A New Method Towards Speech Files Local Features Investigation
Rustam Latypov, Evgeni Stolov

TL;DR
This paper introduces a novel approach for analyzing local speech features by approximating signals with finite set values and constructing vector sequences, which improves language distinction using neural networks.
Contribution
A new method for speech file local feature analysis using finite set approximations and vector distribution, enhancing language recognition capabilities.
Findings
Effective in distinguishing two languages in speech files
Utilizes a simple neural network for classification
Provides a new perspective on speech feature extraction
Abstract
There are a few reasons for the recent increased interest in the study of local features of speech files. It is stated that many essential features of the speaker language used can appear in the form of the speech signal. The traditional instruments - short Fourier transform, wavelet transform, Hadamard transforms, autocorrelation, and the like can detect not all particular properties of the language. In this paper, we suggest a new approach to the exploration of such properties. The source signal is approximated by a new one that has its values taken from a finite set. Then we construct a new sequence of vectors of a fixed size on the base of those approximations. Examination of the distribution of the produced vectors provides a new method for a description of speech files local characteristics. Finally, the developed technique is applied to the problem of the automatic distinguishing…
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