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基于压缩感知成像系统的动态背景去噪 被引量:2

Reducing the Error Caused by Dynamic Background in the Imaging System Based on Compressed Sensing
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摘要 为了消除背景光强动态变化引起的非线性误差,提出了基于压缩感知成像系统的动态背景去噪算法.算法将测量中不同背景光强下所得测量值的平均值之差作为补偿系数,通过补偿系数消除动态背景噪声对压缩感知成像系统的非线性影响.仿真结果表明,在总数为900次的采样过程中,背影噪声动态变化300次时,算法能够将重建图像的峰值信噪比由29.5dB提高到62dB;在动态背景噪声的影响下,本文算法能够大大提高目标图像的可读性,提高成像质量,增加压缩感知成像系统的鲁棒性. A algorithm which uses the compensation factor to eliminate nonlinear errors was proposed to reduce the nonlinear errors caused by sudden change of background in the imaging system based on compressed sensing.The compensation factor was calculated from the mean value of measured data under different background.The simulation results show that the proposed algorithm improve the peak signal to noise ratio of reconstructed image from 29.5dB to 62 dB when the background noise change as many as300 times during 900 times sampling.The reconstructed image is more readable and the imaging system is more robust with the proposed algorithm.
出处 《光子学报》 EI CAS CSCD 北大核心 2015年第12期70-76,共7页 Acta Photonica Sinica
基金 国家自然科学基金(Nos.61101196 61271332 61177091) 国防预研项目(No.40405080401)资助~~
关键词 成像 压缩感知 非线性 背景噪声 动态 Imaging Compressed sensing Nonlinear Dynamic background
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参考文献16

  • 1徐健,常志国.基于聚类的自适应图像稀疏表示算法及其应用[J].光子学报,2011,40(2):316-320. 被引量:16
  • 2HILLMAN R T, YAMAUCHI T, CHOI W, et al. Digital optical phase conjugation for delivering two-dimensional images through turbid media[-J], 2013, Scitific Reports, 3 : 1909.
  • 3CHUMNG K, WALLACE J, KIM S Y, etal. Structural and molecular interrogation of intact biological systems [-J ]. Nature,2013, 497:332-337.
  • 4刘海英,李云松,吴成柯.一种数字微镜阵列分区控制和超分辨重建的压缩感知成像法[J].光子学报,2014,43(5):175-182. 被引量:7
  • 5CONKEY D B, CARAVACA-AGUIRRE A M. High-speed scattering medium characterization with application to focusing light through turbid media ~Jl. Optical Express, 2012, 20: 1733-1740.
  • 6CANDES E J, WAKIN M B. An Introduction to compressive sampling[C']. IEEE Signal Process Magazine, 2008, 25: 21- 30.
  • 7卢佩,刘效勇,卢熙,田敏,曹海宾.基于压缩感知及光学理论的图像信息加密[J].光子学报,2014,43(9):202-208. 被引量:5
  • 8DUARTE M F. Single-pixel imaging via compressive samplingl-C]. IEEE Signal Process,2008, 25(2) :83-91.
  • 9RODRIGUEZ A D. Resolution analysis in computational imaging with patterned illumination and bucket detection[J]. Optical Letters, 2014,39(13) :3888-3891.
  • 10ENRIQUE T. Image transmission through dynamic scattering media by single-pixel photodetection[-J]. Optical Express, 2014, 22(14) : 16945-16955.

二级参考文献59

  • 1秦怡,郑长波.基于双随机相位编码的彩色图像加密技术[J].光子学报,2012,41(3):326-329. 被引量:18
  • 2CANDES E J.Compressive sampling[C]//Proceedings of International Congress of Mathematicians.Madrid,Spain.European Mathematical Society Publishing House,2006:1433-1452.
  • 3BARANIUK R.Compressive sensing[J].IEEE Signal Processing Magazine,2007,24(4).118-120.
  • 4MAIRAL J,ELAD M,SAPIRO G.Sparse representation for color image restoration[J].IEEE Transactions on Image Processing,2008.17(1),53-69.
  • 5AHARON M,ELAD M,BRUCKSTEIN A.K-SVD:an algorithm for designing overcomplete dictionaries for sparse representation[J].IEEE Transactions on Signal Processing,2006,54(11):4311-4322.
  • 6HE Z,CICHOCKI A.K-EVD clustering and its applications to sparse component analysis[C].Independent Component Analysis and Blind Signal Separation,Charleston,SC,USA.LNCS,2006,3889:90-97.
  • 7XIE Z,FENG J.KFCE:a dictionary generation algorithm for sparse representation[J].Signat Processing,2009,89 (10):2072-2077.
  • 8TROPP J A,GIBERT A C.Signal recovery from random measurements via orthogonal matching pursuit[J].IEEE Transactions on Information Theory,2007,53 (12):4655-4666.
  • 9KUNIS S,RAUHUT H.Random sampling of sparse trigonometric polynomials,II.Orthogonal matching pursuit versus basis pursuit[J].Foundations of Computational Mathematics,2008,8(6),737-763.
  • 10RUBINSTEIN R,ZIBULEVSKY M,ELAD M.Efficient implementation of the K SVD algorithm using batch orthogonal matching pursuit[J/OL].Technical Report CS Technion,2008[2008-03-15].http,//www.cs.technion.ac.il/users/wwwb/cgi-bin/tr-get.cgi/2008/CS /CS-2008-08.revised,pdf.

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