Processing Collections of Geo-Referenced Images for Natural Disasters

Fernando Loor, V. Gil-Costa, Mauricio Marín
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Abstract

After disaster strikes, emergency response teams need to work fast. In this context, crowdsourcing has emerged as a powerful mechanism where volunteers can help to process different tasks such as processing complex images using labeling and classification techniques. In this work we propose to address the  problem of how to efficiently process large volumes of georeferenced images using crowdsourcing in the context of high risk such as natural disasters. Research on citizen science and crowdsourcing indicates that volunteers should be able to contribute in a useful way with a limited time to a project, supported by the results of usability studies. We present the design of a platform for real-time processing of georeferenced images. In particular, we focus on the interaction between the crowdsourcing and the volunteers connected to a P2P network.
自然灾害中地理参考图像的处理
灾难发生后,应急小组需要快速工作。在这种背景下,众包作为一种强大的机制出现了,志愿者可以帮助处理不同的任务,比如使用标签和分类技术处理复杂的图像。在这项工作中,我们建议解决如何在自然灾害等高风险环境下使用众包有效处理大量地理参考图像的问题。关于公民科学和众包的研究表明,志愿者应该能够在可用性研究结果的支持下,在有限的时间内以有用的方式为项目做出贡献。我们设计了一个实时处理地理参考图像的平台。我们特别关注众包和志愿者之间的互动,这些志愿者连接到一个P2P网络。
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