Adaptive hierarchical clustering for hyperspectral image classification: Umbrella Clustering

Q3 Chemistry
S. S. P. Vithana, E. Ekanayake, E. Ekanayake, A. Rathnayake, Gihan Chanaka Jayatilaka, Hmspb Herath, G. Godaliyadda, Mevan Ekanayake
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引用次数: 3

Abstract

Hyperspectral Imaging (HSI) utilises the reflectance information of a large number of contiguous spectral bands to solve various problems. However, the relative proximity of spectral signatures among classes can be exploited to generate an adaptive hierarchical structure for HSI classification. This enables a level by level optimisation for clustering at each stage of the hierarchy. The Umbrella Clustering algorithm, introduced in this work, utilises this premise to significantly improve performance compared to non-hierarchical algorithms which attempt to optimise clustering globally. The key feature of the proposed methodology is that, unlike existing hierarchical algorithms which rely on fixed or supervised structures, the proposed method exploits a mechanism in spectral clustering to generate a self-organised hierarchy. The algorithm gradually zooms into the feature space to identify levels of clustering at each stage of the hierarchy. The results further demonstrate that the generated structure tallies with human perception. In addition, an improvement to Linear Discriminant Analysis (LDA) is also introduced to further improve performance. This modification maximises the pairwise class separation in the feature space. The entire algorithm includes this modified LDA step which requires a certain amount of class information in terms of features, at the training phase. The classification algorithm which incorporates all novel concepts was tested on the HSI data set of Pavia University as well the database of Common Sri Lankan Spices and Adulterants in order to assess the versatility of the algorithm.
用于高光谱图像分类的自适应层次聚类:伞形聚类
高光谱成像(HSI)利用大量连续光谱带的反射率信息来解决各种问题。然而,可以利用类之间频谱特征的相对接近性来生成用于HSI分类的自适应分层结构。这使得能够在层次结构的每个阶段对集群进行逐层优化。本工作中引入的Umbrella聚类算法利用这一前提,与试图全局优化聚类的非分层算法相比,显著提高了性能。所提出方法的关键特征是,与现有的依赖于固定或监督结构的分层算法不同,所提出的方法利用频谱聚类中的一种机制来生成自组织层次。该算法逐渐放大到特征空间中,以识别层次结构的每个阶段的聚类级别。结果进一步证明,生成的结构符合人类的感知。此外,还引入了对线性判别分析(LDA)的改进,以进一步提高性能。这种修改最大化了特征空间中的成对类分离。整个算法包括这个修改的LDA步骤,该步骤在训练阶段需要在特征方面的一定量的类信息。在帕维亚大学的HSI数据集以及斯里兰卡常见香料和成人数据库上测试了包含所有新概念的分类算法,以评估该算法的通用性。
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来源期刊
Journal of Spectral Imaging
Journal of Spectral Imaging Chemistry-Analytical Chemistry
CiteScore
3.90
自引率
0.00%
发文量
11
审稿时长
22 weeks
期刊介绍: JSI—Journal of Spectral Imaging is the first journal to bring together current research from the diverse research areas of spectral, hyperspectral and chemical imaging as well as related areas such as remote sensing, chemometrics, data mining and data handling for spectral image data. We believe all those working in Spectral Imaging can benefit from the knowledge of others even in widely different fields. We welcome original research papers, letters, review articles, tutorial papers, short communications and technical notes.
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