Library Automation and Digital Archive
LONTAR
Fakultas Ilmu Komputer
Universitas Indonesia

Pencarian Sederhana

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Call Number SEM - 362
Collection Type Indeks Artikel prosiding/Sem
Title Comparison of random gaussian and partial random fourier measurement in compressive sensing using iteratively reweighted least square reconstruction (hal 332 - 334)
Author Endra;
Publisher Proceedings ICSIIT 2010: International conference on soft computing intelligent system and information technology 1-2 July 2010 Bali Indonesia
Subject Compressive sensing, IRLS, random gaussian measurement, partial random fourier measurement, perfect reconstruction probability, sparsity number, measurement number
Location
Lokasi : Perpustakaan Fakultas Ilmu Komputer
Nomor Panggil ID Koleksi Status
SEM - 362 TERSEDIA
Tidak ada review pada koleksi ini: 47913
Compressive sensing is the recent technique of data acquisition where perfect reconstruction of signal can be made form far fewer samples or measurement than traditional shannon-nyquist sampling theorem. iteratively reweighted least squares (IRLS) reconstruction is a compressive sensing reconstruction algorithm which is a first-order approximation to the p-norm minimization where 0_< p _< 1. in this paper, we compare the random gaussian and partial random fourier (using discrete cosine transform) measurement to encode signal and then reconstructthe signal using IRLS algorithm for various p. from the numerical experiments, random gaussian and partial random fourier measurement, both give better perfect reconstruction probability for p < 1. also both of them give almost the same perfect reconstruction probability as function of sparsity and measurement number, just slightly different for some of o value.