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Steps Toward a Large-Scale Solar Image Data Analysis to Differentiate Solar Phenomena

机译:迈向大规模太阳图像数据分析以区分太阳现象的步骤

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摘要

We detail the investigation of the first application of several dissimilarity measures for large-scale solar image data analysis. Using a solar-domain-specific benchmark dataset that contains multiple types of phenomena, we analyzed combinations of image parameters with different dissimilarity measures to determine the combinations that will allow us to differentiate between the multiple solar phenomena from both intra-class and inter-class perspectives, where by class we refer to the same types of solar phenomena. We also investigate the problem of reducing data dimensionality by applying multi-dimensional scaling to the dissimilarity matrices that we produced using the previously mentioned combinations. As an early investigation into dimensionality reduction, we investigate by applying multidimensional scaling (MDS) how many MDS components are needed to maintain a good representation of our data (in a new artificial data space) and how many can be discarded to enhance our querying performance. Finally, we present a comparative analysis of several classifiers to determine the quality of the dimensionality reduction achieved with this combination of image parameters, similarity measures, and MDS.
机译:本文详细介绍了几种不同性度量在大规模太阳图像数据分析中的首次应用。使用包含多种类型现象的太阳域特定基准数据集,我们分析了具有不同不同度量度的图像参数组合,以确定使我们能够从类内和类间的角度区分多种太阳现象的组合,其中我们按类指的是相同类型的太阳现象。我们还研究了通过对使用前面提到的组合生成的不相似矩阵应用多维缩放来降低数据维度的问题。作为对降维的早期研究,我们通过应用多维缩放 (MDS) 来研究需要多少 MDS 组件来保持数据的良好表示(在新的人工数据空间中),以及可以丢弃多少组件以增强我们的查询性能。最后,我们对几个分类器进行了比较分析,以确定通过图像参数、相似度量和 MDS 的组合实现的降维质量。

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