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This paper presents recent progress in developing speech-to-text (STT) and keyword spotting (KWS) systems for the 2014 IARPA-Babel evaluation. Systems have been developed for the limited language pack condition for four of the five de-velopment languages in this program phase: Assamese, Ben-gali, Haitian Creole and Zulu. The systems have several novel characteristics that support rapid development of KWS systems. On the STT side different acoustic units are explored based on phonemic or graphemic representations, and system combina-tion is used to improve STT performance. The acoustic models are trained on only 10 hours of speech data with manual tran-scriptions, completed with unsupervised training on additional untranscribed data. Both word and subword units (morphologi-cally decomposed, syllables, phonemes) are used for KWS. The KWS systems are based on the multi-hypotheses produced by a consensus network decoding or searching word lattices. The word error rates of the individual STT systems are on the or-der of 50-60%, and the KWS systems obtain Maximum Term Weighted Values ranging from 30-45 % for all keywords (in-vocabulary and out-of-vocabulary (OOV)). Sub-word units are shown to be successful at locating some of the OOV keywords, and system combination improves system performance. Index Terms: STT, KWS, semi-supervised training, lattice, consensus network, sub-word lexical units, Morfessor,
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