基于压缩感知与扩展小波树的自适应压缩成像
骆乐, 陈钱, 戴慧东, 顾国华, 何伟基. 基于压缩感知与扩展小波树的自适应压缩成像[J]. 发光学报, 2018, 39(10): 1478.
LUO Le, CHEN Qian, DAI Hui-dong, GU Guo-hua, HE Wei-ji. Adaptive Compression Sampling with Compressive Sensing and Extended Wavelet Tree[J]. Chinese Journal of Luminescence, 2018, 39(10): 1478.
[1] 张杰, 史小平. 结合压缩感知和曲波的天文图像去噪 [J]. 光学 精密工程, 2017, 25(5): 1387-1394.
[2] 马彦鹏, 王亚南, 王义坤, 等. 基于压缩感知的单点探测计算成像技术研究 [J]. 光学学报, 2013, 33(12): 118-124.
MA Y P, WANG Y N, WANG Y K, et al.. Study of single-pixel detection computational imaging technology based on compressive sensing [J]. Acta Opt. Sinica, 2013, 33(12): 118-124. (in Chinese)
[3] 王昕, 吉桐伯, 刘富. 结合目标提取和压缩感知的红外与可见光图像融合 [J]. 光学 精密工程, 2016, 24(7): 1743-1753.
[4] LI Q F, GUO K Y, TANG B, et al.. Scattering center modelling based on compressed sensing principle from under-sampling scattering field data [C]. Geoscience and Remote Sensing Symposium, IEEE, Beijing, 2016: 2672-2675.
[5] DEUTSCH S, AVERBUSH A, DEKEL S. Adaptive compressed image sensing based on wavelet modeling and direct sampling [C]. Proceedings of The 8th International Conference on Sampling Theory and Applications, Marseille, France, 2009.
[6] AVERBUSH A, DEKEL S, DEUTSCH S. Adaptive compressed image sensing using dictionaries [J]. Inform. Proc. Manag., 2012, 43(3): 730-739.
[7] ABMANN M, BAYER M. Compressive adaptive computational ghost imaging [J]. Sci. Rep., 2013, 3: 1545.
[8] SUN M J, MENG L T, EDGAR M P, et al.. A Russian dolls ordering of the hadamard basis for compressive single-pixel imaging [J]. Sci. Rep., 2017, 7(1): 3464-3470.
[9] DAI H D, GU G H, HE W J, et al.. Adaptive compressed sampling based on extended wavelet trees [J]. Appl. Opt., 2014, 53(29): 6619-6628.
[10] HUO Y R, HE H J, CHEN F, et al.. Adaptive single-pixel imaging based on guided coefficients [J]. J. Opt. Soc. Am. A: Opt. Image Sci. Vision, 2017, 34(1): 39-51.
[11] HUO Y R, HE H J, CHEN F. Compressive adaptive ghost imaging via sharing mechanism and fellow relationship [J]. Appl. Opt., 2016, 55(12): 3356-3367.
[12] CHEN R, LIU H, ZHANG H, et al.. Edge smoothness enhancement in DMD scanning lithography system based on a wobulation technique [J]. Opt. Express, 2017, 25(18): 21958-21968.
[13] YU W K, LI M F, YAO X R, et al.. Adaptive compressive ghost imaging based on wavelet trees and sparse representation [J]. Opt. Express, 2014, 22(6): 7133-7144.
[14] 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.
LIU H Y, LI Y S, WU C K. A method for compressive sensing of images based on zone control of digital micromirror device and super-resolution [J]. Acta Photon. Sinica, 2014, 43(5): 175-182. (in Chinese)
[15] BHATTACHARYA I, HUMSTON J J, CHEATUM C M, et al.. Accelerating two-dimensional infrared spectroscopy while preserving lineshapes using GIRAF [J]. Opt. Lett., 2017, 42(22): 4573-4576.
[16] LIU X F, YAO X R, WANG C, et al.. Quantum limit of photon-counting imaging based on compressed sensing [J]. Opt. Express, 2017, 25(4): 3286.
[17] WORINGER M, DARZACQ X, ZIMMER C, et al.. Faster and less phototoxic 3D fluorescence microscopy using a versatile compressed sensing scheme [J]. Opt. Express, 2017, 25(12): 13668-13683.
[18] DARDIKMAN G, SHAKED N T, TURKO N A, et al.. Optimal spatial bandwidth capacity in multiplexed off-axis holography for rapid quantitative phase reconstruction and visualization [J]. Opt. Express, 2017, 25(26): 33400.
[19] CHUI C K. Wavelets: a tutorial in theory and applications [J]. Wavelet Anal. Appl., 1992(2): 345-348.
骆乐, 陈钱, 戴慧东, 顾国华, 何伟基. 基于压缩感知与扩展小波树的自适应压缩成像[J]. 发光学报, 2018, 39(10): 1478. LUO Le, CHEN Qian, DAI Hui-dong, GU Guo-hua, HE Wei-ji. Adaptive Compression Sampling with Compressive Sensing and Extended Wavelet Tree[J]. Chinese Journal of Luminescence, 2018, 39(10): 1478.