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A flexible architecture for the pre-processing of solar satellite image time series data - the SETL architecture

机译:灵活的架构,用于预处理太阳能卫星图像时间序列数据 - setl架构

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摘要

Satellite image time series (SITS) is a challenging domain for knowledge discovery database due to their characteristics: each image has several sunspots and each sunspot is associated with sensor data composed of the radiation level and the sunspot classifications. Each image has time parameters and sunspots' coordinates, spatiotemporal data. Several challenges of SITS domain are faced during the extract, transform, and load (ETL) process. In this paper, we proposed an architecture called SITS's extract, transform, and load (SETL) that extracts the visual characteristics of each sunspot and associates it with sunspot's sensor data considering the spatiotemporal relations. SETL brings flexibility and extensibility to working with challenging domains such as SITS because it integrates textual, visual and spatiotemporal characteristics at sunspot-record level. Furthermore, we obtained acceptable performance results according to a domain expert and increased the possibility of using different data mining algorithms comparing to the art state.
机译:卫星图像时间序列(SITS)是一个具有挑战性的域名,用于知识发现数据库,因为它们的特性:每个图像都有几个太阳黑子,每个SunSpot都与由辐射电平和太阳黑子分类组成的传感器数据相关联。每个图像都有时间参数和太阳黑子的坐标,时空数据。在提取,转换和加载(ETL)过程中,坐在域的几个挑战面临。在本文中,我们提出了一种称为坐的提取,转换和加载(set1)的架构,该架构提取每个SunSpot的视觉特征,并考虑到时尚关系,将其与SunSpot的传感器数据相关联。 SetL带来了灵活性和可扩展性,以满足挑战域,如坐姿,因为它在Sunspot-Regory水平上集成了文本,视觉和时空特性。此外,我们根据领域专家获得可接受的性能结果,并增加了使用与艺术状态相比的不同数据挖掘算法的可能性。

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