基于流形学习的高光谱图像降维分类

Zezhong Zheng, Pengxu Chen, Mingcang Zhu, Zhiqin Huang, Yufeng Lu, Yicong Feng, Jiang Li
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引用次数: 0

摘要

高光谱遥感图像由数百个波段组成,包含丰富的空间、辐射和光谱信息。高维数据也会导致维数问题,难以有效利用。在本文中,我们提出了一种流形学习算法来降低HSI数据的维数。对于具有连续变量的高维数据集,数据点通常与高维空间中的低维结构(称为流形)一起排列。流形学习的目的是识别那些特殊的低维结构,以便后续使用,如分类或回归。然而,许多流形学习算法对大小为N * N的数据相似矩阵执行特征向量分析,其中N是数据点的数量。分析的内存复杂度至少为0 (N2),这对于普通计算机来说是不可行的,无法计算或存储非常大的数据集。为了解决这个问题,我们使用统计抽样方法对数据点子集进行采样作为地标。然后根据地标确定歧管的骨架。然后将剩余的数据点通过局部线性嵌入(LLE)插入到骨架中。我们在AVIRIS Salinas-A数据集上测试了我们的算法。实验结果表明,HSI数据集可以较好地降维到低维空间进行土地利用分类,且主体结构得到较好的保留。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel manifold learning for dimensionality reduction and classification with hyperspectral image
Hyperspectral remote sensing image (HSI) consists of hundreds of bands that contain rich space, radiation and spectral information. The high-dimensional data can also lead to the course of dimensionality problem making it difficult to be used effectively. In this paper, we proposed a manifold learning algorithm to reduce the dimensionality for HSI data. For high dimensional datasets with continuous variables, it is often the case that the data points are arranged along with low dimensional structures, named manifolds, in the high dimensional space. Manifold learning aims to identifying those special low dimensional structures for subsequent usage such as classification or regression. However, many manifold learning algorithms perform an eigenvector analysis on a data similarity matrix whose size is N∗N, where N is the number of data points. The memory complexity of the analysis is at least O(N2) that is not feasible for a regular computer to compute or storage for very large datasets. To solve this problem, we used statistical sampling methods to sample a subset of data points as landmarks. A skeleton of the manifold was then identified based on the landmarks. The remaining data points were then inserted into the skeleton by Locally Linear Embedding (LLE). We tested our algorithm on AVIRIS Salinas-A data set. The experimental results showed that the HSI dataset could be reduced to a lower-dimensional space for land use classification with good performance, and the main structure was preserved well.
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