Abstract

In order to improve the classification of hyperspectral image(HSI), we propose a novel hyperspectral image classification method based on the comprehensive evaluation model of extreme learning machine(ELM) with the cumulative variation weights(CVW), referred to as ELM with the cumulative variation weights and comprehensive evaluation (CVW-CEELM). To be specific, the cumulative variation value is proposed as a new metric. The inefficient bands are eliminated by the cumulative variation quotient values based on the cumulative variation values. The cumulative variation weights based on the cumulative variation values are used to determine the contribution of each weak ELM classifier to the hyperspectral image classification algorithm. The remaining effective bands are divided by grouping strategy. In each group of the effective bands, the different numbers of bands are selected to reduce the dimension of the hyperspectral image dataset by the weighted random-selecting-based method. After dimensionality reduction, the spatial-spectral features of each pixel are extracted and multiple weak ELM classifiers are trained by the training samples. Then, the results of several weak classifiers are synthetically evaluated by the cumulative variation weights to get the final classification results. Experimental results on the typical hyperspectral image datasets illustrate that the proposed CVW-CEELM has few adjustable parameters to make the operation simple, and outperforms a variety of the image classification counterparts in terms of the calculation cost and classification accuracy.

Highlights

  • In recent years, hyperspectral image classification has attracted much research from the remote sensing community [1]

  • In order to reduce the complexity of classification algorithm and construct the band grouping strategy which is more suitable for the classification of many different types of small size homogeneous areas, we propose a novel hyperspectral image classification algorithm based on the comprehensive evaluation model of extreme learning machine with the cumulative variation weights(CVW-CEELM)

  • We investigate the impact of the number of hidden nodes on the classification performance of CVW-CEELM

Read more

Summary

INTRODUCTION

Hyperspectral image classification has attracted much research from the remote sensing community [1]. Compared with the traditional BP neural network and support vector machine, the advantages of ELM are fast computation, few parameters, better recognition efficiency and generalization ability [15] With these salient advantages, extreme learning machine (ELM) has attracted the attention of a large number of researchers in the area of hyperspectral image classifification and analysis over the past several years. Extreme learning machine with composite kernels for hyperspectral image classification have been proposed in the reference [22] This improved ELM algorithm can not capture accurate spatial information, classification accuracy is still not ideal. Cao et al have proposed linear vs nonlinear extreme learning machine for spectral-spatial classification of hyperspectral image in the reference [23], it works effectively, but its high computation complexity interferes with its application on HSI containing large scenes.

EXTREME LEARNING MACHINE
BAND CUMULATIVE VARLATION FUNCTION
DIMENSIONALITY REDUCTION
SPATIAL-SPECTRAL FEATURE
COMPREHENSIVE EVALUATION MODEL OF ELM BASED ON CVW
EXPERIMENTAL RESULTS
INDIAN PINES
CONCLUSION
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call