在非母语儿童中使用多尺度递归网络进行封闭集自动语音识别。

Kodali Radha, Mohan Bansal
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引用次数: 0

摘要

在儿童安保、安全和教育等多种应用中,自动识别说话者可能会使儿童受益。本研究的重点是为非英语母语者开发一个封闭集儿童说话者识别系统,在依赖文本和不依赖文本的语音任务中跟踪说话者的流利程度对系统的影响。多尺度小波散射变换用于弥补最广泛使用的融频倒频谱系数特征提取器造成的高频信息丢失等问题。通过采用小波散射 Bi-LSTM 技术,拟议的大规模说话者识别系统取得了成功。该程序用于识别多个类别中的非母语儿童,准确率、精确率、召回率和 F-measure 的平均值被用来评估模型在与文本无关和与文本有关的任务中的性能,该模型的性能优于现有模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Closed-set automatic speaker identification using multi-scale recurrent networks in non-native children.

Closed-set automatic speaker identification using multi-scale recurrent networks in non-native children.

Closed-set automatic speaker identification using multi-scale recurrent networks in non-native children.

Closed-set automatic speaker identification using multi-scale recurrent networks in non-native children.

Children may benefit from automatic speaker identification in a variety of applications, including child security, safety, and education. The key focus of this study is to develop a closed-set child speaker identification system for non-native speakers of English in both text-dependent and text-independent speech tasks in order to track how the speaker's fluency affects the system. The multi-scale wavelet scattering transform is used to compensate for concerns like the loss of high-frequency information caused by the most widely used mel frequency cepstral coefficients feature extractor. The proposed large-scale speaker identification system succeeds well by employing wavelet scattered Bi-LSTM. While this procedure is used to identify non-native children in multiple classes, average values of accuracy, precision, recall, and F-measure are being used to assess the performance of the model in text-independent and text-dependent tasks, which outperforms the existing models.

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