Fuzzy learning vector quantization for hyperspectral coastal vegetation classification

被引:85
作者
Filippi, AM
Jensen, JR
机构
[1] Texas A&M Univ, Dept Geog, Coll Geosci, College Stn, TX 77843 USA
[2] Univ S Carolina, Dept Geog, Ctr GIS & Remote Sensing, NASA ARC, Columbia, SC 29208 USA
关键词
remote sensing; hyperspectral methods; artificial neural network; fuzzy sets; learning vector quantization; wetlands;
D O I
10.1016/j.rse.2005.11.007
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Artificial neural networks (ANNs) may be of significant value in extracting vegetation type information in complex vegetation mapping problems, particularly in coastal wetland environments. Unsupervised, self-organizing ANNs have not been employed as frequently as supervised ANNs for vegetation mapping tasks, and further remote sensing research involving fuzzy ANNs is also needed. In this research, the utility of a fuzzy unsupervised ANN, specifically a fuzzy learning vector quantization (FLVQ) ANN, was investigated in the context of hyperspectral AVIRIS image classification. One key feature of the neural approach is that unlike conventional hyperspectral data processing methods, endmembers for a given scene, which can be difficult to deter-mine with confidence, are not required for neural analysis. The classification accuracy of FLVQ was comparable to a conventional supervised multi-layer perceptron, trained with backpropagation (MLP) (KHAT ((K) over cap) accuracy: 82.82% and 84.66%, respectively; normalized accuracy: 74.60% and 75.85%, respectively), with no significant difference at the 95% confidence level. All neural algorithms in the experiment yielded significantly higher classification accuracies than the conventional endmember-based hyperspectral mapping method assessed (i.e., matched filtering, where (K) over cap accuracy=61.00% and normalized accuracy= 57.96%). FLVQ was also dramatically more computationally efficient than the baseline supervised and unsupervised ANN algorithms tested, including the MLP and the Kohonen self-organizing map (SOM), respectively. The 400-neuron FLVQ network required only 3.6% of the computation time used by the MLP network, and only 5.9% of the MLP time was used by the 588-neuron FLVQ network. In addition, the 400-neuron FLVQ used only 16.7% of the time used by the 400-neuron SOM for model development. (c) 2005 Elsevier Inc. All rights reserved.
引用
收藏
页码:512 / 530
页数:19
相关论文
共 61 条
[1]  
ADAMS JB, 1986, J GEOPHYS RES-SOLID, V91, P8098, DOI 10.1029/JB091iB08p08098
[2]  
[Anonymous], 1993, JPL PUBL
[3]  
[Anonymous], Pattern Recognition With Fuzzy Objective Function Algorithms
[4]  
[Anonymous], 2005, INTRO DIGITAL IMAGE
[5]   Automatic classification of land cover on Smith Island, VA, using HyMAP imagery [J].
Bachmann, CM ;
Donato, TF ;
Lamela, GM ;
Rhea, WJ ;
Bettenhausen, MH ;
Fusina, RA ;
Du Bois, KR ;
Porter, JH ;
Truitt, BR .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2002, 40 (10) :2313-2330
[6]   Model transitions in descending FLVQ [J].
Baraldi, A ;
Blonda, P ;
Parmiggiani, F ;
Pasquariello, G ;
Satalino, G .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1998, 9 (05) :724-738
[7]   CONJUGATE-GRADIENT NEURAL NETWORKS IN CLASSIFICATION OF MULTISOURCE AND VERY-HIGH-DIMENSIONAL REMOTE-SENSING DATA [J].
BENEDIKTSSON, JA ;
SWAIN, PH ;
ERSOY, OK .
INTERNATIONAL JOURNAL OF REMOTE SENSING, 1993, 14 (15) :2883-2903
[8]  
BENEDIKTSSON JA, 1994, INT GEOSCIENCE REMOT, V4, P2351
[9]   Supervised fuzzy analysis of single- and multichannel SAR data [J].
Benz, UC .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 1999, 37 (02) :1023-1037
[10]   2 SOFT RELATIVES OF LEARNING VECTOR QUANTIZATION [J].
BEZDEK, JC ;
PAL, NR .
NEURAL NETWORKS, 1995, 8 (05) :729-743