A Survey on Hyperspectral Image Restoration: From the View of Low-Rank Tensor Approximation
The ability of capturing fine spectral discriminative information enables hyperspectral images (HSIs) to observe, detect and identify objects with subtle spectral discrepancy. However, the captured HSIs may not represent true distribution of ground objects and the received reflectance at imaging ins...
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Zusammenfassung: | The ability of capturing fine spectral discriminative information enables
hyperspectral images (HSIs) to observe, detect and identify objects with subtle
spectral discrepancy. However, the captured HSIs may not represent true
distribution of ground objects and the received reflectance at imaging
instruments may be degraded, owing to environmental disturbances, atmospheric
effects and sensors' hardware limitations. These degradations include but are
not limited to: complex noise (i.e., Gaussian noise, impulse noise, sparse
stripes, and their mixtures), heavy stripes, deadlines, cloud and shadow
occlusion, blurring and spatial-resolution degradation and spectral absorption,
etc. These degradations dramatically reduce the quality and usefulness of HSIs.
Low-rank tensor approximation (LRTA) is such an emerging technique, having
gained much attention in HSI restoration community, with ever-growing
theoretical foundation and pivotal technological innovation. Compared to
low-rank matrix approximation (LRMA), LRTA is capable of characterizing more
complex intrinsic structure of high-order data and owns more efficient learning
abilities, being established to address convex and non-convex inverse
optimization problems induced by HSI restoration. This survey mainly attempts
to present a sophisticated, cutting-edge, and comprehensive technical survey of
LRTA toward HSI restoration, specifically focusing on the following six topics:
Denoising, Destriping, Inpainting, Deblurring, Super--resolution and Fusion.
The theoretical development and variants of LRTA techniques are also
elaborated. For each topic, the state-of-the-art restoration methods are
compared by assessing their performance both quantitatively and visually. Open
issues and challenges are also presented, including model formulation,
algorithm design, prior exploration and application concerning the
interpretation requirements. |
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DOI: | 10.48550/arxiv.2205.08839 |