The accuracy and completeness of population estimation would significantly impact the allocation of public resources. However, the current census paradigm experiences a non-negligible level of under-counting. Existing solutions to this problem by the Census Bureau is to increase canvassing efforts, which leads to expensive and inefficient usage of human resources. In this work, we argue that the existence of hidden multi-family households is a significant cause of under-counting. Accordingly, we introduce a low-cost but high-accuracy method that combines satellite imagery and deep learning technologies to identify hidden multi-family (HMF) households. With comprehensive knowledge of the HMF households, the efficiency and effectiveness of the decennial census could be vastly improved. An extensive experiment demonstrates that our approach can discover over 1800 undetected HMF in a single zipcode of the Houston area.
翻译:人口估计的准确性和完整性将极大地影响公共资源分配。然而,目前的人口普查模式经历了不可忽略的低统计水平。普查局对这一问题的现有解决办法是加大调查力度,导致花费昂贵和低效率地使用人力资源。在这项工作中,我们认为,存在隐蔽的多家庭家庭住户是计算不足的重要原因。因此,我们采用了低成本但高准确性的方法,将卫星图像和深层次学习技术结合起来,以识别隐蔽的多家庭住户。如果全面了解多家庭住户,十年一次的人口普查的效率和成效可以大大提高。一项广泛的实验表明,我们的方法可以在休斯敦地区的单一拉链条中发现1800多个未发现的HMF。