Spectral-Spatial Attention Rotation-Invariant Classification Network for Airborne Hyperspectral Images

被引:8
作者
Shi, Yuetian [1 ,2 ]
Fu, Bin [1 ,2 ]
Wang, Nan [1 ,2 ]
Cheng, Yinzhu [1 ,2 ]
Fang, Jie [3 ]
Liu, Xuebin [1 ]
Zhang, Geng [1 ]
机构
[1] Chinese Acad Sci, Xian Inst Opt & Precis Mech, Key Lab Spectral Imaging Technol CAS, Xian 710100, Peoples R China
[2] Univ Chinese Acad Sci, Beijing 100049, Peoples R China
[3] Xian Univ Posts & Telecommun, Sch Telecommun & Informat Engn, Xian 710061, Peoples R China
基金
中国国家自然科学基金;
关键词
airborne hyperspectral image; hyperspectral image classification; rotation-invariant; local spatial feature enhancement; convolutional neural network; attention mechanism; lightweight feature enhancement; WAVELET TRANSFORM; RESIDUAL NETWORK; FUSION; REPRESENTATION;
D O I
10.3390/drones7040240
中图分类号
TP7 [遥感技术];
学科分类号
081102 ; 0816 ; 081602 ; 083002 ; 1404 ;
摘要
An airborne hyperspectral imaging system is typically equipped on an aircraft or unmanned aerial vehicle (UAV) to capture ground scenes from an overlooking perspective. Due to the rotation of the aircraft or UAV, the same region of land cover may be imaged from different viewing angles. While humans can accurately recognize the same objects from different viewing angles, classification methods based on spectral-spatial features for airborne hyperspectral images exhibit significant errors. The existing methods primarily involve incorporating image or feature rotation angles into the network to improve its accuracy in classifying rotated images. However, these methods introduce additional parameters that need to be manually determined, which may not be optimal for all applications. This paper presents a spectral-spatial attention rotation-invariant classification network for the airborne hyperspectral image to address this issue. The proposed method does not require the introduction of additional rotation angle parameters. There are three modules in the proposed framework: the band selection module, the local spatial feature enhancement module, and the lightweight feature enhancement module. The band selection module suppresses redundant spectral channels, while the local spatial feature enhancement module generates a multi-angle parallel feature encoding network to improve the discrimination of the center pixel. The multi-angle parallel feature encoding network also learns the position relationship between each pixel, thus maintaining rotation invariance. The lightweight feature enhancement module is the last layer of the framework, which enhances important features and suppresses insignificance features. At the same time, a dynamically weighted cross-entropy loss is utilized as the loss function. This loss function adjusts the model's sensitivity for samples with different categories according to the output in the training epoch. The proposed method is evaluated on five airborne hyperspectral image datasets covering urban and agricultural regions. Compared with other state-of-the-art classification algorithms, the method achieves the best classification accuracy and is capable of effectively extracting rotation-invariant features for urban and rural areas.
引用
收藏
页数:29
相关论文
共 61 条
[1]   Evaluating the performance of the wavelet transform in extracting spectral alteration features from hyperspectral images [J].
Abdolmaleki, Mehdi ;
Fathianpour, Nader ;
Tabaei, Morteza .
INTERNATIONAL JOURNAL OF REMOTE SENSING, 2018, 39 (19) :6076-6094
[2]   ETR: Enhancing transformation reduction for reducing dimensionality and classification complexity in hyperspectral images [J].
AL-Alimi, Dalal ;
Cai, Zhihua ;
Al-qaness, Mohammed A. A. ;
Alawamy, Eman Ahmed ;
Alalimi, Ahamed .
EXPERT SYSTEMS WITH APPLICATIONS, 2023, 213
[3]   Robust Classification Technique for Hyperspectral Images Based on 3D-Discrete Wavelet Transform [J].
Anand, R. ;
Veni, S. ;
Aravinth, J. .
REMOTE SENSING, 2021, 13 (07)
[4]   Deep Learning for Classification of Hyperspectral Data [J].
Audebert, Nicolas ;
Le Saux, Bertrand ;
Lefevre, Sebastien .
IEEE GEOSCIENCE AND REMOTE SENSING MAGAZINE, 2019, 7 (02) :159-173
[5]   Hyperspectral Image Classification With Markov Random Fields and a Convolutional Neural Network [J].
Cao, Xiangyong ;
Zhou, Feng ;
Xu, Lin ;
Meng, Deyu ;
Xu, Zongben ;
Paisley, John .
IEEE TRANSACTIONS ON IMAGE PROCESSING, 2018, 27 (05) :2354-2367
[6]   Integration of 3-dimensional discrete wavelet transform and Markov random field for hyperspectral image classification [J].
Cao, Xiangyong ;
Xu, Lin ;
Meng, Deyu ;
Zhao, Qian ;
Xu, Zongben .
NEUROCOMPUTING, 2017, 226 :90-100
[7]  
[岑奕 Cen Yi], 2020, [遥感学报, Journal of Remote Sensing], V24, P1299
[8]   Rotation Invariant Transformer for Recognizing Object in UAVs [J].
Chen, Shuoyi ;
Ye, Mang ;
Du, Bo .
PROCEEDINGS OF THE 30TH ACM INTERNATIONAL CONFERENCE ON MULTIMEDIA, MM 2022, 2022, :2565-2574
[9]   Deep Learning-Based Classification of Hyperspectral Data [J].
Chen, Yushi ;
Lin, Zhouhan ;
Zhao, Xing ;
Wang, Gang ;
Gu, Yanfeng .
IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2014, 7 (06) :2094-2107
[10]   Multi-scale receptive fields: Graph attention neural network for hyperspectral image classification [J].
Ding, Yao ;
Zhang, Zhili ;
Zhao, Xiaofeng ;
Hong, Danfeng ;
Cai, Wei ;
Yang, Nengjun ;
Wang, Bei .
EXPERT SYSTEMS WITH APPLICATIONS, 2023, 223