太阳图像中感兴趣区域检测的无监督学习技术

J. Banda, R. Angryk
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引用次数: 2

摘要

图像中兴趣区域的识别是一个非常活跃的研究问题,因为它高度依赖于图像的类型和特征。在本文中,我们提出了一种比较评估的无监督学习方法,特别是聚类,以识别来自太阳动力学天文台(SDO)任务的太阳图像中的roi。为了在太阳图像中找到包含潜在太阳现象的区域,这项工作着重于描述一种自动化的、无监督的方法,该方法将使我们在试图在多组图像之间找到类似的太阳现象时减少图像搜索空间。通过对多种方法的实验,我们确定了一种成功的方法来自动检测roi,以便在SDO基于内容的图像检索(CBIR)系统中进行更精细和健壮的搜索。然后,我们提出了一个广泛的实验评估,以确定我们的方法在与专家策划的roi重叠方面的最佳表现参数。最后,我们在几个图像检索场景中对所提出的方法进行了详尽的评估,以证明所识别的roi的性能与SDO任务的专用科学模块所识别的roi非常相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Learning Techniques for Detection of Regions of Interest in Solar Images
Identifying regions of interest (ROIs) in images is a very active research problem as it highly depends on the types and characteristics of images. In this paper we present a comparative evaluation of unsupervised learning methods, in particular clustering, to identify ROIs in solar images from the Solar Dynamics Observatory (SDO) mission. With the purpose of finding regions within the solar images that contain potential solar phenomena, this work focuses on describing an automated, non-supervised methodology that will allow us to reduce the image search space when trying to find similar solar phenomenon between multiple sets of images. By experimenting with multiple methods, we identify a successful approach to automatically detecting ROIs for a more refined and robust search in the SDO Content-Based Image-Retrieval (CBIR) system. We then present an extensive experimental evaluation to identify the best performing parameters for our methodology in terms of overlap with expert curated ROIs. Finally we present an exhaustive evaluation of the proposed approach in several image retrieval scenarios to demonstrate that the performance of the identified ROIs is very similar to that of ROIs identified by dedicated science modules of the SDO mission.
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