Automatic Posture Evaluation for Professional Voice Users

Çagatay Demirel, H. Aydan, I. Koçak, G. Ince
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引用次数: 1

Abstract

Voice trainings are executed mostly by therapists to their knowledge, experiences and skills. In these therapies, tension spots of a body are evaluated. A body is relieved with guidance of a therapist and physical exercises. However, voice quality evaluation of professional voice users are implemented subjectively. Classical voice evaluations can not be done by an objective approach, yet done with therapists’ intuition. In this study, a measurement system was proposed to evaluate voice quality objectively by using the posture of a patient. Different machine learning algorithms were used to classify objective voice quality and posture quality, yet Artificial Neural Network models were found as best classifiers. Two models were tested using individual test sets and accuracies of voice quality and posture quality estimations were found to be 83.35% and 78.27%.
面向专业语音用户的自动姿态评估
语音训练主要由治疗师根据他们的知识、经验和技能来执行。在这些疗法中,评估身体的紧张点。在治疗师的指导和体育锻炼下,身体得到放松。然而,对专业语音用户的语音质量评价是主观的。经典的声音评估不能用客观的方法来完成,而是用治疗师的直觉来完成的。在这项研究中,提出了一个测量系统,客观地评估语音质量,利用病人的姿势。使用不同的机器学习算法对客观语音质量和姿态质量进行分类,但发现人工神经网络模型是最好的分类器。使用单独的测试集对两个模型进行测试,发现语音质量和姿态质量估计的准确率分别为83.35%和78.27%。
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