An application of convolutional neural network in street image classification: the case study of london

S. Law, Yao Shen, C. Seresinhe
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引用次数: 17

Abstract

Street frontage quality is an important element in urban design as it contributes to the interest, social life and success of public spaces. To collect the data needed to evaluate street frontage quality at the city or regional level using traditional survey method is both costly and time consuming. As a result, this research proposes a pipeline that uses convolutional neural network to classify the frontage of a street image through the case study of Greater London. A novelty of the research is it uses both Google streetview images and 3D-model generated streetview images for the classification. The benefit of this approach is that it can provide a framework to test different urban parameters to help evaluate future urban design projects. The research finds encouraging results in classifying urban frontage quality using deep learning models. This research also finds that augmenting the baseline model with images produced from a 3D-model can improve slightly the accuracy of the results. However these results should be taken as preliminary, where we acknowledge several limitations such as the lack of adversarial analysis, labeled data, or parameter tuning. Despite these limitations, the results of the proof-of-concept study is positive and carries great potential in the application of urban data analytics.
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卷积神经网络在街道图像分类中的应用——以伦敦为例
临街质量是城市设计的一个重要元素,因为它有助于公共空间的兴趣、社会生活和成功。利用传统的调查方法收集城市或区域街道临街质量评价所需的数据,不仅成本高,而且耗时长。因此,本研究通过对大伦敦的案例研究,提出了一种使用卷积神经网络对街道图像正面进行分类的管道。这项研究的新颖之处在于,它同时使用了谷歌街景图像和3d模型生成的街景图像进行分类。这种方法的好处是,它可以提供一个框架来测试不同的城市参数,以帮助评估未来的城市设计项目。研究发现,使用深度学习模型对城市临街质量进行分类取得了令人鼓舞的结果。该研究还发现,用3d模型生成的图像增强基线模型可以略微提高结果的准确性。然而,这些结果应该被视为初步的,我们承认一些局限性,如缺乏对抗性分析,标记数据或参数调整。尽管存在这些限制,但概念验证研究的结果是积极的,在城市数据分析的应用中具有巨大的潜力。
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