Fast Hyperspectral Reconstruction for Neutron Computed Tomography Using Subspace Extraction
Hyperspectral neutron computed tomography enables 3D non-destructive imaging of the spectral characteristics of materials. In traditional hyperspectral reconstruction, the data for each neutron wavelength bin is reconstructed separately. This per-bin reconstruction is extremely time-consuming due to...
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Zusammenfassung: | Hyperspectral neutron computed tomography enables 3D non-destructive imaging
of the spectral characteristics of materials. In traditional hyperspectral
reconstruction, the data for each neutron wavelength bin is reconstructed
separately. This per-bin reconstruction is extremely time-consuming due to the
typically large number of wavelength bins. Furthermore, these reconstructions
may suffer from severe artifacts due to the low signal-to-noise ratio in each
wavelength bin.
We present a novel fast hyperspectral reconstruction algorithm for
computationally efficient and accurate reconstruction of hyperspectral neutron
data. Our algorithm uses a subspace extraction procedure that transforms
hyperspectral data into low-dimensional data within an intermediate subspace.
This step effectively reduces data dimensionality and spectral noise.
High-quality reconstructions are then performed within this low-dimensional
subspace. Finally, the algorithm expands the subspace reconstructions into
hyperspectral reconstructions. We apply our algorithm to measured neutron data
and demonstrate that it reduces computation and improves reconstruction quality
compared to the conventional approach. |
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DOI: | 10.48550/arxiv.2411.13557 |