Classification of disordered patient’s voice by using pervasive computational algorithms

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS International Journal of Pervasive Computing and Communications Pub Date : 2022-01-25 DOI:10.1108/ijpcc-07-2021-0158
A. Maddali, Habibullah Khan
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Abstract

Purpose Currently, the design, technological features of voices, and their analysis of various applications are being simulated with the requirement to communicate at a greater distance or more discreetly. The purpose of this study is to explore how voices and their analyses are used in modern literature to generate a variety of solutions, of which only a few successful models exist. Design/methodology The mel-frequency cepstral coefficient (MFCC), average magnitude difference function, cepstrum analysis and other voice characteristics are effectively modeled and implemented using mathematical modeling with variable weights parametric for each algorithm, which can be used with or without noises. Improvising the design characteristics and their weights with different supervised algorithms that regulate the design model simulation. Findings Different data models have been influenced by the parametric range and solution analysis in different space parameters, such as frequency or time model, with features such as without, with and after noise reduction. The frequency response of the current design can be analyzed through the Windowing techniques. Original value A new model and its implementation scenario with pervasive computational algorithms’ (PCA) (such as the hybrid PCA with AdaBoost (HPCA), PCA with bag of features and improved PCA with bag of features) relating the different features such as MFCC, power spectrum, pitch, Window techniques, etc. are calculated using the HPCA. The features are accumulated on the matrix formulations and govern the design feature comparison and its feature classification for improved performance parameters, as mentioned in the results.
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应用普适计算算法对患者语音进行分类
目的目前,语音的设计、技术特征及其对各种应用的分析都在模拟中,要求以更大的距离或更谨慎的方式进行通信。本研究的目的是探索声音及其分析如何在现代文学中被用来产生各种解决方案,其中只有少数成功的模式存在。设计/方法使用数学建模对中频倒谱系数(MFCC)、平均幅度差函数、倒谱分析和其他语音特征进行了有效建模和实现,每个算法的参数权重可变,可以在有噪声或无噪声的情况下使用。用不同的监督算法改进设计特征及其权重,这些算法规范设计模型模拟。发现不同的数据模型受到参数范围的影响,并在不同的空间参数(如频率或时间模型)中进行解分析,具有降噪、降噪和降噪后的特征。当前设计的频率响应可以通过窗口技术进行分析。原始值使用HPCA计算具有普适计算算法(PCA)的新模型及其实现场景(如具有AdaBoost的混合PCA(HPCA)、具有特征袋的PCA和具有特征袋改进的PCA),这些算法与MFCC、功率谱、间距、窗口技术等不同特征相关。这些特征在矩阵公式上累积,并控制设计特征比较及其特征分类,以改进性能参数,如结果中所述。
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来源期刊
International Journal of Pervasive Computing and Communications
International Journal of Pervasive Computing and Communications COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.60
自引率
0.00%
发文量
54
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