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Lisp Detection and Correction Based on Feature Extraction and Random Forest Classifier

机译:基于特征提取和随机林分类的LISP检测和校正

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Lisp is a functional speech impediment that results in difficulty to produce specific speech sounds and specific words. The objective of this paper is to delineate a compound speech processing algorithm that can segment and recognize the individual words present in the speech using feature extraction, and identify any lisp words using Random Forest Classifier and correct it. The features extracted are the Mel Frequency Cepstral Coefficients (MFCC). The coefficients are extracted and they form the basis of classification into lisp or non-lisp words. MRF Algorithm has been proposed (MFCC-RF) that can be applied on real-time embedded systems that can help people with speech disability. The proposed model can be used in various speech to text applications as the algorithm detects lisp words accurately and correct them in real time. Different classification algorithms such as the regression algorithm and Fuzzy Decision Tree classification algorithm have been used and their results have been compared. It has been observed that the Random Forest Classifier gives superior performance.
机译:LISP是一种功能性语音障碍,导致难以产生特定的语音声音和特定词语。本文的目的是描绘一种复合语音处理算法,可以使用特征提取识别语音中存在的单个单词,并使用随机林分类器识别任何LISP单词并纠正它。提取的特征是MEL频率谱系数(MFCC)。提取系数并将它们构成分类为LISP或非LISP字。已经提出了MRF算法(MFCC-RF),可以在实时嵌入式系统上应用,可以帮助语音残疾人。所提出的模型可以在各种语音中用于文本应用程序,因为算法准确地检测到LISP单词并实时校正它们。已经使用了不同的分类算法,例如回归算法和模糊决策树分类算法,并比较它们的结果。已经观察到随机林分类器具有卓越的性能。

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