Performance analysis of several pitch detection algorithms on simulated and real noisy speech data

D. Jouvet, Y. Laprie
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引用次数: 28

Abstract

This paper analyses the performance of a large bunch of pitch detection algorithms on clean and noisy speech data. Two sets of noisy speech data are considered. One corresponds to simulated noisy data, and is obtained by adding several types of noise signals at various levels on the clean speech data of the Pitch-Tracking Database from Graz University of Technology (PTDB-TUG). The second one, SPEECON, was recorded in several different acoustic environments. The paper discusses the performance of pitch detection algorithms on the simulated noisy data, and on the real noisy data of the SPEECON corpus. Also, an analysis of the performance of the best pitch detection algorithm with respect to estimated signal-to-noise ratio (SNR) shows that very similar performance is observed on the real noisy data recorded in public places, and on the clean data with addition of babble noise.
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几种基音检测算法在模拟和真实噪声语音数据上的性能分析
本文分析了大量的基音检测算法在清洁和噪声语音数据上的性能。考虑了两组有噪声的语音数据。其中一个对应于模拟噪声数据,是通过在格拉茨工业大学(PTDB-TUG)的Pitch-Tracking Database的干净语音数据上添加不同级别的几种类型的噪声信号得到的。第二个,speech,是在几个不同的声学环境中录制的。本文讨论了基音检测算法在模拟噪声数据和真实语音语料库噪声数据上的性能。对最佳基音检测算法的估计信噪比(SNR)性能进行了分析,结果表明,在公共场所记录的真实噪声数据和添加了呀啊语噪声的干净数据上,其性能非常相似。
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