使用机器学习预测行人数量

Molly Asher, Y. Oswald, N. Malleson
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引用次数: 0

摘要

摘要城市人口动态研究一直是一个重要的研究领域。特别是,准确预测一个地点和时间的行人数量的能力对于城市管理、人口健康、犯罪和量化公共事件的影响至关重要。然而,由于数据可用性有限,以及难以捕捉行人数量与外部因素之间的非线性关系,分析周围人口的规模和特征可能极其困难。本文报告了一个正在进行的项目,该项目使用机器学习技术:(i)更好地理解建筑环境和其他背景因素(如天气条件)在白天对行人数量的影响;(ii)预测不同情况下的行人数目。案例研究区域是澳大利亚的墨尔本,那里有丰富的行人计数数据。早期的结果表明,从广义上讲,模型似乎表现得足够好,可以使用,并且模型误差在空间或时间上并不一致(有些时间/地点比其他时间/地点更容易预测)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Pedestrian Counts using Machine Learning
Abstract. The study of urban population dynamics has long been an important area of research. In particular, the ability to accurately predict the number of pedestrians in a place and time is critical for urban management, population health, crime, and for quantifying the impacts of public events. However, it can be extremely difficult to analyse the size and characteristics of the ambient population due to limited data availability and difficulties in capturing non-linear relationships between pedestrian counts and external factors. This paper reports on an ongoing project that is using machine learning techniques to: (i) better understand the impact that the built environment and other contextual factors, such as weather conditions, will have on the size of the pedestrian population during the day and; (ii) predict the number of pedestrians under different conditions. The case study area is the city of Melbourne, Australia, where abundant pedestrian count data exist. Early results demonstrate that, broadly, the model appears to perform sufficiently well to be useful, and that modelling errors are not consistent across space or time (some times/places are easier to predict than others).
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