火山灰样本维度分析的监测节点网络

B. Andò, S. Baglio, S. Castorina, S. Graziani, Alberto Campisi, V. Marletta
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引用次数: 1

摘要

为了满足城市和空中交通的实际需要,以及管理其对人类健康的影响,必须对火山灰颗粒粒度进行调查。本文提出的方法依赖于基于计算机视觉的方法,通过传感节点网络自动检测火山灰粒度,提供高空间分辨率的信息。介绍了系统架构,以及提出的图像处理方法,旨在提取收集到的火山灰样本的统计数据。还讨论了系统特性。给出了在重复性、实验变异性和系统精度方面得到的结果。
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A Network of Monitoring Nodes to Analyze Dimensions of Volcanic Ash Samples
The investigation of volcanic ash particles granulometry is mandatory in order to cope with real needs of both urban and air traffic, as well as to manage its effect to human health. The approach presented in this paper relies on a computer vision-based methodology for the automatic detection of volcanic ash granulometry through a network of sensing nodes, providing high spatial resolution information, is proposed. The system architecture is presented, along with the proposed image processing methodology aimed to extract statistics on the collected sample of volcanic ash. The system characterization is also addressed. Results obtained in terms of repeatability, experimental variability and the system accuracy are given.
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