KLASIFIKASI SENJATA API MELALUI SUARA MENGGUNAKAN TRANSFORMASI WAVELET

Fadlisyah Fadlisyah, Syahrial Syahrial

Abstract


Classification of guns through sound using Wavelet Transform is a branch of sound processing can be used to identify several types of gunfire. This study uses wavelet transformation for the recognition and classification of firearms training through the noise using Wavelet Transform. The system was then tested by simulating it on the training data and test data to generate the percentage of recognition and classification of the sound of gunfire. Experiments done with several changes in parameter values to obtain the best percentage of recognition and classification. The results of this study in the form of gunfire were classified in accordance with the known brand guns from the calculation of energy using Wavelet Transformation.

Full Text:

PDF

References


Adler,Jhon.dkk.2013.Identifikasi Suara dengan Matlab sebagai Aplikasi Jaringan Syaraf Tiruan. TELEKONTRAN, VOL. 1, NO. 1

Fadlisyah, Bustami, M.Ikwanus. Pengolahan Suara. Edisi Pertama.

Yogyakarta. Penerbit Graha Ilmu.

Hanggarsari, Praviti Nugraheni, dkk.2012. SIMULASI SISTEM

PENGACAKAN SINYAL SUARA SECARA REALTIME BERBASIS FAST FOURIER TRANSFORM (FFT). Jurusan Teknik Elektro, Fakultas

Teknik, Universitas Lampung. Volume:6, No.3.

Kurniawan, Harry. Perbandingan Fast Fouier Transform Dengan Disrcrete Fourier Transform Pada Sampling Suara, Skripsi Prodi Teknik Informatika Universitas Malikussaleh, 2013.

Pradipta, Nandra. Impelementasi Algortima Fast Fourier Transform Pada Digital Signal Processor TMS320C542, Tugas Akhir. Jurusan Teknik Elektro, Universitas Dipenogoro. 2009.

Putra, Darma. 2009. Pengolahan Citra Digital. Yogyakarata. Penerbit Andi

Thomas, Mark. Application Of Channel Shortening To Acoustic Channel Equalization. Imperial College London Publisher. United Kingdom.




DOI: https://doi.org/10.29103/techsi.v6i2.173

Article Metrics

 Abstract Views : 254 times
 PDF Downloaded : 2 times

Refbacks

  • There are currently no refbacks.




TECHSI Journalindexed by:


Google Scholar Portal Garuda crossref doi




TECHSI Journalis a member of:


Mendeley Zotero



© Copyright of Journal TECHSI, (e-ISSN:2614-6029, p-ISSN:2302-4836).