Artificial Neural Network and Machine Learning Based Methods for Population Estimation of Rohingya Refugees: Comparing Data-Driven and Satellite Image-Driven Approaches

Nahian Ahmed, Nazmul Alam Diptu, M. Shadhin, M. A. F. Jaki, M. Hasan, M. Islam, R. Rahman
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引用次数: 3

Abstract

Manual field-based population census data collection method is slow and expensive, especially for refugee management situations where more frequent censuses are necessary. This study aims to explore the approaches of population estimation of Rohingya migrants using remote sensing and machine learning. Two different approaches of population estimation viz., (i) data-driven approach and (ii) satellite image-driven approach have been explored. A total of 11 machine learning models including Artificial Neural Network (ANN) are applied for both approaches. It is found that, in situations where the surface population distribution is unknown, a smaller satellite image grid cell length is required. For data-driven approach, ANN model is placed fourth, Linear Regression model performed the worst and Gradient Boosting model performed the best. For satellite image-driven approach, ANN model performed the best while Ada Boost model has the worst performance. Gradient Boosting model can be considered as a suitable model to be applied for both the approaches.
基于人工神经网络和机器学习的罗兴亚难民人口估计方法:比较数据驱动和卫星图像驱动的方法
手工实地人口普查数据收集方法缓慢而昂贵,特别是在需要更频繁地进行人口普查的难民管理情况下。本研究旨在探索利用遥感和机器学习对罗兴亚移民进行人口估计的方法。已经探讨了两种不同的人口估计方法,即(i)数据驱动的方法和(ii)卫星图像驱动的方法。两种方法共应用了包括人工神经网络(ANN)在内的11种机器学习模型。研究发现,在地表种群分布未知的情况下,需要较小的卫星图像网格单元长度。对于数据驱动方法,人工神经网络模型排名第四,线性回归模型表现最差,梯度增强模型表现最好。对于卫星图像驱动方法,ANN模型表现最好,Ada Boost模型表现最差。梯度增强模型是两种方法都适用的模型。
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