Graffiti and government in smart cities: a Deep Learning approach applied to Medellín City, Colombia

IF 2.2 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Data Pub Date : 2021-04-05 DOI:10.1145/3460620.3460749
Javier Rozo Alzate, Marta S. Tabares-Betancur, Paola Vallejo-Correa
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引用次数: 3

Abstract

Graffiti is an element of graphic expression that manifests different states of the human being. However, for many governments worldwide, it has been an element of discord between them and the communities that express themselves through graffitis. This article proposes identifying graffiti and concentration zones through Computer Vision and object detection and localization to support public policy management in smart cities. ASUM-DM methodology is used to achieve the aim. Initially, the current problems faced by municipal governments in the management of public graffiti policy are identified. Then available datasets of images from Google Street View (GSV) and other acquired datasets are identified for the case study carried out in the city of Medellín (Colombia) and border municipalities. A training dataset of 1,395 images and a production dataset of 71,100 panoramas is placed on strictly using the experimental method of the division of training data, validation, and a production sample, to make a correct estimation of the generalization error. As a result of the training process, we obtained an Average Precision of 69,14%, which presented a high precision Tag of 89.23%, and low precision of 59.13% in Mural. Finally, it is possible to build heat maps of graffiti concentration areas that could guide rulers to create or improve public policies related to graffiti expression.
智慧城市中的涂鸦和政府:应用于Medellín城市的深度学习方法,哥伦比亚
涂鸦是一种表现人类不同状态的图形表达元素。然而,对于世界各地的许多政府来说,这已经成为他们与通过涂鸦表达自己的社区之间不和的一个因素。本文建议通过计算机视觉和物体检测与定位来识别涂鸦和集中区,以支持智慧城市的公共政策管理。采用ASUM-DM方法来实现这一目标。首先,确定了当前市政府在公共涂鸦政策管理中面临的问题。然后,为在Medellín市(哥伦比亚)和边境城市进行的案例研究,确定了来自谷歌街景(GSV)的可用图像数据集和其他获得的数据集。严格采用训练数据、验证和生产样本分割的实验方法,对1395张图像的训练数据集和71100张全景图的生产数据集进行放置,对泛化误差进行正确的估计。在训练过程中,我们得到了平均精度为69.14%,其中高精度Tag为89.23%,低精度Tag为59.13%。最后,可以建立涂鸦集中区的热图,指导统治者制定或完善与涂鸦表达相关的公共政策。
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
Data
Data Decision Sciences-Information Systems and Management
CiteScore
4.30
自引率
3.80%
发文量
0
审稿时长
10 weeks
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