计算机科学
反距离权重法
数据流挖掘
加权
可扩展性
光栅图形
实时计算
网格
数据挖掘
数据流
插值(计算机图形学)
采样(信号处理)
多元插值
分布式计算
数据库
计算机图形学(图像)
计算机视觉
地理
滤波器(信号处理)
放射科
大地测量学
电信
医学
双线性插值
动画
作者
Qinghan Liang,Silvia Nittel,J. Whittier,S. de Bruin
摘要
Abstract With advances in technology and an increasing variety of inexpensive geosensors, environmental monitoring has become increasingly sensor dense and real time. Using sensor data streams enables real‐time applications such as environmental hazard detection, or earthquake, wildfire, or radiation monitoring. In‐depth analysis of such spatial fields is often based on a continuous representation. With very large numbers of concurrent observation streams, novel algorithms are necessary that integrate streams into rasters, or other continuous representations, continuously in real time. In this article, we present an approach leveraging data stream engines ( DSE s) to achieve scalable, high‐throughput inverse distance weighting ( IDW ). In detail, we designed and implemented a novel stream query operator framework that extends general‐purpose DSE s. The proposed framework includes a two‐panel, spatio‐temporal grid‐based index and several algorithms, namely the Shell and k ‐Shell algorithms, to estimate individual grid cells efficiently and adaptively for different sampling scenarios. For our performance experiments, we generated several different spatio‐temporal stream data sets based on the radiation deposits in the Fukushima region after the nuclear accident of 2011 in Japan. Our results showed that the k ‐Shell algorithm of the proposed framework produces a raster based on 250k observation streams in under 0.5 s using a state‐of‐the‐art workstation.
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