基于噪声数据的宽带高光谱相位检索

V. Katkovnik, I. Shevkunov, K. Egiazarian
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引用次数: 2

摘要

高光谱(HS)成像从广泛的光谱通道中获得的数据中检索信息。重建的对象是一个三维立方体,其中两个坐标是空间坐标,第三个是光谱坐标。我们假设这个立方体是复值的,即以空间频率变化的幅度和相位为特征。观测结果是用光谱上总结的强度测量的平方幅度。HS相位恢复问题被表述为从高斯噪声强度观测中重建HS复值目标立方体。推导出的迭代算法包括原始的近端谱分析算子和复值三维立方体的稀疏性建模。仿真实验验证了该算法的有效性。
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Broadband Hyperspectral Phase Retrieval From Noisy Data
Hyperspectral (HS) imaging retrieves information from data obtained across a wide spectral range of spectral channels. The object to reconstruct is a 3D cube, where two coordinates are spatial and third one is spectral. We assume that this cube is complex-valued, i.e. characterized spatially frequency varying amplitude and phase. The observations are squared magnitudes measured as intensities summarized over spectrum. The HS phase retrieval problem is formulated as a reconstruction of the HS complex-valued object cube from Gaussian noisy intensity observations. The derived iterative algorithm includes the original proximal spectral analysis operator and the sparsity modeling for complex-valued 3D cubes. The efficiency of the algorithm is confirmed by simulation tests.
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