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Hyperspectral Image Classification With Small Training Sample Size Using Superpixel-Guided Training Sample Enlargement

机译:使用超像素指导的训练样本放大并以小样本进行训练的高光谱图像分类

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摘要

Hyperspectral image (HSI) classification (HIC) has attracted much attention in the last decade. Spectral-spatial HIC methods have been the state-of-the-art methods in recent years. Small labeled training sample size (SLTSS) problem is still an important issue in HIC. This paper presents a spectral-spatial HIC method that is based on superpixel (SP) segmentation and distance-weighted linear regression classifier to tackle the SLTSS problem. First, SP segmentation is applied to the original HSI. Then, those SPs that contain training samples belonging to only one class are first searched out, and all the pixels of each of these SPs are assigned to the class of the training samples it contains. Next, with the identified labels, all these classified pixels are added to the initial training sample set for training sample set enlargement. Later, using this enlarged training sample set, the distance-weighted linear regression classifier is applied to classify each mean vector of each SP. Finally, the last classification map is obtained by assigning each SP with the same label as its mean vector. Experimental results on three HSI data sets demonstrate that the proposed approach can solve SLTSS problem very well and outperforms several state-of-theart algorithms in classification accuracy under different training samples sizes.
机译:在过去的十年中,高光谱图像(HSI)分类(HIC)引起了很多关注。光谱空间HIC方法是近年来最先进的方法。小标签训练样本量(SLTSS)问题仍然是HIC中的重要问题。本文提出了一种基于超像素(SP)分割和距离加权线性回归分类器的光谱空间HIC方法来解决SLTSS问题。首先,将SP分段应用于原始HSI。然后,首先搜索出仅包含属于一个类别的训练样本的那些SP,并且将这些SP中的每一个的所有像素分配给它所包含的训练样本的类别。接下来,利用识别出的标签,将所有这些分类的像素添加到初始训练样本集中,以扩大训练样本集。随后,使用此扩大的训练样本集,应用距离加权线性回归分类器对每个SP的每个平均向量进行分类。最后,通过为每个SP分配与其平均向量相同的标签来获得最后的分类图。在三个HSI数据集上的实验结果表明,该方法可以很好地解决SLTSS问题,并且在不同训练样本大小下,其分类精度优于几种最新算法。

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