Single-channel talker localization based on separation of the acoustic transfer function using hidden Markov model and its classification
スポンサーリンク
概要
- 論文の詳細を見る
This paper presents a talker localization method using only a single microphone, where phoneme hidden Markov models (HMMs) of clean speech are introduced to estimate the acoustic transfer function from the user's position. In our previous work, we proposed a Gaussian mixture model (GMM) separation for estimation of the user's position, where the observed speech is separated into the acoustic transfer function and the clean speech GMM. In this paper, we propose an improved method using phoneme HMMs for separation of the acoustic transfer function. This method expresses the speech signal as a network of phoneme HMMs, while our previous method expresses it as a GMM without considering the temporal phonetic changes of the speech signal. The support vector machine (SVM) for classifying the user's position is trained using the separated frame sequences of the acoustic transfer function. Then, for each test data set, the acoustic transfer function is separated, and the position is estimated by discriminating the acoustic transfer function. The effectiveness of this method has been confirmed by talker localization experiments performed in a room environment.
著者
-
Takiguchi Tetsuya
Graduate School Of Engineering Kobe University
-
Ariki Yasuo
Graduate School Of Science And Technology Kobe University
-
Takashima Ryoichi
Graduate School of System Informatics, Kobe University
-
Ariki Yasuo
Graduate School of System Informatics, Kobe University
関連論文
- Language Modeling Using PLSA-Based Topic HMM
- NetTv: cross-platform video retrieval and QA system with speech interface (音声)
- NetTv: cross-platform video retrieval and QA system with speech interface (福祉情報工学)
- Single-channel talker localization based on separation of the acoustic transfer function using hidden Markov model and its classification