Improving Automatic Speech Recognition by Classifying Adult and Child Speakers into Separate Groups using Speech Rate Rhythmicity Parameter

S. Shahnawazuddin, Tarun Sai Bandarupalli, R. Chakravarthy
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引用次数: 1

Abstract

When children’s speech is transcribed using acoustic models trained on adults’ data, a severely degraded recognition performance is obtained. Similar degradations are noted on recognizing adults’ speech using an automatic speech recognition (ASR) system trained on children’s speech. This problem can be overcome by using two separate ASR systems for the two groups of speakers. But this approach requires an effective technique to detect whether the given data is from adult or child speaker. In this paper, we present a very simple and novel technique to do the same. The proposed approach is based on speechrate rhythmicity parameter (SRRP). Since the speaking-rates for adults and children differ significantly, the SRRP values are also very different for the two groups of speakers. Hence, by computing the SRRP value for a given speech utterance, it can be easily determined whether it is from adult or child speaker. The corresponding ASR systems can then be used to achieve improved recognition performance. Alternatively, existing techniques for improving children’s speech recognition on adult data trained systems can be directly applied once it is known that the data is from a child speaker. Both these aspects have been experimentally validated in this work.
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基于语速韵律参数的成人和儿童语音自动识别方法研究
当使用成人数据训练的声学模型转录儿童语音时,识别性能会严重下降。在使用儿童语音训练的自动语音识别(ASR)系统识别成人语音时,也注意到类似的退化。这个问题可以通过为两组扬声器使用两个独立的ASR系统来解决。但是这种方法需要一种有效的技术来检测给定的数据是来自成人还是儿童说话者。在本文中,我们提出了一种非常简单和新颖的技术来做到这一点。该方法基于语音速率节律参数(SRRP)。由于成人和儿童的说话率差异很大,两组说话者的SRRP值也有很大差异。因此,通过计算给定语音的SRRP值,可以很容易地确定它是来自成人还是儿童说话者。相应的ASR系统可以用来提高识别性能。或者,一旦知道数据来自儿童说话者,就可以直接应用现有的技术来改善成人数据训练系统上儿童的语音识别。这两个方面在本工作中都得到了实验验证。
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