Speech Sciences (음성과학)
- Volume 15 Issue 4
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- Pages.85-96
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- 2008
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- 1226-5276(pISSN)
Enhancement of Rejection Performance using the PSO-NCM in Noisy Environment
잡음 환경하에서의 PSO-NCM을 이용한 거절기능 성능 향상
- Published : 2008.12.30
Abstract
Automatic speech recognition has severe performance degradation under noisy environments. To cope with the noise problem, many methods have been proposed. Most of them focused on noise-robust features or model adaptation. However, researchers have overlooked utterance verification (UV) under noisy environments. In this paper we discuss UV problems based on the normalized confidence measure. First, we show that UV performance is also degraded in noisy environments with the experiments of an isolated word recognition. Then we observe how the degradation of UV performances is suffered. Based on the UV experiments we propose a modeling method of the statistics of phone confidences using sigmoid functions. For obtaining the parameters of the sigmoidal models, the particle swarm optimization (PSO) is adopted. The proposed method improves 20% rejection performance. Our experimental results show that the PSO-NCM can apply noise speech recognition successfully.