Abstract

Although the extreme learning machine (ELM) has been successfully applied to hyperspectral image (HSI) classification, the development of the ELM is restricted by insufficient training data. In this article, we propose a novel extreme learning machine-based ensemble transfer learning algorithm for hyperspectral image classification named TL-ELM. TL-ELM not only retains the input weights and hidden biases of the ELM learned from the target domain, but also utilizes instances in the source domain to iteratively adjust the output weights of the ELM, which are used as the weights of the training models, and then ensembles the training models with their weights for the final classification. In experiments, we choose different regions in northern Italy, namely, Pavia University and Pavia Centre, as the source dataset and target dataset, respectively, and through a comparison with other transfer learning algorithms, we demonstrate that our proposed TL-ELM algorithm is superior on HSI classification tasks with only a few labeled data points in the target domain. Furthermore, we set Pavia University as the source dataset and Pavia Centre as the target dataset to demonstrate that our proposed method can effectively transfer useful instances between different HSIs.

Highlights

  • Zhou et al [38] proposed a transfer learning algorithm based on extreme learning machine (ELM) with a weighted least squares approach for hyperspectral image (HSI) classification that learns the classifiers by using the ELM from the source domain and target domain, and adjusts the source and target training data with different weighting strategies

  • We propose a simple and direct ensemble transfer learning algorithm based on the extreme learning machine named TL-ELM

  • In TL-ELM, whether source data are useful is determined by the learner of the target domain, and useful data in the source domain are transferred to the target domain to improve the learner’s ability in the target domain

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Summary

INTRODUCTION

H YPERSPECTRAL remote sensing technology is an important way to observe the earth’s surface [1]. LIU et al.: ELM-BASED ENSEMBLE TRANSFER LEARNING FOR HYPERSPECTRAL IMAGE CLASSIFICATION sensing image classification and an overall centroid alignment coarse-domain adaptation algorithm in conjunction with CCCA, which improved the estimation accuracy and enhanced the incorporation of spatial information. Zhou et al [38] proposed a transfer learning algorithm based on ELM with a weighted least squares approach for HSI classification that learns the classifiers by using the ELM from the source domain and target domain, and adjusts the source and target training data with different weighting strategies. We propose a simple and direct ELM-based ensemble transfer learning algorithm that iteratively transfers the useful instances in the source domain to the target domain to adjust the output weights of the ELM, but the input weights and hidden biases remain the same in each iteration.

Extreme Learning Machine
Instance-Based Transfer Learning
OUR PROPOSED METHOD
Data Preprocessing
Extreme Learning Machine-Based Ensemble Transfer Learning Algorithm
EXPERIMENTS AND ANALYSIS
Data Description and Experiment Design
METHODS
Findings
CONCLUSION
Full Text
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