Predicting Socio-Economic Development Using Deep Learning

Aditya Singh, Devesh Pandey, Anuj Pandey, S. Latam
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Abstract

— For Uniform growth across the country there is a need to find socio-economic status and monitoring of remote areas. It is about the current state of development or the process state of socio-economy of that place. In our paper, we will predict the development in an location using satellite images provided by various sources using a model that we create which will perform classification and use various image preprocessing techniques. The top things considered during monitoring are the roof top of houses, agriculture, water bodies and constructed roads etc. Convolution neural networks are known for its inbuilt libraries such as OpenCV, NumPy etc. OpenCV is good library has it known for increasing speed of process that is executing and also classifying the image. CNN also provides better accuracy for deep learning processes. In this paper we have use basically three modules:
利用深度学习预测社会经济发展
-为了全国的统一增长,需要查明社会经济状况和监测偏远地区。它是关于当地社会经济发展的现状或过程状态。在我们的论文中,我们将使用我们创建的模型来执行分类并使用各种图像预处理技术,使用各种来源提供的卫星图像来预测一个位置的发展。在监测过程中,首要考虑的是房屋屋顶、农业、水体和已建成的道路等。卷积神经网络以其内置的库而闻名,如OpenCV, NumPy等。OpenCV是一个很好的库,它以提高执行过程的速度和对图像进行分类而闻名。CNN还为深度学习过程提供了更好的准确性。在本文中我们主要使用了三个模块:
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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