A deep learning approach to water point detection and mapping using street-level imagery

Neil Patel
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Abstract

Households in developing countries often rely on alternative shared water sources that exist outside of the datasets of public service providers. This poses a significant challenge to accurately measuring the number of households outside the public service system that use a safe and accessible water source. This article proposes a novel deep learning approach that utilizes a convolutional neural network to detect water points in street-level imagery from Google Street View. Using a case study of the Agege local government area in Lagos, Nigeria, the model detected 36 previously unregistered water points with 94.7% precision.
利用街道级图像进行水点检测和绘图的深度学习方法
发展中国家的家庭通常依赖公共服务提供商数据集之外的其他共享水源。这对精确测量公共服务系统之外使用安全、方便水源的家庭数量提出了巨大挑战。本文提出了一种新颖的深度学习方法,利用卷积神经网络来检测谷歌街景中街景图像中的供水点。通过对尼日利亚拉各斯 Agege 地方政府区域的案例研究,该模型以 94.7% 的精确度检测到了 36 个以前未登记的供水点。
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