ASR) system for the bilingual MediaParl corpus is challenging for several reasons: (1) reverberant recordings, (2) accented speech, and (3) no prior information about the language. In that context, we employ frequency domain linear prediction-based (FDLP) features to reduce the effect of reverberation, exploit bilingual deep neural networks applied in Tandem and hybrid acoustic modeling approaches to significantly improve ASR for accented speech and develop a fully bilingual ASR system using entropy-based decoding-graph selection. Our experiments indicate that the proposed bilingual ASR system performs similar to a language-specific ASR system if approximately five seconds of speech are available.