Jurnal Linguistik Komputasional
Vol 1 No 1 (2018): Vol. 1, No. 1

Penjernihan Derau pada Suara Kanal Tunggal dengan Pembelajaran Faktorisasi Matriks Non-negatif tanpa Pengawasan

Tirtadwipa Manunggal (Unknown)
Oskar Riandi (Unknown)
Ardhi Ma’arik (Unknown)
Lalan Suryantoro (Unknown)
Achmad Satria Putera (Unknown)
Izzul Al-Hakam (Unknown)



Article Info

Publish Date
05 Mar 2018

Abstract

This article examines an approach of denoising method on single channel using Non-negative Matrix Factorization (NMF) on unsupervised-learning scheme. This technique utilizes the property of NMF which unravels spectrogram matrices of noise-interfered speech and noise itself into their building-block vector. As extension for NMF, Wiener filter is applied in the end of steps. This method is designated to run in low latency system, hence preparing certain noise model for particular condition beforehand is impractical. Thus the noise model is taken automatically from the unvoiced part of noise-interfered speech. The contribution achieved in this research is the kind of NMF learning using linear and non-linear constraint which is done without explicitly providing noise models. Therefore the denoising process could be undergone flexibly in any noise condition.

Copyrights © 2018






Journal Info

Abbrev

jlk

Publisher

Subject

Computer Science & IT

Description

Jurnal Linguistik Komputasional (JLK) menerbitkan makalah orisinil di bidang lingustik komputasional yang mencakup, namun tidak terbatas pada : Phonology, Morphology, Chunking/Shallow Parsing, Parsing/Grammatical Formalisms, Semantic Processing, Lexical Semantics, Ontology, Linguistic Resources, ...