HYPERSPECTRAL IMAGE CLASSIFICATION USING UNCERTAINTY AND DIVERSITY BASED ACTIVE LEARNING

被引:0
作者
Patel U. [1 ]
Dave H. [1 ]
Patel V. [2 ]
机构
[1] Nirma University, Ahmedabad
[2] Vishwakarma Government Engineering College, GTU
来源
Scalable Computing | 2021年 / 22卷 / 03期
关键词
Active Learning (AL); Convolutional Neural Network (CNN); Deep Learning (DL); Diversity; Hyperspectral Image (HSI) Classification; Uncertainty;
D O I
10.12694/SCPE.V22I3.1865
中图分类号
学科分类号
摘要
There has been extensive research in the field of Hyperspectral Image Classification using deep neural networks. The deep learning based approaches requires huge amount of labelled data samples. But in the case of Hyperspectral Image, there are less number of labelled data samples. Therefore, we can adopt Active Learning combined with deep learning based approaches to be able to extract most informative data samples. By using this technique, we can train the classifier to achieve better classification accuracies with less number of labelled data samples. There is considerable amount of research carried out for selecting diverse data samples from the pool of unlabeled data samples. We present a novel diversity-based Active Learning approach utilizing the information of clustered data distribution. We incorporate diversity criteria with Active Learning selection criteria and combine it with Convolutional Neural Network for feature extraction and classification. This approach helps us in obtaining most informative and diverse data samples. We have compared our proposed approach with three other sampling methods in terms of classification accuracies, Cohen Kappa score, which shows that our approach gives better results with comparison to other sampling methods. © 2021. SCPE.
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页码:283 / 293
页数:10
相关论文
共 36 条
  • [1] Arulampalam G., A generalised feedforward neural network architecture and its applications to classification and regression, (2004)
  • [2] Bandos T. V., Bruzzone L., Camps-Valls G., Classification of hyperspectral images with regularized linear discriminant analysis, IEEE Transactions on Geoscience and Remote Sensing, 47, pp. 862-873, (2009)
  • [3] Brinker K., Incorporating diversity in active learning with support vector machines, Proceedings of the 20th international conference on machine learning (ICML-03), pp. 59-66, (2003)
  • [4] Bruzzone L., Persello C., Active learning for classification of remote sensing images, 2009 IEEE International Geoscience and Remote Sensing Symposium, 3, pp. III-693, (2009)
  • [5] Campbell C., Cristianini N., Smola A., Et al., Query learning with large margin classifiers, ICML, 20, (2000)
  • [6] Cao X., Yao J., Xu Z., Meng D., Hyperspectral image classification with convolutional neural network and active learning, IEEE Transactions on Geoscience and Remote Sensing, (2020)
  • [7] Ceamanos X., Waske B., Benediktsson J. A., Chanussot J., Fauvel M., Sveinsson J. R., A classifier ensemble based on fusion of support vector machines for classifying hyperspectral data, International Journal of Image and Data Fusion, 1, pp. 293-307, (2010)
  • [8] Chen Y., Zhao X., Jia X., Spectral-spatial classification of hyperspectral data based on deep belief network, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 8, pp. 2381-2392, (2015)
  • [9] Copa L., Tuia D., Volpi M., Kanevski M., Unbiased query-by-bagging active learning for vhr image classification, Image and Signal Processing for Remote Sensing XVI, 7830, (2010)
  • [10] Demir B., Bruzzone L., A novel active learning method in relevance feedback for content-based remote sensing image retrieval, IEEE Transactions on Geoscience and Remote Sensing, 53, pp. 2323-2334, (2014)