首页> 外文会议>Intelligent Robots and Systems, 2005. (IROS 2005). 2005 IEEE/RSJ International Conference on >Noise-robust hands-free speech recognition based on spatial subtraction array and known noise superimposition
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Noise-robust hands-free speech recognition based on spatial subtraction array and known noise superimposition

机译:基于空间减法阵列和已知噪声叠加的鲁棒免提语音识别

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We propose a spatial subtraction array (SSA) and known noise superimposition to achieve a noise-robust hands-free speech recognition which can be used in human-robot interaction. In the proposed SSA, noise reduction is achieved by subtracting the estimated noise power spectrum from the target speech power spectrum to be enhanced in the mel-scale filter bank domain. This offers a realization of error-robust spatial spectral subtraction with few computational complexities. In addition, we introduce known noise superimposition technique in the mel-scale filter bank domain, and utilize the matched acoustic model for the known noise. This can compensate the acoustic model mismatch and mask the residual noise component in SSA. The experimental results obtained under a real environment reveal that word accuracy of the proposed method is greater than that of the conventional method even when the target user moves between -10 and +10 degrees around the microphone array.
机译:我们提出了一种空间减法阵列(SSA)和已知的噪声叠加,以实现可在人机交互中使用的鲁棒的免提语音识别。在提出的SSA中,通过从目标语音功率谱中减去估计的噪声功率谱来实现降噪,该目标语音功率谱将在梅尔尺度滤波器组域中增强。这提供了具有很少的计算复杂度的误差鲁棒的空间谱减法的实现。此外,我们在梅尔级滤波器组域中引入了已知的噪声叠加技术,并对已知噪声利用了匹配的声学模型。这可以补偿声学模型不匹配并掩盖SSA中的残留噪声分量。在真实环境下获得的实验结果表明,即使目标用户围绕麦克风阵列在-10度到+10度之间移动,该方法的字精度也比传统方法高。

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