Hyperspectral remote sensing image dimensionality reduction method based on adaptive filtering

Fang Xia, Shiwei Chu, Xiangguo Liu, Guodong Li
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Abstract

With the rapid development of hyperspectral image technology, remote sensing technology has ushered in an innovation in theory and application, and hyperspectral remote sensing images have come into being. However, due to its high data dimensionality, it is difficult for statistical classifiers to work on it, making the technology face development difficulties. Therefore, how to effectively reduce the dimensionality of hyperspectral remote sensing images has gradually become a research hotspot in this field. The study clusters bands by K-means algorithm, and then combines the least mean square algorithm in adaptive filtering and recursive least squares method, and uses this as the basis for band selection. Finally, the dimension reduction effect is verified. The experimental results show that the improved band selection method achieves an overall accuracy of over 80% and 90% in the hyperspectral datasets of Pavia University and Idian Pine respectively, with the Kappa coefficient reaching 0.9. In the overall dimensionality reduction classification of the Indianan data, the accuracy also reaches 90% and can be maintained consistently, indicating that the method has high accuracy and can effectively reduce the dimensionality of hyperspectral remote sensing images.
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基于自适应滤波的高光谱遥感图像降维方法
随着高光谱影像技术的快速发展,遥感技术迎来了理论和应用的创新,高光谱遥感影像应运而生。然而,由于其数据维数较高,统计分类器难以对其进行处理,使得该技术面临发展困难。因此,如何有效地降低高光谱遥感图像的维数逐渐成为该领域的研究热点。研究采用K-means算法对波段进行聚类,然后结合自适应滤波中的最小均方算法和递推最小二乘法,以此作为波段选择的依据。最后,验证了降维效果。实验结果表明,改进的波段选择方法在Pavia University和Idian Pine高光谱数据集上的总体精度分别达到80%和90%以上,Kappa系数达到0.9。在印度数据的整体降维分类中,准确率也达到90%,并能保持一致,说明该方法具有较高的精度,能够有效地对高光谱遥感影像进行降维。
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