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首页> 外文期刊>Journal of earth system science >A new neuro-fuzzy-based classification approach for hyperspectral remote sensing images
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A new neuro-fuzzy-based classification approach for hyperspectral remote sensing images

机译:一种新的基于神经模糊的高光谱遥感影像分类方法

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摘要

Hyperspectral images are widely used in many applications. However, finding the appropriate hyperspectral image classification technique is a challenge. In this paper, we propose a new method by using an artificial intelligence-based method for hyperspectral image classification. The system has two parts: first, a pre-processing step, which helps the training phase to work faster; and second, the training part, which consists of calculating the neuro-fuzzy parameters. The prepared system is then applied to the classification of images. Three well-known hyperspectral datasets, including Pavia University from reflective optics system imaging spectrometer, the Botswana image from Hyperion and the Indian Pine image from airborne visible/infrared imaging spectrometer, were chosen to test the method. The final results of the experiments show that this system outperforms two classical methods of hyperspectral classification: support vector machine and spectral angle mapper. The comparison of the final results was made using two different metrics: overall accuracy and total disagreement. The proposed method increases the overall accuracy by about 5% for the Pavia University dataset, 2% for the Botswana dataset and 7% for the Indian Pine dataset. The total disagreement was reduced by about 0.01 for the Pavia University, 0.03 for the Botswana and 0.1 for the Indian Pine dataset when the proposed method was applied.
机译:高光谱图像被广泛用于许多应用中。然而,找到合适的高光谱图像分类技术是一个挑战。在本文中,我们提出了一种基于人工智能的高光谱图像分类方法。该系统包括两个部分:第一,预处理步骤,可帮助训练阶段更快地进行工作;第二,训练部分,包括计算神经模糊参数。然后将准备好的系统应用于图像分类。选择了三个著名的高光谱数据集来测试该方法,包括反射光学系统成像光谱仪的帕维亚大学,海波龙的博茨瓦纳图像和机载可见/红外成像光谱仪的印度松图像。实验的最终结果表明,该系统优于两种经典的高光谱分类方法:支持向量机和光谱角度映射器。最终结果的比较使用两种不同的指标进行:总体准确性和总体分歧。所提出的方法将Pavia University数据集的整体准确性提高了约5%,将博茨瓦纳数据集的整体准确性提高了2%,将Indian Pine数据集的整体准确性提高了7%。当使用建议的方法时,帕维亚大学的总分歧减少了约0.01,博茨瓦纳减少了0.03,印度松数据集减少了0.1。

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