School of Electronics and Information Engineering, Hebei University of Technology, Tianjin 300401, China.
School of Mechanical Engineering, Hebei University of Technology, Tianjin 300401, China.
Sensors (Basel). 2019 Jan 24;19(3):479. doi: 10.3390/s19030479.
Hyperspectral Images (HSIs) contain enriched information due to the presence of various bands, which have gained attention for the past few decades. However, explosive growth in HSIs' scale and dimensions causes "Curse of dimensionality" and "Hughes phenomenon". Dimensionality reduction has become an important means to overcome the "Curse of dimensionality". In hyperspectral images, labeled samples are more difficult to collect because they require many labor and material resources. Semi-supervised dimensionality reduction is very important in mining high-dimensional data due to the lack of costly-labeled samples. The promotion of the supervised dimensionality reduction method to the semi-supervised method is mostly done by graph, which is a powerful tool for characterizing data relationships and manifold exploration. To take advantage of the spatial information of data, we put forward a novel graph construction method for semi-supervised learning, called SLIC Superpixel-based l 2 , 1 -norm Robust Principal Component Analysis (SURPCA), which integrates superpixel segmentation method Simple Linear Iterative Clustering (SLIC) into Low-rank Decomposition. First, the SLIC algorithm is adopted to obtain the spatial homogeneous regions of HSI. Then, the l 2 , 1 -norm RPCA is exploited in each superpixel area, which captures the global information of homogeneous regions and preserves spectral subspace segmentation of HSIs very well. Therefore, we have explored the spatial and spectral information of hyperspectral image simultaneously by combining superpixel segmentation with RPCA. Finally, a semi-supervised dimensionality reduction framework based on SURPCA graph is used for feature extraction task. Extensive experiments on multiple HSIs showed that the proposed spectral-spatial SURPCA is always comparable to other compared graphs with few labeled samples.
高光谱图像 (HSI) 由于存在各种波段而包含丰富的信息,在过去几十年中引起了关注。然而,HSI 规模和维度的爆炸式增长导致了“维度灾难”和“休斯现象”。降维已成为克服“维度灾难”的重要手段。在高光谱图像中,由于需要大量的人力和物力资源,标记样本更难收集。由于缺乏昂贵的标记样本,半监督降维在挖掘高维数据方面非常重要。监督降维方法向半监督方法的推广主要是通过图来实现的,图是刻画数据关系和流形探索的有力工具。为了利用数据的空间信息,我们提出了一种新的半监督学习图构建方法,称为 SLIC 基于超像素的 l 2, 1 -范数鲁棒主成分分析 (SURPCA),它将超像素分割方法简单线性迭代聚类 (SLIC) 集成到低秩分解中。首先,采用 SLIC 算法获取 HSI 的空间均匀区域。然后,在每个超像素区域中利用 l 2, 1 -范数 RPCA,捕捉均匀区域的全局信息,并很好地保持 HSIs 的光谱子空间分割。因此,我们通过将超像素分割与 RPCA 相结合,同时探索高光谱图像的空间和光谱信息。最后,使用基于 SURPCA 图的半监督降维框架进行特征提取任务。在多个 HSI 上的广泛实验表明,所提出的谱-空 SURPCA 在具有少量标记样本的情况下始终可与其他比较图相媲美。