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RECOGNITION AND UNDERSTANDING OF THE PATHOLOGICAL SPEECH USING ARTIFICIAL INTELLIGENCE METHODS

机译:使用人工智能方法对病理学语音的认识与理解

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In the presented work we introduce a new conception, taking advantage of artificial intelligence techniques for analysis of pathological speech, namely the conception of automated understanding, which as we suggest, can be applied to analysis of selected speech pathologies, instead of the more popular approach based on the concept of recognition. The presented concept of the research scheme is based on the technique of advanced acoustic signal analysis and it refers to the analysis of artificial neural networks functioning in the task of recognition of selected types of vocal tract pathologies. It is proposed here that the simple process of signal recognition should be replaced by a more advanced method of its analysis, called the process of understanding of the signal. The method is take advantage of an internal model of the considered signal's generator and it is directed towards such a structure analysis of the examined sound, which enables its identification as a result of cognitive resonance. The described method allowed us to achieve more subtle details for signal characterized by small diversity of measurable parameters, observed for the classes being recognized, what is the case in the problem of identification of selected pathologies considered here. The circumstances mentioned above suggest a consideration of more knowledge-based approach to the discrimination of acoustic signals, described here as a technique of speech signal understanding.
机译:在介绍的工作中,我们引入了一种新概念,即利用人工智能技术对病理性语音进行分析,即自动理解的概念,正如我们所建议的那样,可以将其应用于选定的语音病理学分析,而不是更流行的方法。基于识别的概念。研究方案的提出概念是基于高级声信号分析技术的,它是指在识别选定类型的声道疾病中起作用的人工神经网络分析。在此建议,信号识别的简单过程应由一种更高级的分析方法代替,该方法称为信号理解过程。该方法利用了所考虑的信号发生器的内部模型,并且针对被检查声音的这种结构分析,这使得它可以作为认知共振的结果进行识别。所描述的方法使我们能够实现针对信号的更多细微细节,这些信号的特征在于可测量参数的小差异,对于要识别的类别,观察到的问题非常明显,此处考虑的是识别选定病理的问题。上面提到的情况建议考虑采用更多的基于知识的方法来区分声音信号,此处将其描述为语音信号理解技术。

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