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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Noniterative Hyperspectral Image Reconstruction From Compressive Fused Measurements
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Noniterative Hyperspectral Image Reconstruction From Compressive Fused Measurements

机译:压缩融合测量的非特性高光谱图像重建

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Compressive spectral imaging (CSI) enables the acquisition of spectral and spatial information of a scene using fewer projected measurements than traditional scanning approaches. Recently, research efforts have focused on obtaining high-resolution spectral images via expensive detectors and sophisticated CSI devices. Alternatively, high-resolution spectral images can be obtained using side information or fusion of compressed measurements, without significantly increasing acquisition costs. Indeed, these approaches retrieve improved resolution images applying iterative and computationally expensive algorithms. This paper proposes the fusion of compressed measurements obtained from two state-of-the-art CSI systems, the single-pixel camera (SPC) and the three-dimensional coded aperture snapshot imaging system (3D-CASSI), such that high-resolution images can be obtained by exploiting detailed spectra provided by the SPC and high spatial resolution of the 3D-CASSI. Specifically, a noniterative reconstruction algorithm is proposed, based on the fact that the spatial-spectral data lie in a low-dimensional subspace. In contrast to related works, the proposed approach relies on implementable CSI systems. Simulations and experimental results show the effectiveness of the proposed method compared to similar approaches, both in reconstruction quality and complexity. Specifically, the proposed method is up to 5.6 times faster than its counterparts and provides comparable quality of attained reconstructions.
机译:压缩光谱成像(CSI)能够使用比传统的扫描方法更少的投影测量来获取场景的光谱和空间信息。最近,研究努力专注于通过昂贵的探测器和复杂的CSI器件获得高分辨率光谱图像。或者,可以使用压缩测量的侧信息或融合来获得高分辨率光谱图像,而不会显着提高采集成本。实际上,这些方法检索应用迭代和计算昂贵的算法的改进的分辨率图像。本文提出了从两个最先进的CSI系统,单像素相机(SPC)和三维编码光圈快照成像系统(3D-CASSI)获得的压缩测量的融合,使得高分辨率可以通过利用由SPC提供的详细光谱和3D CASSI的高空间分辨率来获得图像。具体地,基于空间频谱数据位于低维子空间中的事实,提出了一种非特征重建算法。与相关的作品相比,所提出的方法依赖于可实现的CSI系统。模拟和实验结果表明,与重建质量和复杂性相比,所提出的方法的有效性。具体地,所提出的方法比其对应物速度快于5.6倍,并提供了可比的达到的重建质量。

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