Tensor Decompositions for Hyperspectral Data Processing in Remote
Sensing: A Comprehensive Review
- URL: http://arxiv.org/abs/2205.06407v1
- Date: Fri, 13 May 2022 00:39:23 GMT
- Title: Tensor Decompositions for Hyperspectral Data Processing in Remote
Sensing: A Comprehensive Review
- Authors: Minghua Wang, Danfeng Hong, Zhu Han, Jiaxin Li, Jing Yao, Lianru Gao,
Bing Zhang, Jocelyn Chanussot
- Abstract summary: hyperspectral (HS) remote sensing (RS) imaging has provided a significant amount of spatial and spectral information for the observation and analysis of the Earth's surface.
The recent advancement and even revolution of the HS RS technique offer opportunities to realize the full potential of various applications.
Due to the maintenance of the 3-D HS inherent structure, tensor decomposition has aroused widespread concern and research in HS data processing tasks.
- Score: 85.36368666877412
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Owing to the rapid development of sensor technology, hyperspectral (HS)
remote sensing (RS) imaging has provided a significant amount of spatial and
spectral information for the observation and analysis of the Earth's surface at
a distance of data acquisition devices, such as aircraft, spacecraft, and
satellite. The recent advancement and even revolution of the HS RS technique
offer opportunities to realize the full potential of various applications,
while confronting new challenges for efficiently processing and analyzing the
enormous HS acquisition data. Due to the maintenance of the 3-D HS inherent
structure, tensor decomposition has aroused widespread concern and research in
HS data processing tasks over the past decades. In this article, we aim at
presenting a comprehensive overview of tensor decomposition, specifically
contextualizing the five broad topics in HS data processing, and they are HS
restoration, compressed sensing, anomaly detection, super-resolution, and
spectral unmixing. For each topic, we elaborate on the remarkable achievements
of tensor decomposition models for HS RS with a pivotal description of the
existing methodologies and a representative exhibition on the experimental
results. As a result, the remaining challenges of the follow-up research
directions are outlined and discussed from the perspective of the real HS RS
practices and tensor decomposition merged with advanced priors and even with
deep neural networks. This article summarizes different tensor
decomposition-based HS data processing methods and categorizes them into
different classes from simple adoptions to complex combinations with other
priors for the algorithm beginners. We also expect this survey can provide new
investigations and development trends for the experienced researchers who
understand tensor decomposition and HS RS to some extent.
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