使用开源框架的高维多元时间序列数据可视化

Meenakshi S. Krishnamoorthy, S. U.
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引用次数: 0

摘要

多元时间序列在统计学、信号处理、模式识别、计量经济学、天气预报、地震预报等方面都有着重要的应用。如何选择合适的技术对高维数据进行可视化处理,以获得有意义的信息,是一项非常繁琐的工作。在本文中,我们使用了一个名为Visbrain的开源包,以优化的方式对高维多变量医疗保健数据进行可视化。它涉及两个维度的反思:(1)与极可配置的视觉原生体(EEG和ECG源的可用性,等等)对话的问题;(2)用于更高数量连接的图形ui。文章级提供了适应性和可测量的设备,用于传递和计算机化数字的生成,并以一种比较的方式处理带有子图的Matplotlib。第二次元向外通过图形界面控制属性和通信将这些文章联系起来。当前版本的Visbrain(版本0.4.4)包含14个不同的项目和3个自定义图形界面,与PyQt: Signal一起工作,用于控制转瞬即逝的和幽灵般的属性。每个模块都是与最终客户(主要是神经科学家和领域专家)密切合作创建的,他们利用自己的经验使Visbrain尽可能简单地用于编年史模式(例如颅内脑电图,心电图,头皮脑电图,MEG,解剖和有用的MRI)。本文讨论了可视化分析的特点和各个模块,以了解当前可视化分析领域的研究趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Dimensional Multivariate Time Series Data Visualization Using an Open Source Framework
Multivariate Time Series plays a major part in statistics, signal processing, pattern recognition, econometrics, weather forecasting and earthquake prediction etc. It is very tedious task to select the appropriate technique to visualize the high-dimensional data in order to get insight or meaningful information. In this paper, we used an Open Source package named as Visbrain to visualize high-dimensional multivariate healthcare data in optimized way. It involves two dimensions of reflection:

(1) questions that speak to exceedingly configurable visual natives (availability of EEG and ECG sources, and so forth.) and

(2) graphical UIs for more elevated amount connections.

The article level offers adaptable and measured devices for delivering and computerizing the generation of numbers with a comparative way to deal with that of Matplotlib with subplots. The second dimension outwardly associates these articles by controlling properties and communications by means of graphical interfaces. The present form of Visbrain (rendition 0.4.4) contains 14 distinct items and three custom graphical interfaces, worked with PyQt: Signal, for the control of fleeting and ghostly properties. Every module has been created in close cooperation with end clients, mostly neuroscientists and area specialists, who utilize their experience to make Visbrain as straightforward as feasible for the chronicle modalities (eg intracranial EEG, ECG, scalp EEG, MEG, anatomical and useful MRI). The paper disscuses the features and various modules for current understanding research trends in the field of Visual Analytics.
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