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Streetify: Using Street View Imagery And Deep Learning For Urban Streets Development

机译:Streetify:使用街景图像和深度学习进行城市街道开发

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The classification of streets on road networks has been focused on the vehicular transportational features of streets such as arterials, major roads, minor roads and so forth based on their transportational use. City authorities on the other hand have been shifting to more urban inclusive planning of streets, encompassing the side use of a street combined with the transportational features of a street. In such classification schemes, streets are labeled for example as commercial throughway, residential neighborhood, park etc. This modern approach to urban planning has been adopted by major cities such as the city of San Francisco, the states of Florida and Pennsylvania among many others. Currently, the process of labeling streets according to their contexts is manual and hence is tedious and time consuming. In this paper, we propose an approach to collect and label imagery data then deploy advancements in computer vision towards modern urban planning. We collect and label street imagery then train deep convolutional neural networks (CNN) to perform the classification of street context. We show that CNN models can perform well achieving accuracies in the 81% to 87%, we then visualize samples from the embedding space of streets using the t-SNE method and apply class activation mapping methods to interpret the features in street imagery contributing to output classification from a model.
机译:道路网络上的街道分类主要基于街道的车辆运输特性,例如交通,主要道路,次要道路等。另一方面,城市当局已开始转向更具城市包容性的街道规划,将街道的边路使用与街道的交通功能结合起来。在这种分类方案中,街道被标记为例如商业通道,居民区,公园等。这种现代的城市规划方法已被主要城市采用,例如旧金山市,佛罗里达州和宾夕法尼亚州等。当前,根据街道的上下文来标记街道的过程是手动的,因此是繁琐且耗时的。在本文中,我们提出了一种收集和标记图像数据的方法,然后将计算机视觉的进步应用到现代城市规划中。我们收集并标记街道图像,然后训练深度卷积神经网络(CNN)进行街道环境分类。我们展示了CNN模型可以在81%到87%的范围内表现出良好的精度,然后使用t-SNE方法可视化来自街道嵌入空间的样本,并应用类激活映射方法来解释街道图像中有助于输出的特征从模型分类。

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