“MAPPING PUBLIC SPACE MICRO-OCCUPATIONS: Drone-Driven Predictions of Spatial Behaviors in Carapungo, Quito”

IF 2.6 3区 经济学 Q2 ENVIRONMENTAL STUDIES
Víctor Cano-Ciborro, Ana Medina, Alejandro Burgueño, Mario González-Rodríguez, Daniel Díaz, María Rosa Zambrano
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Abstract

This study evaluates the spatial behavior of an intermodal transportation hub in Carapungo, one of the densest neighborhoods in Quito, Ecuador. This public infrastructure is deficient and lacks adequate equipment for the people who use, occupy, and transit within and around it, as well as for the numerous activities that occur, particularly at Carapungo’s Entry Park. Traditional methods for analyzing urban dynamics and land use are typically rigid and fail to grasp the complex and nonlinear nature of public spaces, especially in informal Global South cities. However, recent advancements in Artificial Intelligence and Machine Learning, combined with aerial drone videos, have enabled the modeling and prediction of urban dynamics beyond state regulations and formal planning. In this context, we developed a model using Computer Vision Technology and the YOLOv5 algorithm, incorporating Deep Learning training. The objective is twofold: firstly, to detect people, their movement and speed; and secondly, to produce “Occupancy” and “Count & Speed” cartographies that highlight commuters’ spatial patterns. These situated cartographies provide valuable insights into urban design, mobility, and interaction within a conflicted public space’s-built environment. The generated data offer planners and policymakers quantitative spatial information to consider local practices and dynamics in urban planning, particularly in situations of informality and insufficient urban infrastructure.
"绘制公共空间微型占用图:无人机驱动的基多卡拉蓬戈空间行为预测"
本研究对厄瓜多尔基多最密集的街区之一卡拉蓬戈的多式联运枢纽的空间行为进行了评估。该公共基础设施存在缺陷,缺乏足够的设备,无法满足人们在其内部和周围使用、居住和转运的需要,也无法满足众多活动的需要,尤其是在卡拉蓬戈入口公园。分析城市动态和土地利用的传统方法通常比较僵化,无法把握公共空间复杂和非线性的性质,尤其是在非正式的全球南部城市。然而,人工智能和机器学习领域的最新进展与无人机航拍视频相结合,使得对城市动态的建模和预测超越了国家法规和正式规划的范畴。在此背景下,我们利用计算机视觉技术和 YOLOv5 算法,结合深度学习训练,开发了一个模型。我们的目标有两个:首先,检测人员及其移动和速度;其次,制作 "占用率 "和 "计数& 速度 "地图,突出通勤者的空间模式。这些情景制图为城市设计、流动性和冲突公共空间建筑环境中的互动提供了宝贵的见解。生成的数据为规划者和决策者提供了量化的空间信息,以便在城市规划中考虑当地的实践和动态,尤其是在非正规性和城市基础设施不足的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.10
自引率
11.40%
发文量
159
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