用PCA和LDA评价声带病理

J. C. Saldanha, T. Ananthakrishna, R. Pinto
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引用次数: 5

摘要

利用语音信号的某些特征来识别语音障碍是可能的。一种补充技术可能是语音信号的声学分析,这被证明是检测语音疾病的潜在有用工具。本研究的重点是制定一种语音参数估计算法,用于分析和检测声带病理,并提出衡量疾病严重程度的量表。提出的语音处理算法估计必要的特征,以制定一个随机模型,以表征健康和病理条件的语音记录。从正常和病理受试者的浊音声学分析中提取语音信号特征,如MFCC。设计了最小距离分类器主成分分析(PCA+MDC)和线性判别分析(LDA)分类器,并报道了分类结果。
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Vocal fold pathology assessment using PCA and LDA
It is possible to identify voice disorders using certain features of speech signals. A complementary technique could be acoustic analysis of the speech signal, which is shown to be a potentially useful tool to detect voice diseases. The focus of this study is to formulate a speech parameter estimation algorithm for analysis and detection of vocal fold pathology and also bring out scale to measure severity of the disease. The speech processing algorithm proposed estimates features necessary to formulate a stochastic model to characterize healthy and pathology conditions from speech recordings. Speech signal features such as MFCC are extracted from acoustic analysis of voiced speech of normal and pathological subjects. A principal component analysis with minimum distance classifier (PCA+MDC) and linear discriminant analysis (LDA) classifier are designed and the classification results have been reported.
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