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图像视频信号的压缩采样与稀疏重建
引用本文:尹宝才,施云惠,丁文鹏,胡永利,李敬华.图像视频信号的压缩采样与稀疏重建[J].中国科学:信息科学,2013(2):226-242.
作者姓名:尹宝才  施云惠  丁文鹏  胡永利  李敬华
作者单位:北京工业大学计算机学院,多媒体与智能软件技术北京市重点实验室,北京100124
基金项目:国家重点基础研究发展计划(批准号:2011CB302703)、国家自然科学基金(批准号:60825203,61033004,60973056,61170103,61003182)和北京市自然科学基金(批准号:4102009,4112007)资助项目
摘    要:要视觉传感器通常不知道它们“看到”的现象之下的物理过程,以远远超出图像视频信号有效维度的Shannon/Nyquist采样率获取图像视频数据,从而导致了对图像视频信号的存储、传输等数字处理的巨大压力.压缩感知(compressivesensing,CS)理论表明:在某个线性变换域下稀疏的信号,可以利用少量的观测数据精确地重建,或在噪声情况下鲁棒地重建.压缩感知是实现图像视频信号有效维度采样的理论基础,为图像视频信号的采样、处理和识别等领域带来了前所未有的突破.本文对图像视频信号领域压缩感知面临的基本问题:压缩采样、稀疏重建模型及其优化求解算法的研究进展进行了综述.在采样方面,分析了图像视频信号随机观测矩阵和有结构观测矩阵的性能;在稀疏重建模型方面,从图像视频信号的稀疏先验性出发、介绍了分析型的重建模型和合成型重建模型的构建方法;在优化求解方面,针对重建模型,介绍了约束优化问题和无约束优化问题两类求解算法.以此为基础,分析了在图像视频领域压缩感知的理论与应用的进一步发展所面临的问题和挑战,展望了未来的发展方向.

关 键 词:采样  压缩感知  稀疏表示  随机观测  最优化

Compressive sampling and sparse reconstruction of images/videos
YIN BaoCai,SHI YunHui,DING WenPeng,HU YongLi LI JingHua.Compressive sampling and sparse reconstruction of images/videos[J].Scientia Sinica Techologica,2013(2):226-242.
Authors:YIN BaoCai  SHI YunHui  DING WenPeng  HU YongLi LI JingHua
Institution:Key Laboratory of Multimedia and Intelligent Software Technology, College of Computer Science and Technology, Beijing University of Technology, Beijing 100124, China
Abstract:Vision sensors usually do not account for the physical process of imaging and they acquire im- age/video samples at the Nyquist rate. The Nyquist rate is significantly higher than the effective dimensions of an image/video, and consequently compression is essential for the image/video prior to storage or transmission. The emerging Compressive Sensing (CS) theory states that a signal can be perfectly reconstructed, or can be robustly approximated in the presence of noise, using a few random measurements, provided that it is sparse in some linear transform domain. CS is the theoretical foundation for capturing a signal with effective information dimensions, and thus represents an unprecedented breakthrough in many fields such as sampling, processing, and recognition of image/video. We review the fundamental problems of CS for image/video including compressive sampling, sparse reconstruction models, and algorithms for the models. For compressive sampling, the construc- tion of random and structural measurement matrices are considered separately and the performance of these two kinds of matrices is evaluated. For sparse reconstruction, models are classified as analysis-based or synthesis- based reconstruction models by the sparse representation prior, features of which are presented. The optimization models can be considered as constrained and unconstrained optinfization problems. Some feasible algorithms for these two kinds of optimization problems are explained in detail and the performance of the algorithms is given. In addition, several challenges of compressive sensing technology are presented and future work is discussed.
Keywords:sample  compressing sensing  sparse representation  random measurement  optimization
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