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A graph-based clustering method with special focus on hyperspectral imaging

机译:一种基于图的聚类方法,具有特殊焦点高光谱成像

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A common trait of the more established clustering algorithms such as K-Means and HCA is their tendency to focus mainly on the bulk features of the data which causes minor features to be attributed to larger clusters. For hyperspectral imaging this has the consequence that substances which are covered by only a few pixels tend to be overlooked and thus cannot be separated. If small lateral features such as particles are the research objective this might be the reason why cluster analysis fails. Therefore we propose a novel graph-based clustering algorithm dubbed GBCC which is sensitive to small variations in data density and scales its clusters according to the underlying structures. The analysis of the proposed method covers a comparison to K-Means, DBSCAN and KNSC using a 2D artificial dataset. Further the method is evaluated on a multisensor image of atmospheric particulate matter composed of Raman and EDX data as well as an FTIR image of microplastics. (C) 2019 Published by Elsevier B.V.
机译:诸如K-Means和HCA的更建立的聚类算法的共同特征是它们主要关注数据的批量特征,这导致较小的特征归因于更大的集群。对于高光谱成像,这使得仅被几个像素覆盖的物质倾向于被忽略,因此不能分开。如果诸如粒子的小横向特征是研究目标,这可能是群集分析失败的原因。因此,我们提出了一种基于GBC的基于GBC的基于GBC的聚类算法,其对数据密度的小变化敏感,并根据底层结构缩放其群集。所提出的方法的分析涵盖了使用2D人工数据集与K-Means,DBSCAN和KNSC的比较。此外,对由拉曼和EDX数据组成的大气颗粒物质的多用户图像以及微塑料的FTIR图像评估该方法。 (c)2019年由elestvier b.v发布。

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