Usage of street-level imagery for city-wide graffiti mapping

Eric K. Tokuda, Cláudio T. Silva, R. Cesar-Jr
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Abstract

Graffiti is a common phenomenon in urban scenarios. Differently from urban art, graffiti tagging is a vandalism act and many local governments are putting great effort to combat it. The graffiti map of a region can be a very useful resource because it may allow one to potentially combat vandalism in locations with high level of graffiti and also to cleanup saturated regions to discourage future acts. There is currently no automatic way of obtaining a graffiti map of a region and it is obtained by manual inspection by the police or by popular participation. In this sense, we describe an ongoing work where we propose an automatic way of obtaining a graffiti map of a neighbourhood. It consists of the systematic collection of street view images followed by the identification of graffiti tags in the collected dataset and finally, in the calculation of the proposed graffiti level of that location. We validate the proposed method by evaluating the geographical distribution of graffiti in a city known to have high concentration of graffiti - São Paulo, Brazil.
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使用街道级别的图像来绘制全市范围的涂鸦地图
涂鸦是城市场景中的常见现象。与城市艺术不同,涂鸦是一种破坏行为,许多地方政府正在努力打击这种行为。一个地区的涂鸦地图可以是一个非常有用的资源,因为它可以让一个人潜在地打击涂鸦水平高的地方的破坏行为,也可以清理饱和的地区,以阻止未来的行为。目前还没有自动获得一个地区涂鸦地图的方法,它是由警察手工检查或民众参与获得的。在这个意义上,我们描述了一项正在进行的工作,我们提出了一种自动获取社区涂鸦地图的方法。它包括系统地收集街景图像,然后在收集的数据集中识别涂鸦标签,最后计算该位置的建议涂鸦级别。我们通过评估一个已知涂鸦高度集中的城市——巴西圣保罗的涂鸦的地理分布来验证所提出的方法。
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