Authors
Shahram Kalantari, David Dean, Sridha Sridharan, Roy Wallace
Publication date
2014/9/1
Conference
Signal Processing Conference (EUSIPCO), 2014 Proceedings of the 22nd European
Pages
949-953
Publisher
IEEE
Description
This paper investigates the effect of topic dependent language models (TDLM) on phonetic spoken term detection (STD) using dynamic match lattice spotting (DMLS). Phonetic STD consists of two steps: indexing and search. The accuracy of indexing audio segments into phone sequences using phone recognition methods directly affects the accuracy of the final STD system. If the topic of a document in known, recognizing the spoken words and indexing them to an intermediate representation is an easier task and consequently, detecting a search word in it will be more accurate and robust. In this paper, we propose the use of TDLMs in the indexing stage to improve the accuracy of STD in situations where the topic of the audio document is known in advance. It is shown that using TDLMs instead of the traditional general language model (GLM) improves STD performance according to figure of merit (FOM) criteria.
Total citations
2014201520162017131
Scholar articles
S Kalantari, D Dean, S Sridharan, R Wallace - 2014 22nd European Signal Processing Conference …, 2014