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Automatic detection of voice impairments by means of short-term cepstral parameters and neural network based detectors

机译:通过短期倒谱参数和基于神经网络的检测器自动检测语音障碍

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It is well known that vocal and voice diseases do not necessarily cause perceptible changes in the acoustic voice signal. Acoustic analysis is a useful tool to diagnose voice diseases being a complementary technique to other methods based on direct observation of the vocal folds by laryngoscopy. Through the present paper two neural-network based classification approaches applied to the automatic detection of voice disorders will be studied. Structures studied are multilayer perceptron and learning vector quantization fed using short-term vectors calculated accordingly to the well-known Mel Frequency Coefficient cepstral parameterization. The paper shows that these architectures allow the detection of voice disorders-including glottic cancer-under highly reliable conditions. Within this context, the Learning Vector quantization methodology demonstrated to be more reliable than the multilayer perceptron architecture yielding 96% frame accuracy under similar working conditions.
机译:众所周知,声音和语音疾病不一定会导致声音语音信号发生明显变化。声学分析是诊断语音疾病的有用工具,它是通过喉镜直接观察声带而对其他方法的补充技术。通过本文,将研究两种基于神经网络的分类方法,这些方法适用于语音障碍的自动检测。研究的结构是多层感知器,并使用根据众所周知的梅尔频率系数倒谱参数化计算出的短期向量对学习向量进行量化。本文显示,这些架构可在高度可靠的条件下检测语音障碍(包括声门癌)。在这种情况下,学习矢量量化方法论证明比多层感知器体系结构更可靠,在相似的工作条件下可产生96%的帧精度。

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