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Analysis of Matrix Completion algorithms for spectral image estimation from compressive coded projections

机译:压缩编码投影谱图像谱分析矩阵完成算法

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The coded aperture snapshot spectral imaging (CASSI) system is an optical architecture designed to capture spectral images using the compressive sensing (CS) concepts. CASSI senses the spectral information of a three dimensional scene by using two-dimensional coded focal plane array (FPA) projections. The CASSI system improves the sensing speed and reduce the large amount of collected data given by conventional spectral imaging systems based on the Nyquist criterion. Compressive sensing reconstruction algorithms are commonly used to recover the underlying three dimensional source. However, CS assumes the signal is sparse, which is not always achievable. This work proposes the use of Matrix Completion (MC) theory as an alternative way to reconstruct the underlying three dimensional source from the compressive coded projections. The reconstruction is accomplished by solving a convex optimization problem, which relies on the nuclear-norm minimization of the measurement, subject to data constraints. Further, it is proposed and analyzed the impact of six different linear transformations to arrange the missing data, such that the degrees of freedom of the transformed matrix ease the completion process. Simulations show good quality of the reconstruction and it is observed that MC algorithms are much faster than conventional CS reconstruction algorithms.
机译:编码光圈快照光谱成像(CASSI)系统是一种光学架构,用于使用压缩感测(CS)概念捕获光谱图像。 CASSI通过使用二维编码焦平面阵列(FPA)投影来感测三维场景的光谱信息。 CASSI系统改善了传感速度,并根据奈奎斯特标准降低传统光谱成像系统给出的大量收集数据。压缩感测重建算法通常用于恢复底层的三维源。但是,CS假定信号稀疏,这并不总是可实现的。该工作提出了使用矩阵完成(MC)理论作为从压缩编码投影重建基础三维源的替代方法。通过求解凸优化问题来实现重建,这依赖于测量的核规范最小化,受到数据约束。此外,提出并分析了六种不同的线性变换的影响来安排缺失的数据,使得转化的矩阵的自由度易于完成过程。模拟显示良好的重建质量,观察到MC算法比传统的CS重建算法快得多。

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