综合运用双向LSTM和基于计算机的认知注意对言语口吃进行分类

Krishna Basak, Vineet Sharma, Sarangh Ramesh Kv, Nilamadhab Mishra
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引用次数: 0

摘要

流利说话的能力通常受到口吃的影响,口吃是一种神经发育性语言障碍,言语的流畅被无意识的停顿和重复的声音打断。通过识别口吃的类型并提供适当的言语指导,口吃可以治愈。通过计算机辅助过程,包括深度学习模型,已经采取了许多方法来对口吃进行分类。但大多数作品严重依赖于人工提取大量的音频特征。此外,许多过去的作品使用的UCLASS数据集更老,质量也差得多。本文提出了一种基于双向LSTM和注意力的深度学习模型,仅利用梅尔谱音频特征对五种类型的口吃事件进行分类,即块、延长、单词重复、声音重复和叹词。该模型在SEP-28k和FluencyBank数据集的最新注释上进行了训练和测试,以评估性能,并达到了75%的总体准确率。
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An Integrated Usage of Bidirectional LSTM and Computer-based Cognitive Attention to Categorize Speech Stutters
The capacity to talk smoothly is typically affected by stuttering, a neuro-developmental speech disorder where the flow of speech is disrupted by involuntary pauses and repetition of sounds. Stuttering can be cured by identifying the type of stutter and providing proper speech guidance. Many approaches have been taken to classify stuttered speech via a computer aided process including Deep Learning models. But most of the works rely heavily on a large number of audio features to be extracted manually. Also, many past works use the UCLASS dataset that is much older and lacks in quality. This paper proposes a Deep Learning model using Bidirectional LSTM and Attention to classify five types of stuttering events – Block, Prolongation, Word Repetition, Sound Repetition and Interjection, by utilizing only Mel-spectrogram audio feature. The model is trained and tested on the SEP-28k and latest annotations of the FluencyBank dataset to evaluate the performance and achieves an overall 75% accuracy.
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