Machine Learning Based Automated Speech Dialog Analysis Of Autistic Children

Anjana Wijesinghe, Pradeepa Samarasinghe, S. Seneviratne, P. Yogarajah, K. Pulasinghe
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引用次数: 7

Abstract

Children with autism spectrum disorder (ASD) have altered behaviors in communication, social interaction, and activity, out of which communication has been the most prominent disorder among many. Despite the recent technological advances, limited attention has been given to screening and diagnosing ASD by identifying the speech deficiencies (SD) of autistic children at early stages. This research focuses on bridging the gap in ASD screening by developing an automated system to distinguish autistic traits through speech analysis. Data was collected from 40 participants for the initial analysis and recordings were obtained from 17 participants. We considered a three-stage processing system; first stage utilizes thresholding for silence detection and Vocal Activity Detection for vocal isolation, second stage adopts machine learning technique neural network with frequency domain representations in developing a reliant utterance classifier for the isolated vocals and stage three also adopts machine learning technique neural network in recognizing autistic traits in speech patterns of the classified utterances. The results are promising in identifying SD of autistic children with the utterance classifier having 78% accuracy and pattern recognition 72% accuracy.
基于机器学习的自闭症儿童自动语音对话分析
患有自闭症谱系障碍(ASD)的儿童在沟通、社会互动和活动方面的行为发生了改变,其中沟通是许多障碍中最突出的。尽管最近的技术进步,但通过识别早期自闭症儿童的语言缺陷(SD)来筛查和诊断ASD的关注有限。本研究的重点是通过开发一种通过语音分析来区分自闭症特征的自动化系统来弥合自闭症筛查的差距。从40名参与者中收集数据进行初步分析,并从17名参与者中获得录音。我们考虑了一个三阶段处理系统;第一阶段采用阈值法进行沉默检测和声音活动检测进行声音隔离,第二阶段采用带频域表示的机器学习技术神经网络为被隔离的声音开发依赖的话语分类器,第三阶段还采用机器学习技术神经网络识别被分类话语的语音模式中的自闭特征。结果表明,语音分类器识别自闭症儿童障碍的准确率为78%,模式识别准确率为72%。
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