[1]马如远,金明亮,刘继忠,等. 移动机器人环境视觉小波稀疏压缩传感和识别[J]. 传感技术学报,2012,25(4):519-523.
Ma Ruyuan, Jin Mingliang, Liu Jizhong, et al. Wavelet Sparsity Based Compressive Sensing and Direct Recognition for Mobile Robot Environmental Vision[J]. Chinese Journal of Sensors and Actuators, 2012, 25(4): 519-523.
[2]赵士彬,姚素英,徐江涛. 基于压缩感知的低功耗高效率CMOS图像传感器设计[J]. 传感技术学报,2011,24(8):1151-1157.
Zhao Shibin, Yao Suying, Xu Jiangtao. Low Power High CMOS Image Sensor Design Based on Compressed Sensing[J]. Chinese Journal of Sensors and Actuators, 2011, 24(8): 1151-1157.
[3]Wang Y, Bermak A, Boussaid F. FPGA Implementation of Compressive Sampling for Sensor Network Applications[C]//Proceedings of the 2nd Asia Symposium on Quality Electronic Design. Penang, Malaysia, 2010: 5-8.
[4]王向阳,杨红颖. 一种基于小波包变换的纹理图像压缩算法[J]. 测绘学报,2004,33(3):239-243.
Wang Xiangyang, Yang Hongying. A New Wavelet Packet Coding Algorithm for Texture-rich Images[J]. Acta Geodaetica et Cartographica Sinica, 2004, 33(3): 239-243.
[5]韩培友,张雯,郝重阳,等. 一种基于混合编码的图像纹理压缩方法[J]. 微电子学与计算机,2006,23 (11):178-180,184.
Han Peiyou, Zhang Wen, Hao Chongyang, et al. A Texture Compression Algorithm Based on Hybrid Coding[J]. Microelectronics & Computer, 2006, 23 (11): 178-180, 184.
[6]王超,叶凤琴,叶中付. 基于结构纹理分解的改进图像压缩算法[J]. 中国科学技术大学学报,2007,37(12):1449-1454.
Wang Chao, Ye Fengqin, Ye Zhongfu. An Improved Image Compression Method Using Cartoon-texture Decomposition[J]. Journal of University of Science and Technology of China, 2007, 37(12): 1449-1454.
[7]潘志刚,高鑫. 针对纹理图像压缩的改进SPIHT算法[J]. 中国科学院研究生院学报,2010,27(2):222-227.
Pan Zhigang, Gao Xin. An Improved SPIHT Algorithm for Texture Image Compression[J]. Journal of Graduate School of the Chinese Academy of Sciences, 2010, 27(2): 222-227.
[8]张军,成礼智,杨海滨,等. 基于纹理的自适应提升小波变换图像压缩[J]. 计算机学报,2010,33(1):184-192.
Zhang Jun, Cheng Lizhi, Yang Haibin, et al. Adaptive Lifting Wavelet Transform and Image Compression via Texture[J]. Chinese Journal of Computers, 2010, 33(1): 184-192.
[9]Hari Hara Santosh D, Dasari P, Kiran N L S, et al. FRCT Based Efficient Image Compression for Texture Images[C]//2012 International Conference on Computing, Communication and Applications. Dindigul, 2012: 1-6.
[10]朱梅,李章维. 基于Bandelets域的自适应图像压缩[J]. 计算机工程,2011,37(7):241-242,252.
Zhu Mei, Li Zhangwei. Adaptive Image Compression Based on Bandelets Domaiin[J]. Computer Engineering, 2011, 37(7): 241-242, 252.
[11]田润澜,肖卫华,齐兴龙. 几种图像变换算法性能比较[J]. 吉林大学大学报:信息科学版,2010,28(5):439-444.
Tian Runlan, Xiao Weihua, Qi Xinglong. Comparion of Several Image Transform[J]. Journal of Jilin University (Information Science Edition), 2010, 28(5): 439-444.
[12]金坚,谷源涛,梅顺良. 压缩采样技术及其应用[J]. 电子与信息学报,2010,32(2):470-475.
Jin Jan, Gu Yuantao, Mei Shunliang. An Introduction to Compressive Sampling and Its Applications[J]. Journal of Electronics & Information Technology, 2010, 32(2): 470-475.
[13]Iqbal M, Chen J. Compressive Sampling of Natural Images Using Bandelet Basis[C]//2011 4th International Conference on Image and Signal Processing. Shanghai, 2011: 958-962.
[14]Donoho D L,Huo X M.Uncertainty Principles and Ideal Atomic Decomposition[J]. IEEE Transactions on Information Theory, 2001, 47: 2845-2862.
[15]Donoho D L, Tsaig Y. Extensions of Compressed Sensing[J]. Signal Processing, 2006, 47: 549-571. |