Abstract

Recently, ensemble learning paradigm has shown great potential to achieve better prediction performance in the hyperspectral image classification. However, in the traditional methods, each classifier independently searches for the optimal spectral feature subspace in series and some important features are searched repeatedly, which leads to high computing redundancy and low effective utilization of features. In this article, an evolutionary multitask ensemble learning model (EMT_EL) for hyperspectral image classification is designed. First, the model formulates the spectral feature subspaces generation into a multitask optimization problem to concurrently search for optimal feature subspaces for multiple classifiers, which would be capable to select more informative and representative feature subspaces effectively. Second, seeking the optimal feature subspace for one base classifier can assist in the optima-seeking process for some other base classifiers via sharing the useful features, which can accelerate converge toward the direction of the optimal feature subspace, avoid trapping in local optimal subspace and improve searching capability. Third, randomization-enhanced genetic operators are designed for effective and reasonable feature selection, which can facilitate the exchange of information and improve the joint searching efficiency of the feature subspace. Eventually, the quality of generated spectral feature subspaces for each base classifier is improved and the feature sharing can parse HSI data by knowing which spectral features are important. Experimental results demonstrate that the proposed method can generate the appropriate feature subspace for each base classifier, thus it has outstanding classification performance on the different hyperspectral datasets.

Highlights

  • R EMOTE sensing (RS) images contain a wealth of landcover information [1], they occupy an important position in earth observation

  • Traditional Hyperspectral imagery (HSI) classification methods like support vector machines (SVM) method [8], random forest (RoF) method [54], random subspace ensemble classifiers (RSE) [31], and simultaneous orthogonal matching pursuit (SOMP) [55] method are compared as baselines

  • From the comparison between RSE and STO_EL, we can clearly observe that the overall accuracy (OA) is increased to 93.10% from 87.23%

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Summary

INTRODUCTION

R EMOTE sensing (RS) images contain a wealth of landcover information [1], they occupy an important position in earth observation. Random feature subspace-based studies [16]–[18] optimize parameters of multiple classifiers or integrate some ascendant classifiers, which have presented more effective and robust performances instead of training a single classifier to classify hyperspectral images Few of these methods comprehensively consider the useful and redundant band information, which may lead to low robustness and poor classification performance. Searching optimal spectral feature subspaces play a key role in a successful ensemble learning based HSI classification method. Some works have explored a strategy that identifies informative and representative samples from the abundant unlabeled data, inducted unlabeled data into a very limited set of training samples These methods offer possibility to reduce the number of noisy points and grow the training dataset in a systematic way [14], [29]–[31].

Problem Statement and Literature Review
Brief Introduction to Evolutionary Multitask Optimization
Motivation of the Proposed Method
Proposed Overall Model
1: Input D
Evolutionary Multitask Spectral Feature Subspaces Generation
Dynamic Selection of Training Set for Reducing Isolated Points
EXPERIMENTS
Experimental Results on Three Datasets
Analysis of the Parameters
Analysis of Computational Efficiency
Findings
CONCLUSION
Full Text
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