A New Corpus of Elderly Japanese Speech for Acoustic Modeling, and a Preliminary Investigation of Dialect-Dependent Speech Recognition

Meiko Fukuda, Ryota Nishimura, H. Nishizaki, Y. Iribe, N. Kitaoka
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引用次数: 7

Abstract

We have constructed a new speech data corpus consisting of the utterances of 221 elderly Japanese people (average age: 79.2) with the aim of improving the accuracy of automatic speech recognition (ASR) for the elderly. ASR is a beneficial modality for people with impaired vision or limited hand movement, including the elderly. However, speech recognition systems using standard recognition models, especially acoustic models, have been unable to achieve satisfactory performance for the elderly. Thus, creating more accurate acoustic models of the speech of elderly users is essential for improving speech recognition for the elderly. Using our new corpus, which includes the speech of elderly people living in three regions of Japan, we conducted speech recognition experiments using a variety of DNN-HNN acoustic models. As training data for our acoustic models, we examined whether a standard adult Japanese speech corpus (JNAS), an elderly speech corpus (S-JNAS) or a spontaneous speech corpus (CSJ) was most suitable, and whether or not adaptation to the dialect of each region improved recognition results. We adapted each of our three acoustic models to all of our speech data, and then re-adapt them using speech from each region. Without adaptation, the best recognition results were obtained when using the S-JNAS trained acoustic models (total corpus: 21.85% Word Error Rate). However, after adaptation of our acoustic models to our entire corpus, the CSJ trained models achieved the lowest WERs (entire corpus: 17.42%). Moreover, after readaptation to each regional dialect, the CSJ trained acoustic model with adaptation to regional speech data showed tendencies of improved recognition rates. We plan to collect more utterances from all over Japan, so that our corpus can be used as a key resource for elderly speech recognition in Japanese. We also hope to achieve further improvement in recognition performance for elderly speech.
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一种新的老年日语语音语料库声学建模及方言语音识别的初步研究
为了提高老年人自动语音识别(ASR)的准确率,我们构建了一个由221名日本老年人(平均年龄79.2岁)的话语组成的新的语音数据语料库。对于视力受损或手部运动受限的人,包括老年人,ASR是一种有益的方式。然而,使用标准识别模型的语音识别系统,特别是声学模型,已经无法达到令人满意的老年人识别性能。因此,建立更准确的老年用户语音声学模型对于提高老年人语音识别水平至关重要。使用我们的新语料库,其中包括生活在日本三个地区的老年人的语音,我们使用各种DNN-HNN声学模型进行了语音识别实验。作为声学模型的训练数据,我们研究了标准成人日语语音语料库(JNAS)、老年人语音语料库(S-JNAS)和自发语音语料库(CSJ)是否最合适,以及对每个地区方言的适应是否改善了识别结果。我们根据所有的语音数据调整了我们的三个声学模型,然后使用来自每个地区的语音重新调整它们。在不进行自适应的情况下,使用S-JNAS训练的声学模型(总语料库错误率21.85%)获得了最好的识别效果。然而,在我们的声学模型适应我们的整个语料库之后,CSJ训练的模型获得了最低的wer(整个语料库:17.42%)。此外,CSJ训练的适应区域语音数据的声学模型在重新适应各区域方言后,识别率有提高的趋势。我们计划从全日本收集更多的话语,使我们的语料库可以作为老年人日语语音识别的关键资源。我们也希望在老年人语音的识别性能上有进一步的提升。
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