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Performance comparison of new endpoint detection method in noise environments

机译:噪声环境下新型端点检测方法的性能比较

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Endpoint detection is the most important step of speech recognition. A good endpoint detection method can not only increase the success rate of speech recognition but also save the data storage space and reduce data processing time. This paper tests a new endpoint detection method based on linear prediction coefficient and makes performance comparison with methods based on short-time energy, short-time cross-zero and short-time autocorrelation in noise environments (including laboratory environment, server side environment, inner vehicle environment at idle speed). The result shows that new endpoint detection method based on linear prediction coefficient has good robustness on the starting point detection of speech signal.
机译:端点检测是语音识别的最重要步骤。好的端点检测方法不仅可以提高语音识别的成功率,而且可以节省数据存储空间,减少数据处理时间。本文测试了一种新的基于线性预测系数的端点检测方法,并与基于短时能量,短时零交叉和短时自相关的方法在噪声环境(包括实验室环境,服务器端环境,内部环境)中的性能进行了比较。怠速时的车辆环境)。结果表明,基于线性预测系数的端点检测新方法对语音信号的起点检测具有良好的鲁棒性。

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