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광대음역 음성에 대한 프레임내 잔차 벡터 양자화에 있어서 모델 복잡도와 성능 사이의 교환 관계 KCI 등재

Trade-off between Model Complexity and Performance in Intra-frame Predictive Vector Quantization of Wideband Speech

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  • URLhttps://db.koreascholar.com/Article/Detail/1087
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로봇학회논문지 (The Journal of Korea Robotics Society)
한국로봇학회 (Korea Robotics Society)
초록

This paper addresses a design issue of “model complexity and performance trade-off” in the application of bandwidth extension (BWE) methods to the intra-frame predictive vector quantization problem of wideband speech. It discusses model-based linear and non-linear prediction methods and presents a comparative study of them in terms of prediction gain. Through experimentation, the general trend of saturation in performance (with the increase in model complexity) is observed. However, specifically, it is also observed that there is no significant difference between HMM and GMM-based BWE functions.

저자
  • 송근배* | Geun-Bae Song
  • 한헌수 | Hernsoo Hahn