Pinto, Joel PraveenLovitt, AndrewHermansky, Hynek2010-02-112010-02-112010-02-11200710.21437/Interspeech.2007-507https://infoscience.epfl.ch/handle/20.500.14299/47055We propose a technique for generating alternative models for keywords in a hybrid hidden Markov model - artificial neural network (HMM-ANN) keyword spotting paradigm. Given a base pronunciation for a keyword from the lookup dictionary, our algorithm generates a new model for a keyword which takes into account the systematic errors made by the neural network and avoiding those models that can be confused with other words in the language. The new keyword model improves the keyword detection rate while minimally increasing the number of false alarms.Exploiting Phoneme Similarities in Hybrid HMM-ANN Keyword Spottingtext::conference output::conference proceedings::conference paper