研究目的
To address the issue of the absence of labeled samples in hyperspectral images (HSIs) for deep learning-based feature extraction methods by proposing a novel modified generative adversarial network (GAN) for unsupervised training of a deep learning-based feature extractor.
研究成果
The proposed modified GAN framework effectively addresses the issue of the absence of labeled samples in HSIs for deep learning-based feature extraction. It successfully trains a deep learning-based feature extractor without supervision, extracting high-quality spatial and spectral features for classification. Experimental results on three real data sets validate the method's effectiveness, showing significant improvements in classification performance compared to supervised and conventional unsupervised methods.
研究不足
The size of spatial neighborhood window of inputs influences the quality of obtained features, and an inappropriate size may lead to the inclusion of too many pixels belonging to other classes, potentially damaging feature quality. The training proportion between discriminator and generator also affects feature quality, requiring careful tuning.
1:Experimental Design and Method Selection:
The study proposes a modified GAN framework consisting of a generator and a discriminator for unsupervised feature extraction in HSIs. The generator is designed based on a fully deconvolutional subnetwork, and the discriminator is based on a fully convolutional subnetwork. A novel min–max cost function utilizing the Wasserstein distance is designed for training the GAN without supervision.
2:Sample Selection and Data Sources:
The experiments are conducted on three real HSI data sets: Indian Pines, Pavia University, and Salinas. Each pixel with its spatial neighborhood is taken as a training sample.
3:List of Experimental Equipment and Materials:
A Nvidia Tesla K40c GPU is used for accelerating the execution time of the proposed networks.
4:Experimental Procedures and Operational Workflow:
The training process involves the generator mapping latent low-dimension data to generated samples and the discriminator assigning labels to the input data. The well-trained discriminator serves as the feature extractor. The training is implemented using the Adam optimization method with mini-batch stochastic optimization.
5:Data Analysis Methods:
The quality of extracted features is evaluated based on classification performance using three classifiers: SVM, KNN, and LR. Classification performance is assessed using overall accuracy (OA), average accuracy (AA), and Kappa coefficient (KC).
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