Improving Child Speech Disorder Assessment by Incorporating Out-of-Domain Adult Speech
نویسندگان
چکیده
This paper describes the continued development of a system to provide early assessment of speech development issues in children and better triaging to professional services. Whilst corpora of children’s speech are increasingly available, recognition of disordered children’s speech is still a data-scarce task. Transfer learning methods have been shown to be effective at leveraging out-of-domain data to improve ASR performance in similar data-scarce applications. This paper combines transfer learning, with previously developed methods for constrained decoding based on expert speech pathology knowledge and knowledge of the target text. Results of this study show that transfer learning with out-of-domain adult speech can improve phoneme recognition for disordered children’s speech. Specifically, a Deep Neural Network (DNN) trained on adult speech and finetuned on a corpus of disordered children’s speech reduced the phoneme error rate (PER) of a DNN trained on a children’s corpus from 16.3% to 14.2%. Furthermore, this fine-tuned DNN also improved the performance of a Hierarchal Neural Network based acoustic model previously used by the system with a PER of 19.3%. We close with a discussion of our planned future developments of the system.
منابع مشابه
Study and Assessment of Motor Abilities of Older Pre-School Children with Speech Disorder
Objectives: To identify and assess the level of development of motor abilities in older pre-school -age children with speech disorder. Methods: The study included 200 older pre-school age children, 100 children with a healthy level of speech development and 100 with speech disorder, in Belgorod and Belgorod region (Russian Federation). The study looked at scientific sources; motor abilities te...
متن کاملMulti-Scale Context Adaptation for Improving Child Automatic Speech Recognition in Child-Adult Spoken Interactions
The mutual influence of participant behavior in a dyadic interaction has been studied for different modalities and quantified by computational models. In this paper, we consider the task of automatic recognition for children’s speech, in the context of child-adult spoken interactions during interviews of children suspected to have been maltreated. Our long-term goal is to provide insights withi...
متن کاملMolecular study of a consanguineous family with autosomal recessive mental retardation and speech disorder
Mental retardation (MR) is one of the most frequently found major genetic disorders around the world, affecting 1-3% of the people in the general population. The recent advancement in molecular biology and cytogenetic study has made possible the identification of new genes for a variety of genetic disorders including autosomal recessive MR. Recessive genetic disorders are common in Pakistan due...
متن کاملAssessment and treatment of childhood apraxia of speech: An inquiry into knowledge and experience of speech-language pathologists
Objectives: The present research aimed to identify the assessment and treatment processes implemented by Iranian speech-language pathologists (SLPs) for CAS and to investigate the possibility of impact of their knowledge level and years of experience on their choice of assessment and treatment. Methods: A cross-sectional method using survey design was employed to obtain a sample of 260 SLPs w...
متن کاملPragmatic Criteria in the Holistic and Analytic Rating of the Disagreement Speech Act of Iranian EFL Learners by Non-native English Speaking Teachers
onveying a strong message within a language stems from not only a linguistically appropriate utterance but also a pragmatically appropriate discourse. Broadly considering various facets of pragmatics, pragmatic assessment has not been potentially brought into perspective. To address this discourse gap, this study, guided by the principles of mixed-method design, pursued three purposes: ...
متن کامل