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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A modified stochastic neighbor embedding for multi-feature dimension reduction of remote sensing images
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A modified stochastic neighbor embedding for multi-feature dimension reduction of remote sensing images

机译:改进的随机邻域嵌入用于遥感图像多特征降维

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摘要

In automated remote sensing based image analysis, it is important to consider the multiple features of a certain pixel, such as the spectral signature, morphological property, and shape feature, in both the spatial and spectral domains, to improve the classification accuracy. Therefore, it is essential to consider the complementary properties of the different features and combine them in order to obtain an accurate classification rate. In this paper, we introduce a modified stochastic neighbor embedding (MSNE) algorithm for multiple features dimension reduction (DR) under a probability preserving projection framework. For each feature, a probability distribution is constructed based on t-distributed stochastic neighbor embedding (t-SNE), and we then alternately solve t-SNE and learn the optimal combination coefficients for different features in the proposed multiple features DR optimization. Compared with conventional remote sensing image DR strategies, the suggested algorithm utilizes both the spatial and spectral features of a pixel to achieve a physically meaningful low-dimensional feature representation for the subsequent classification, by automatically learning a combination coefficient for each feature. The classification results using hyperspectral remote sensing images (HSI) show that MSNE can effectively improve RS image classification performance.
机译:在基于自动遥感的图像分析中,重要的是要在空间和光谱域中考虑某个像素的多个特征,例如光谱特征,形态特征和形状特征,以提高分类精度。因此,必须考虑不同特征的互补特性并将其组合起来,以获得准确的分类率。在本文中,我们介绍了一种在概率保持投影框架下用于多特征降维(DR)的改进的随机邻居嵌入(MSNE)算法。对于每个特征,基于t分布随机邻居嵌入(t-SNE)构造概率分布,然后我们交替求解t-SNE,并在提出的多特征DR优化中学习不同特征的最佳组合系数。与传统的遥感图像DR策略相比,该算法通过自动学习每个特征的组合系数,利用像素的空间特征和光谱特征,为后续的分类实现了物理上有意义的低维特征表示。使用高光谱遥感影像(HSI)进行分类的结果表明,MSNE可以有效地提高RS影像的分类性能。

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