Repository logo
  • English
  • ไทย
  • Log In
    New user? Click here to register. Have you forgotten your password?
external-link-logo
  • Communities & Collections
  • All of AU-IR
  1. Home
  2. Browse by Author

Browsing by Author "Supatana Auethavekiat"

  • 0-9
  • A
  • B
  • C
  • D
  • E
  • F
  • G
  • H
  • I
  • J
  • K
  • L
  • M
  • N
  • O
  • P
  • Q
  • R
  • S
  • T
  • U
  • V
  • W
  • X
  • Y
  • Z

  • ก
  • ข
  • ฃ
  • ค
  • ฅ
  • ฆ
  • ง
  • จ
  • ฉ
  • ช
  • ซ
  • ฌ
  • ญ
  • ฎ
  • ฏ
  • ฐ
  • ฑ
  • ฒ
  • ณ
  • ด
  • ต
  • ถ
  • ท
  • ธ
  • น
  • บ
  • ป
  • ผ
  • ฝ
  • พ
  • ฟ
  • ภ
  • ม
  • ย
  • ร
  • ล
  • ว
  • ศ
  • ษ
  • ส
  • ห
  • ฬ
  • อ
  • ฮ
Results Per Page
Sort Options
  • Item
    A fast image recovery using compressive sensing technique with block based orthogonal matching pursuit
    ( 2009-12) Vorapoj Patanavijit ; Parichat Sermwuthisarn ; Supatana Auethavekiat
    Traditionally, the problems of applying Orthogonal Matching Pursuit (OMP) to large images are its high computing time and its requirement for a large matrix. In this paper, we propose a fast image recovery algorithm by dividing the image into block of nxn pixels and applying OMP to each nxn block instead of the entire image. The key idea is that small matrix requires less computing time and less memory. In the experiment, the block based OMP was applied to three standard test images: Lena, Mandrill and Pirate. Compared to standard OMP, block based OMP required less computing time while giving comparable PSNR.
  • Item
    Robust compressed sensing in Gaussian noise environment by resampling with replacement
    ( 2012) Vorapoj Patanavijit ; Duangrat Gansawaf ; Parichat Sermwuthisarn ; Supatana Auethavekiat
    A reconstruction method using the ensemble of compressed measurement signals is proposed for reconstructing the image from the signal corrupted by Gaussian noise. The ensemble is created from one signal under the assumption that an image is highly redundant; hence, it is approximated as the mixture of a number of signals. The proposed method adopted the sampling with replacement in bootstrapping to extract L signals from the mixture. The extracted L signals from the ensemble of signals corrupted by Gaussian noise with the same mean and variance. The signals have different bases; thus, they he in different space. Orthogonal Matching Pursuit with Partially Known Support (OMP-PKS) is applied to reconstruct the L signals to the same sparse space. Gaussian noise is reduced by averaging the reconstructed signals. The performance of the proposed method was compared with Basis Pursuit Denoising (BPDN), OMP-PKS and Distributed Compressed Sensing using Simultaneously Orthogonal Matching Pursuit (DCS-SOMP). The experimental results of 10 standard test images showed that our method yielded higher Peak Signal-to-Noise Ratio (PSNR) and better visual quality at a high level of noise.

Contact Us

St. Gabriel's Library (Hua Mak Campus)
592/3 Soi Ramkhamhaeng 24, Ramkhamhaeng Rd., Hua Mak, Bang Kapi, Bangkok 10240, Thailand

(662) 3004543-62 Ext. 3403

library@au.edu

The Cathedral of Learning Library (Suvarnabhumi Campus)
88 Moo 8 Bang Na-Trad Km. 26 Bang Sao Thong, Samut Prakan 10570, Thailand

(662) 7232024

library@au.edu

Website:  www.library.au.edu