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Detecting Stuttering Events in Transcripts of Children's Speech

机译:检测儿童演讲的成绩单中的口吃事件

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Stuttering is a common problem in childhood that may persist into adulthood if not treated in early stages. Techniques from spoken language understanding may be applied to provide automated diagnosis of stuttering from children speech. The main challenges however lie in the lack of training data and the high dimensionality of this data. This study investigates the applicability of machine learning approaches for detecting stuttering events in transcripts. Two machine learning approaches were applied, namely HELM and CRF. The performance of these two approaches are compared, and the effect of data augmentation is examined in both approaches. Experimental results show that CRF outperforms HELM by 2.2% in the baseline experiments. Data augmentation helps improve systems performance, especially for rarely available events. In addition to the annotated augmented data, this study also adds annotated human transcriptions from real stuttered children's speech to help expand the research in this field.
机译:口吃是儿童时期的常见问题,如果未在早期阶段治疗,可能会持续到已成年期。可以应用来自口语语言理解的技术,以提供从儿童言论口吃的自动诊断。然而,主要挑战在于缺乏培训数据和该数据的高度。本研究调查了机器学习方法在转录物中检测口吃事件的适用性。应用两种机器学习方法,即掌舵和CRF。比较这两种方法的性能,并且在两种方法中检查了数据增强的效果。实验结果表明,在基线实验中,CRF优于2.2%的Helm。数据增强有助于提高系统性能,特别是对于很少可用的活动。除了注释的增强数据外,本研究还增加了来自真正的儿童演讲的注释人体转录,以帮助扩大该领域的研究。

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