A Preliminary Study on Vowel Recognition via CNN for Disorder People in Malay Language

Nur Syakirah Muhammad Zamri, N. M. Z. Hashim, A. S. Ja'afar, A. M. Darsono, M. J. A. Latif, Parathythasan Rajaandra
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引用次数: 1

Abstract

Stroke is one disease showing an increment trend as people live their lives in a stressful manner. Rehabilitation is one of the procedures to recover the patient to a normal condition. The rehabilitation process and activities require an extended period to retrain back the patient's capability, speak, listen, walk, etc. For this, a dedicated physiotherapy procedure was conducted according to the rehab trainer and expertise. One of the rehabilitations is to help the patient to have back their speaking skill and capability. The rehabilitation activities are generally conducted manually through manual listening and teaching the stroke patient periodically by the rehab trainer. The manual rehabilitation activities physically require the rehab trainer's presence, documentation, and manual data recording. This manual activity could be challenging when we face a lack of trainers and the situation of many patients with less trained in the field. Therefore, an intelligent system could be an alternative for rehabilitation to provide the user-friendly and straightforward technique to learn, repeat, and evaluate. In the paper, as the preliminary study, we proposed a smart vowel recognition for Malay Language using Convolutional Neural Network (CNN). We also proposed a new Malay Language dataset consist of 5 vowels, /a/, /e/, /i/, /o/ and /u/ for the use of future research. The result shows that the vowel recognition using this dataset is comparable and suitable for recognizing the vowel type.
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CNN对马来语障碍人群元音识别的初步研究
中风是随着人们的生活压力增大而呈现增加趋势的疾病之一。康复是使病人恢复到正常状态的过程之一。康复过程和活动需要一段较长的时间来重新训练病人的能力,说话、倾听、行走等。为此,根据康复教练和专业知识进行了专门的物理治疗程序。其中一个康复是帮助病人恢复他们的说话技巧和能力。康复活动一般采用人工方式,由康复教练定期对脑卒中患者进行人工聆听和教学。手工康复活动需要康复教练在场,需要文件和手工数据记录。当我们面临缺乏培训人员和许多患者在该领域接受的培训较少的情况时,这种手工活动可能具有挑战性。因此,智能系统可以作为康复的替代方案,提供用户友好且简单的技术来学习、重复和评估。本文提出了一种基于卷积神经网络(CNN)的马来语智能元音识别方法。我们还提出了一个新的马来语数据集,包括5个元音,/a/, /e/, /i/, /o/和/u/,以供未来的研究使用。结果表明,使用该数据集进行的元音识别具有可比性,适合于元音类型的识别。
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