Feature Extraction and Analysis of Speech Signal Based on Fractional Fourier Transform

Project Code :TMMASP170

Objective

To analyze and extract features of a speech signal using fractional Fourier transform

Abstract

The proposed approach has been compared to tried-and-true methods for speech/pause segmentation for both clear and murky voice data. The research findings show that the suggested approach-based methods yield the best speech/pause segmentation results for both clear and noisy speech signals; the ratio of the short-term energy of the Teager operator function to the mean frequency as an informative parameter ensures maximum relevance to the segmentation problem; and an auxiliary algorithm to correct false states improves segmentation efficiency.

Keywords: Fractional Fourier transform, Speech signal, Feature extraction.

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

Software: Matlab 2020a or above

Hardware:

Operating Systems:

  • Windows 10
  • Windows 7 Service Pack 1
  • Windows Server 2019
  • Windows Server 2016

Processors:

Minimum: Any Intel or AMD x86-64 processor

Recommended: Any Intel or AMD x86-64 processor with four logical cores and AVX2 instruction set support

Disk:

Minimum: 2.9 GB of HDD space for MATLAB only, 5-8 GB for a typical installation

Recommended: An SSD is recommended A full installation of all MathWorks products may take up to 29 GB of disk space

RAM:

Minimum: 4 GB

Recommended: 8 GB

Learning Outcomes

·         Introduction to Matlab

·         What is EISPACK & LINPACK

·         How to start with MATLAB

·         About Matlab language

·         Matlab coding skills

·         About tools & libraries

·         Application Program Interface in Matlab

·         About Matlab desktop

·         How to use Matlab editor to create M-Files

·         Features of Matlab

·         Basics on Matlab

·         What is Signal Processing?

·         About Signal Processing

·         Introduction to Signal Processing

·         How analog and digital signal is formed

·         Importing the signal via signal acquisition tools

·         Analyzing and manipulation of signals.

·         Phases of signal processing:

·         Acquisition

·         Signal enhancement

·         Signal restoration

·         Medical Signal Processing

·         Medical Signal Analysis

·         Medical Signal Diagnosis

·         Filtering techniques

·         Machine Learning Algorithms

·         Deep Learning Algorithms etc.

·         How to extend our work to another real time applications

·         Project development Skills

                            o    Problem analyzing skills

                            o    Problem solving skills

                            o    Creativity and imaginary skills

                            o    Programming skills

                            o    Deployment

                            o    Testing skills

                            o    Debugging skills

                            o    Project presentation skills

                            o     Thesis writing skills

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