Abstract

Submeter high-resolution remote sensing image land cover classification could provide significant help for urban monitoring, management, and planning. Deep learning (DL)-based models have achieved remarkable performance in many land cover classification tasks through end-to-end supervised learning. However, the excellent performance of DL-based models relies heavily on a large number of well-annotated samples, which is impossible in practical land cover classification scenarios. Additionally, the training set could contain all of the different land cover types. To overcome these problems, in this article, a semisupervised multiple-CNN ensemble learning method, namely semi-MCNN, is proposed to solve the land cover classification problem. Considering the lack of labeled samples, a semisupervised learning strategy was adopted to leverage large amounts of unlabeled data. In the proposed approach, an automatic sample selection method called an ensembled teacher model dataset generation was adopted to select samples and generate a dataset from large amounts of unlabeled data automatically. To tackle the error propagation problem, an important strategy was adopted to correct the errors by pretraining on the selected unlabeled data, and fine-tuning on the labeled data. Moreover, the semisupervised idea together with the multi-CNN ensemble framework was integrated into an end-to-end architecture. This could significantly improve the generalization ability of the semisupervised model, as well as the classification accuracy. Experiments were conducted on Shenzhen's land cover data and two other public remote sensing datasets. These experiments confirmed the superior performance of the proposed semi-MCNN compared to the state-of-the-art land cover classification models.

Highlights

  • L AND cover classification is a fundamental task of intelligent interpretation of remote sensing imagery, which aims to classify each pixel into a predefined land cover category

  • 1) Focusing the lack of labeled samples problem on submeter urban land cover classification, we have proposed a simple semisupervised method, which integrates multiple CNNs to enhance the sample evaluation and uses pretrain fine-tuning for error correction

  • The experimental results using the ShenzhenLC dataset indicate that the proposed approach can effectively generate samples using a semisupervised learning strategy, and that the multiple DLbased CNN ensembles can simultaneously improve the accuracy of land cover classification

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Summary

INTRODUCTION

L AND cover classification is a fundamental task of intelligent interpretation of remote sensing imagery, which aims to classify each pixel into a predefined land cover category. To solve the lack of labeled samples problem, a semisupervised learning strategy that started with a small labeled dataset and spread the label to other unlabeled samples was used to leverage the unlabeled submeter high-spatial-resolution remote sensing images In this process, the wrong selection of samples might bring about an error propagation and affect the classification accuracy. Experimental results with the ShenzhenLC dataset and two other widely used public remote sensing datasets showed the superior performance of the proposed semi-MCNN model compared to state-of-the-art land cover classification methods. 1) Focusing the lack of labeled samples problem on submeter urban land cover classification, we have proposed a simple semisupervised method (semi-MCNN), which integrates multiple CNNs to enhance the sample evaluation and uses pretrain fine-tuning for error correction.

RELATED WORK
Supervised-Learning-Based Methods
GAN-Based Methods
Semisupervised-Learning-Based Methods
SEMISUPERVISED MULTI-CNN ENSEMBLE LEARNING METHOD
Semisupervised Learning Strategy
Multiple DL-Based CNN Ensembles
EXPERIMENT AND ANALYSIS
Shenzhen Data and Classification System
Experimental Settings
Experiment 1
Experiment 2
Experiment 3
CONCLUSION
Full Text
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