Design of Feedforward Neural Networks in the Classification of Hyperspectral Imagery Using Superstructural Optimization

被引:30
作者
Sildir, Hasan [1 ]
Aydin, Erdal [2 ]
Kavzoglu, Taskin [3 ]
机构
[1] Gebze Tech Univ, Chem Engn, TR-41400 Kocaeli, Turkey
[2] Bogazici Univ, Chem Engn, TR-34342 Istanbul, Turkey
[3] Gebze Tech Univ, Geomat Engn, TR-41400 Kocaeli, Turkey
关键词
artificial neural networks; classification; superstructure optimization; mixed-inter nonlinear programming; hyperspectral images; ADAPTIVE MODEL REFORMULATION; OPTIMAL CONFIGURATION; COVER CLASSIFICATION; MAXIMUM-LIKELIHOOD; FEATURE-SELECTION; ALGORITHMS; PERCEPTRON;
D O I
10.3390/rs12060956
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) have been used in a wide range of applications for complex datasets with their flexible mathematical architecture. The flexibility is favored by the introduction of a higher number of connections and variables, in general. However, over-parameterization of the ANN equations and the existence of redundant input variables usually result in poor test performance. This paper proposes a superstructure-based mixed-integer nonlinear programming method for optimal structural design including neuron number selection, pruning, and input selection for multilayer perceptron (MLP) ANNs. In addition, this method uses statistical measures such as the parameter covariance matrix in order to increase the test performance while permitting reduced training performance. The suggested approach was implemented on two public hyperspectral datasets (with 10% and 50% sampling ratios), namely Indian Pines and Pavia University, for the classification problem. The test results revealed promising performances compared to the standard fully connected neural networks in terms of the estimated overall and individual class accuracies. With the application of the proposed superstructural optimization, fully connected networks were pruned by over 60% in terms of the total number of connections, resulting in an increase of 4% for the 10% sampling ratio and a 1% decrease for the 50% sampling ratio. Moreover, over 20% of the spectral bands in the Indian Pines data and 30% in the Pavia University data were found statistically insignificant, and they were thus removed from the MLP networks. As a result, the proposed method was found effective in optimizing the architectural design with high generalization capabilities, particularly for fewer numbers of samples. The analysis of the eliminated spectral bands revealed that the proposed algorithm mostly removed the bands adjacent to the pre-eliminated noisy bands and highly correlated bands carrying similar information.
引用
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页数:19
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