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Deep Green Diagnostics: Urban Green Space Analysis Using Deep Learning and Drone Images

机译:深度绿色诊断:使用深度学习和无人机图像进行城市绿色空间分析

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摘要

Nowadays, more than half of the world’s population lives in urban areas, and this number continues increasing. Consequently, there are more and more scientific publications that analyze health problems of people associated with living in these highly urbanized locations. In particular, some of the recent work has focused on relating people’s health to the quality and quantity of urban green areas. In this context, and considering the huge amount of land area in large cities that must be supervised, our work seeks to develop a deep learning-based solution capable of determining the level of health of the land and to assess whether it is contaminated. The main purpose is to provide health institutions with software capable of creating updated maps that indicate where these phenomena are presented, as this information could be very useful to guide public health goals in large cities. Our software is released as open source code, and the data used for the experiments presented in this paper are also freely available.
机译:如今,全球一半以上的人口居住在城市地区,而且这一数字还在不断增加。因此,越来越多的科学出版物分析了生活在这些高度城市化地区的人们的健康问题。特别是最近的一些工作着重于将人们的健康状况与城市绿地的质量和数量联系起来。在这种情况下,考虑到大城市中必须监管的大量土地面积,我们的工作旨在开发一种基于深度学习的解决方案,该解决方案能够确定土地的健康水平并评估其是否受到污染。主要目的是为卫生机构提供能够创建更新地图的软件,以指示出现这些现象的地点,因为该信息对于指导大城市的公共卫生目标非常有用。我们的软件以开放源代码的形式发布,并且本文中提供的用于实验的数据也可以免费获得。

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