Unsupervised Feature-Learning for Hyperspectral Data with Autoencoders

被引:35
作者
Windrim, Lloyd [1 ]
Ramakrishnan, Rishi [2 ]
Melkumyan, Arman [1 ]
Murphy, Richard J. [1 ]
Chlingaryan, Anna [1 ]
机构
[1] Univ Sydney, Australian Ctr Field Robot, Sydney, NSW 2006, Australia
[2] Baymatob Operat Pty Ltd, Sydney, NSW 2040, Australia
关键词
autoencoders; unsupervised feature-learning; hyperspectral; deep learning; PRINCIPAL COMPONENT ANALYSIS; FEATURE-EXTRACTION; CLASSIFICATION; DIMENSIONALITY; VARIABILITY; REDUCTION; MODEL;
D O I
10.3390/rs11070864
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
This paper proposes novel autoencoders for unsupervised feature-learning from hyperspectral data. Hyperspectral data typically have many dimensions and a significant amount of variability such that many data points are required to represent the distribution of the data. This poses challenges for higher-level algorithms which use the hyperspectral data (e.g., those that map the environment). Feature-learning mitigates this by projecting the data into a lower-dimensional space where the important information is either preserved or enhanced. In many applications, the amount of labelled hyperspectral data that can be acquired is limited. Hence, there is a need for feature-learning algorithms to be unsupervised. This work proposes unsupervised techniques that incorporate spectral measures from the remote-sensing literature into the objective functions of autoencoder feature learners. The proposed techniques are evaluated on the separability of their feature spaces as well as on their application as features for a clustering task, where they are compared against other unsupervised feature-learning approaches on several different datasets. The results show that autoencoders using spectral measures outperform those using the standard squared-error objective function for unsupervised hyperspectral feature-learning.
引用
收藏
页数:19
相关论文
共 50 条
[1]  
[Anonymous], 1979, INFORM RETRIEVAL
[2]  
Bengio P., 2006, Advances in Neural Information Processing Systems 19 (NIPS06), P153, DOI DOI 10.5555/2976456.2976476
[3]  
Bishop C. M., 2006, PATTERN RECOGNITION, DOI DOI 10.1117/1.2819119
[4]   AUTO-ASSOCIATION BY MULTILAYER PERCEPTRONS AND SINGULAR VALUE DECOMPOSITION [J].
BOURLARD, H ;
KAMP, Y .
BIOLOGICAL CYBERNETICS, 1988, 59 (4-5) :291-294
[5]   An information-theoretic approach to spectral variability, similarity, and discrimination for hyperspectral image analysis [J].
Chang, CI .
IEEE TRANSACTIONS ON INFORMATION THEORY, 2000, 46 (05) :1927-1932
[6]   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
[7]  
Cheriyadat A, 2003, INT GEOSCI REMOTE SE, P3420
[8]   Unsupervised Feature Learning for Aerial Scene Classification [J].
Cheriyadat, Anil M. .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2014, 52 (01) :439-451
[9]   Unsupervised target detection in hyperspectral images using projection pursuit [J].
Chiang, SS ;
Chang, CI ;
Ginsberg, IW .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2001, 39 (07) :1380-1391
[10]  
Clark R.N., 2007, USGS Digital Spectral Library splib06a (Data Series), DOI DOI 10.3133/DS231