A robust speaker recognition approach based on model compensation

Yun-Xiao Geng, Wei Wu
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Abstract

Model compensation is an important means to improve the robustness of speaker recognition in noise environment. The robust speaker recognition approach based on model compensation is proposed in this paper. The proposed method combines data reliability estimation and feature components effectiveness estimation, so the errors of the second kind due to the estimation error are reduced greatly. The proposed method estimates the reliability of data in time-frequency domain based on the fuzzy reasoning, and estimates the effectiveness of feature components in the current environment. Then according to the result of estimation, the model compensation in the noise environment is determined based on fuzzy reasoning to improve the robustness of speaker recognition. The experiments compared the proposed method to the missing data and feature selection combined method. The results showed that the proposed method is more effective in different noise environment.
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一种基于模型补偿的鲁棒说话人识别方法
模型补偿是提高噪声环境下说话人识别鲁棒性的重要手段。提出了一种基于模型补偿的鲁棒说话人识别方法。该方法将数据可靠性估计与特征分量有效性估计相结合,大大降低了由于估计误差引起的第二类误差。该方法基于模糊推理在时频域估计数据的可靠性,并在当前环境下估计特征分量的有效性。然后根据估计结果,基于模糊推理确定噪声环境下的模型补偿,提高说话人识别的鲁棒性。实验将该方法与缺失数据和特征选择相结合的方法进行了比较。结果表明,该方法在不同的噪声环境下都具有较好的效果。
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