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Predicting bicycling and walking traffic using street view imagery and destination data

机译:使用街景图像和目的地数据预测骑自行车和行走流量

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摘要

Few studies predict spatial patterns of bicycling and walking across multiple cities using street level data. This study aims to model bicycle and pedestrian traffic at 4145 count locations across 20 U.S. cities using new micro-scale variables: (1) destinations from Google Point of Interest data (e.g., restaurants, schools) and (2) pixel classification from Google Street View imagery (e.g., sidewalks, trees, streetlights). We applied machine learning algorithms to assess how well street-level variables predict bicycling and walking rates. Adding street-level variables improved out-of-sample prediction accuracy of bicycling and walking activities. We also found that street-level variables (10-fold CV R-2: 0.82-0.88) may be a useful alternative to Census data (0.85-0.88). Macro-scale factors (e.g., zoning) captured by Census data and micro-scale factors (e. g., streetscapes) captured in our street-level data are both useful for predicting active travel. Our models provide a new tool for estimating and understanding the spatial patterns of active travel.
机译:很少有研究预测使用街道水平数据预测骑自行车的空间模式和行走的空间模式。本研究旨在使用新的微级变量在20个美国城市的4145个计数位置模拟自行车和行人交通:(1)来自Google兴趣数据(例如,餐馆,学校)和(2)像谷歌街的像素分类的目的地查看图像(例如,人行道,树木,路灯)。我们应用了机器学习算法,以评估街道级变量如何预测骑自行车和步行率。添加街道级别变量提高了自行车和步行活动的样本预测精度。我们还发现街道级别变量(10倍CV R-2:0.82-0.88)可能是人口普查数据的有用替代品(0.85-0.88)。由人口普查数据和微尺度因子捕获的宏观尺度因子(例如,分区)在我们的街道级数据中捕获的微尺度因子(例如,街景)既有用才能预测主动旅行。我们的模型提供了一种估计和理解活动旅行空间模式的新工具。

著录项

  • 来源
    《Transportation Research》 |2021年第1期|102651.1-102651.10|共10页
  • 作者单位

    Virginia Tech Sch Publ & Int Affairs 140 Otey St Blacksburg VA 24061 USA;

    Rutgers State Univ Edward J Bloustein Sch Planning & Publ Policy 33 Livingston Ave New Brunswick NJ 08901 USA;

    Ohio State Univ Dept Geog 154 N Oval Mall Columbus OH 43210 USA;

    Oregon State Univ Coll Publ Hlth & Human Sci 2520 Campus Way Corvallis OR 97331 USA;

    Harvard Med Sch Dept Populat Med 401 Pk Dr Boston MA 02215 USA|Harvard Pilgrim Hlth Care Inst 401 Pk Dr Boston MA 02215 USA|Harvard TH Chan Sch Publ Hlth Dept Environm Hlth 677 Huntington Ave Boston MA 02115 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Physical activity; Activity space; Direct-demand model; Non-motorized transport;

    机译:身体活动;活动空间;直接需求模型;非机动运输;
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