Analysis of Image Signal Compression using Wavelet with Matlab Program

Authors

  • Hermansyah Alam Universitas Islam Sumatera Utara Author
  • Mahrizal Masri Universitas Islam Sumatera Utara Author
  • Armansyah Armansyah Universitas Islam Sumatera Utara Author
  • Raja Harahap Universitas Sumatera Utara Author
  • Budhi Santri Kusuma Universitas Medan Area Author
  • Helma Widya Universitas Sumatera Utara Author
  • Fahrul Halim Pulungan Universitas Islam Sumatera Utara Author

Keywords:

Signal, Digital Image, Wavelet, Software

Abstract

Pengompresanthe signalIt is a method that is very beneficial for the development of digital images. WithPengompressignal, Digital image data that is generally large-sized can be compressed, so it has a smaller size.WithThe development of digital image processing technology has many software or software for image processing facilities. A large part of this software has the ability to compress digital image.This is clearly very mPrefergence for various data exchange applications.Wavelet method can be used to compress digital images. One of the advantages of this method compared to other methods is its ability to compress digital images with villaging qualitythe. Matlab (matrix laboratory) is used as a tool for compressing this digital image. From the results obtained from a digital image compression withadThis Etode Wavelet is the file size and image quality (digital image) can be adjusted That we want.

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Published

2024-08-29

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