2019
DOI: 10.3390/rs11242897
|View full text |Cite
|
Sign up to set email alerts
|

Sparse Unmixing for Hyperspectral Image with Nonlocal Low-Rank Prior

Abstract: Hyperspectral unmixing is a key preprocessing technique for hyperspectral image analysis. To further improve the unmixing performance, in this paper, a nonlocal low-rank prior associated with spatial smoothness and spectral collaborative sparsity are integrated together for unmixing the hyperspectral data. The proposed method is based on a fact that hyperspectral images have self-similarity in nonlocal sense and smoothness in local sense. To explore the spatial self-similarity, nonlocal cubic patches are group… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
3
1
1

Citation Types

0
5
0

Year Published

2020
2020
2024
2024

Publication Types

Select...
8

Relationship

1
7

Authors

Journals

citations
Cited by 13 publications
(6 citation statements)
references
References 68 publications
0
5
0
Order By: Relevance
“…The objective function in [32] is similar to (20), hence it can be known that the update rule of Q 2 is:…”
Section: Optimizationmentioning
confidence: 99%
See 1 more Smart Citation
“…The objective function in [32] is similar to (20), hence it can be known that the update rule of Q 2 is:…”
Section: Optimizationmentioning
confidence: 99%
“…However, the NMF framework that regards unmixing as a blind source separation problem is non-convex problem with respect to two matrices obtained, which is greatly affected by the initial value and the solution is not stable enough [11]. Therefore, to improve the performance of unmixing, many regularizations are added to the NMF framework based on the prior knowledge about hyperspectral data, such as sparse regularization [12][13][14], smoothing regularization [15,16], non-local similarity regularization [17], manifold regularization [18], and low-rank regularization [19,20]. Hong et al [21] embed the spectral variability dictionary learning into the linear NMF framework to make the endmembers more accurate.…”
Section: Introductionmentioning
confidence: 99%
“…Update iteration i = i + 1 12. end while hyperspectral datasets and one real hyperspectral dataset. We compare the unmixing performance of the proposed method with the performance of several state-of-the-art methods, such as the CLSUnSAL method [40], SUnSAL with TV regularization (SUnSAL-TV) method [45], joint local abundance sparse unmixing (J-LASU) method [60], sparse unmixing with l 1 -l 2 sparsity and TV regularization (l 1 -l 2 SUnSAL-TV) method [74], and the sparse unmixing with nonlocal low-rank prior (NLLRSU) method [75].…”
Section: Initialization: Setmentioning
confidence: 99%
“…Reference [20] combines the joint-sparse-blocks with low-rank constraint. Reference [21] proposed nonlocal low-rank prior sparse unmixing algorithm and achieved promising results.…”
Section: Introductionmentioning
confidence: 99%