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Large-Scale Overlays and Trends: Visually Mining, Panning and Zoomingthe Observable Universe

机译:大型叠加图和趋势:视觉上观察,平移和缩放可观察的宇宙

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摘要

We introduce a web-based computing infrastructure to assist the visual integration, mining and interactive navigation of large-scale astronomy observations. Following an analysis of the application domain, we design a client-server architecture to fetch distributed image data and to partition local data into a spatial index structure that allows prefix-matching of spatial objects. In conjunction with hardware-accelerated pixel-based overlays and an online cross-registration pipeline, this approach allows the fetching, displaying, panning and zooming of gigabit panoramas of the sky in real time. To further facilitate the integration and mining of spatial and non-spatial data, we introduce interactive trend images—compact visual representations for identifying outlier objects and for studying trends within large collections of spatial objects of a given class. In a demonstration, images from three sky surveys (SDSS, FIRST and simulated LSST results) are cross-registered and integrated as overlays, allowing cross-spectrum analysis of astronomy observations. Trend images are interactively generated from catalog data and used to visually mine astronomy observations of similar type. The front-end of the infrastructure uses the web technologies WebGL and HTML5 to enable cross-platform, web-based functionality. Our approach attains interactive rendering framerates; its power and flexibility enables it to serve the needs of the astronomy community. Evaluation on three case studies, as well as feedback from domain experts emphasize the benefits of this visual approach to the observational astronomy field; and its potential benefits to large scale geospatial visualization in general.
机译:我们引入了一个基于Web的计算基础架构,以帮助进行大规模天文学观测的视觉集成,挖掘和交互式导航。在对应用程序域进行分析之后,我们设计了一种客户端-服务器体系结构来获取分布式图像数据并将本地数据划分为一个空间索引结构,该结构允许对空间对象进行前缀匹配。结合基于硬件的基于像素的加速叠加和在线交叉注册管道,该方法可以实时获取,显示,平移和缩放天空的千兆位全景图。为了进一步促进空间和非空间数据的集成和挖掘,我们引入了交互式趋势图-紧凑的视觉表示,用于识别异常对象并研究给定类的大量空间对象内的趋势。在演示中,将来自三个天空测量(SDSS,FIRST和模拟的LSST结果)的图像交叉注册并集成为叠加图,从而可以对天文观测进行跨谱分析。趋势图像是从目录数据以交互方式生成的,并用于从视觉上挖掘相似类型的天文学观测结果。基础架构的前端使用Web技术WebGL和HTML5来启用跨平台的基于Web的功能。我们的方法获得交互式渲染帧速率;它的强大功能和灵活性使其能够满足天文学界的需求。对三个案例研究的评估以及领域专家的反馈都强调了这种视觉方法对观测天文学领域的好处;总体而言,它对大规模地理空间可视化具有潜在的好处。

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