Abstract

This paper introduces a novel semi-supervised tri-training classification algorithm based on diversity measurement for hyperspectral imagery. In this algorithm, three measures of diversity, i.e., double-fault measure, disagreement metric and correlation coefficient, are applied to select the optimal classifier combination from different classifiers, e.g., support vector machine (SVM), multinomial logistic regression (MLR), extreme learning machine (ELM) and k-nearest neighbor (KNN). Then, unlabeled samples are selected using an active learning (AL) method, and consistent results of any other two classifiers combined with a spatial neighborhood information extraction strategy are employed to predict their labels. Moreover, a multi-scale homogeneity (MSH) method is utilized to refine the classification result with the highest accuracy in the classifier combination, generating the final classification result. Experiments on three real hyperspectral data indicate that the proposed approach can effectively improve classification performance.

Highlights

  • Conventional supervised classification algorithms (e.g., decision tree (DT) [1], naive Bayesian (NB) [2] and back propagation neural network (BPNN) [3]) can provide satisfying classification performance and have been widely used in traditional data classification, such as web page classification [4,5], medical image classification [6,7] and face recognition [8]

  • The best reported accuracy from [27] for the multinomial logistic regression (MLR) + k-nearest neighbor (KNN) + SNI (i.e., SNI is the spatial neighbor information) method and from [43] for the semi-supervised classification algorithm based on spatial-spectral cluster (C-S2C) and the semi-supervised classification algorithm based on spectral cluster (SC-SC) is shown

  • Unlabeled samples were selected using the active learning (AL) method and the consistent results of another two classifiers combined with spatial neighborhood information to predict the labels of unlabeled samples

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Summary

A Novel Tri-Training Technique for Semi-Supervised

Key Laboratory for Satellite Mapping Technology and Applications of State Administration of Surveying, Mapping and Geoinformation of China, Nanjing University, Nanjing 210023, China. Received: 27 June 2016; Accepted: 4 September 2016; Published: 12 September 2016

Introduction
Tri-Training
Classifier Selection
Unlabeled Sample Selection
Multi-Scale Homogeneity Method
Semi-Supervised Classification Framework
Data Used in the Experiments
Parameter Setting
Experiment on the Indian Pine Dataset
Iteration Method
Classification maps for all all ofthe the methods with the AVIRIS Indian
Experiment on the University of Pavia Dataset
Overall classification accuracies obtainedfor forthe theROSIS
Valley
Findings
Discussion
Conclusions
Full Text
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