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Learning Strategies for Voice Disorder Detection

机译:语音障碍检测的学习策略

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Voice disorder is a health issue that is frequently encountered, however, many patients either cannot afford to visit a professional doctor or neglect to take good care of their voice. In order to give a patient a preliminary diagnosis without using professional medical devices, previous research has shown that the detection of voice disorders can be carried out by utilizing machine learning and acoustic features extracted from voice recordings. Considering the increasing popularity of deep learning and feature learning, this study explores the possibilities of using these methods to assign voice recordings into one of the two classes-Normal and Pathological. While the results show the general viability of deep learning and feature learning for the automatic recognition of voice disorder, they also demonstrate the shortcomings of the existing datasets for this task such as insufficient dataset size and lack of generality.
机译:声音障碍是一个经常遇到的健康问题,但是,许多患者要么负担不起看专业医生的费用,要么忽视了照顾好自己的声音。为了在不使用专业医疗设备的情况下为患者提供初步诊断,以前的研究表明,可以通过利用机器学习和从语音记录中提取的声学特征来进行语音障碍的检测。考虑到深度学习和特征学习的日益普及,本研究探索了使用这些方法将语音记录分配到“正常”和“病理”两类中的一种的可能性。虽然结果显示了深度学习和特征学习在自动识别语音障碍方面的一般可行性,但它们也证明了现有数据集可用于此任务的缺点,例如数据集大小不足和缺乏通用性。

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