Hyperspectral Image Classification with Spatial Filtering and \(l_{(2,1)}\) Norm
Recently, the sparse representation based classification methods have received particular attention in the classification of hyperspectral imagery. However, current sparse representation based classification models have not considered all the test pixels simultaneously. In this paper, we propose a h...
Main Authors: | , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
MDPI AG
2017-02-01
|
Series: | Sensors |
Subjects: | |
Online Access: | http://www.mdpi.com/1424-8220/17/2/314 |
id |
doaj-3e4e5b8a41be42b7ad490ed657cccc92 |
---|---|
record_format |
Article |
spelling |
doaj-3e4e5b8a41be42b7ad490ed657cccc922020-11-24T21:17:50ZengMDPI AGSensors1424-82202017-02-0117231410.3390/s17020314s17020314Hyperspectral Image Classification with Spatial Filtering and \(l_{(2,1)}\) NormHao Li0Chang Li1Cong Zhang2Zhe Liu3Chengyin Liu4School of Mathematics and Computer Science, Wuhan Polytechnic University, Wuhan 430023, ChinaSchool of Electronic Information and Communications, Huazhong University of Science and Technology, Wuhan 430074, ChinaSchool of Mathematics and Computer Science, Wuhan Polytechnic University, Wuhan 430023, ChinaSchool of Electronic Information and Communications, Huazhong University of Science and Technology, Wuhan 430074, ChinaSchool of Electronic Information and Communications, Huazhong University of Science and Technology, Wuhan 430074, ChinaRecently, the sparse representation based classification methods have received particular attention in the classification of hyperspectral imagery. However, current sparse representation based classification models have not considered all the test pixels simultaneously. In this paper, we propose a hyperspectral classification method with spatial filtering and \(l_{(2,1)}\) norm (SFL) that can deal with all the test pixels simultaneously. The \(l_{(2,1)}\) norm regularization is used to extract relevant training samples among the whole training data set with joint sparsity. In addition, the \(l_{(2,1)}\) norm loss function is adopted to make it robust for samples that deviate significantly from the rest of the samples. Moreover, to take the spatial information into consideration, a spatial filtering step is implemented where all the training and testing samples are spatially averaged with its nearest neighbors. Furthermore, the non-negative constraint is added to the sparse representation matrix motivated by hyperspectral unmixing. Finally, the alternating direction method of multipliers is used to solve SFL. Experiments on real hyperspectral images demonstrate that the proposed SFL method can obtain better classification performance than some other popular classifiers.http://www.mdpi.com/1424-8220/17/2/314alternating direction method of multipliershyperspectral classificationoutliersspatial filtering and \(l_{(2,1)}\) norm (SFL) |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hao Li Chang Li Cong Zhang Zhe Liu Chengyin Liu |
spellingShingle |
Hao Li Chang Li Cong Zhang Zhe Liu Chengyin Liu Hyperspectral Image Classification with Spatial Filtering and \(l_{(2,1)}\) Norm Sensors alternating direction method of multipliers hyperspectral classification outliers spatial filtering and \(l_{(2,1)}\) norm (SFL) |
author_facet |
Hao Li Chang Li Cong Zhang Zhe Liu Chengyin Liu |
author_sort |
Hao Li |
title |
Hyperspectral Image Classification with Spatial Filtering and \(l_{(2,1)}\) Norm |
title_short |
Hyperspectral Image Classification with Spatial Filtering and \(l_{(2,1)}\) Norm |
title_full |
Hyperspectral Image Classification with Spatial Filtering and \(l_{(2,1)}\) Norm |
title_fullStr |
Hyperspectral Image Classification with Spatial Filtering and \(l_{(2,1)}\) Norm |
title_full_unstemmed |
Hyperspectral Image Classification with Spatial Filtering and \(l_{(2,1)}\) Norm |
title_sort |
hyperspectral image classification with spatial filtering and \(l_{(2,1)}\) norm |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2017-02-01 |
description |
Recently, the sparse representation based classification methods have received particular attention in the classification of hyperspectral imagery. However, current sparse representation based classification models have not considered all the test pixels simultaneously. In this paper, we propose a hyperspectral classification method with spatial filtering and \(l_{(2,1)}\) norm (SFL) that can deal with all the test pixels simultaneously. The \(l_{(2,1)}\) norm regularization is used to extract relevant training samples among the whole training data set with joint sparsity. In addition, the \(l_{(2,1)}\) norm loss function is adopted to make it robust for samples that deviate significantly from the rest of the samples. Moreover, to take the spatial information into consideration, a spatial filtering step is implemented where all the training and testing samples are spatially averaged with its nearest neighbors. Furthermore, the non-negative constraint is added to the sparse representation matrix motivated by hyperspectral unmixing. Finally, the alternating direction method of multipliers is used to solve SFL. Experiments on real hyperspectral images demonstrate that the proposed SFL method can obtain better classification performance than some other popular classifiers. |
topic |
alternating direction method of multipliers hyperspectral classification outliers spatial filtering and \(l_{(2,1)}\) norm (SFL) |
url |
http://www.mdpi.com/1424-8220/17/2/314 |
work_keys_str_mv |
AT haoli hyperspectralimageclassificationwithspatialfilteringandl21norm AT changli hyperspectralimageclassificationwithspatialfilteringandl21norm AT congzhang hyperspectralimageclassificationwithspatialfilteringandl21norm AT zheliu hyperspectralimageclassificationwithspatialfilteringandl21norm AT chengyinliu hyperspectralimageclassificationwithspatialfilteringandl21norm |
_version_ |
1726011879801749504 |