用计算机视觉“阅读”城市:一个新的多空间尺度城市结构数据集和一种新的城市结构分类任务卷积神经网络解决方案

Zhou Fang, Jiaxin Qi, Tianren Yang, L. Wan, Ying Jin
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引用次数: 4

摘要

本文建立在基于cnn的模式识别和特征提取方法的可靠记录的基础上,并报告了一个新的模型,该模型根据(1)它们属于哪个城市,(2)它们属于什么类型的城市织物,(3)它们来自哪个历史时期对大都市地区的城市织物样本进行分类。目前,这样的任务需要高级专业人员进行大量的手工工作,即使这样,也会出现不一致和错误。我们的工作基于一个新的城市结构数据集,该数据集包含四个具有不同类型的大都市地区(线性发展,开放街区,门状化合物,中世纪地区,不规则网格和正交网格),该数据集由高分辨率三维建筑形式数据和分层街道网络组成。本文提出的分类模型是第一个能够预测城市起源、城市肌理格局类型和建设周期的分类模型。新颖性的另一个特点是在多个空间尺度上共同考虑城市结构特征。实验表明,这种多尺度方法可以捕获不同城市、不同城市结构模式类型和不同发展时期的城市结构特征。我们进一步发现,通过附加一个辅助网络来识别符合分类任务的多个空间尺度的最合适组合,可以提高有效性。数据集和模型可以大规模地提高研究城市的研究人员和专业人员的生产力。
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"Reading" cities with computer vision: a new multi-spatial scale urban fabric dataset and a novel convolutional neural network solution for urban fabric classification tasks
This paper builds on the proven track record of CNN-based pattern recognition and feature extraction methods, and reports a novel model that classifies urban fabric samples of metropolitan areas in terms of (1) which city they belong to, (2) what types of urban fabric they belong to, and (3) which historic period they originate from. Currently, such tasks require intensive manual work by senior professionals, and even then, inconsistencies and errors occur. Our work is based on a novel urban fabric dataset of four metropolitan areas with distinct typologies (linear development, open block, gated compound, medieval region, irregular grid and orthogonal gird), which consist of high resolution 3-dimensional built form data and hierarchical street networks. The classification model presented in this paper is the first that is capable of predicting the city origin, urban fabric pattern type and construction period. The novelty is also characterised by jointly considering urban fabric features across multiple spatial scales. The experiments demonstrate that this multi-scale approach can capture a wide range of urban fabric features across cities, urban fabric pattern types and development periods. We further find that the effectiveness can be enhanced by appending an auxiliary network for identifying the most appropriate combinations of the multiple spatial scales in line with the classification task. The dataset and model can massively scale up the productivity of researchers and professionals working on cities.
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