Detection of Anomalous Components in Spatial Surveys Based on a Multidimensional Model of Poisson Flows and their Cognitive Visualization

V. Gorokhov, I. Brusakova
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Abstract

The paper proposes a technique for detecting anomalous components in spatial scans of multidimensional data in the tasks of multidimensional reviews in GIS technologies. Detection of anomalous components is carried out on the basis of unbiased algorithms under conditions of deep a priori uncertainty regarding the parameters of the distributions of survey data. The results of the detection are controlled by means of cognitive computer graphics. The methods are used to process multidimensional data of astronomical observations. These methods are very successfully applied in astrophysics and can be used for a wide range of tasks in BIG DATA. The methodology of such a combination can also be focused on the identification and forecasting of emergency situations in complex systems.
基于泊松流多维模型的空间测量异常分量检测及其认知可视化
本文提出了一种在GIS技术中多维回顾任务中检测多维数据空间扫描异常成分的方法。在调查数据分布参数具有深度先验不确定性的条件下,基于无偏算法进行异常成分的检测。检测结果由认知计算机图形学控制。该方法用于处理天文观测的多维数据。这些方法非常成功地应用于天体物理学,可以用于大数据的广泛任务。这种结合的方法也可以集中在复杂系统的紧急情况的识别和预测上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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