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Large-Scale Street Space Quality Evaluation Based on Deep Learning Over Street View Image

机译:基于深度学习的大型街道空间质量评价

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In the quantitative study of cities, the extraction and appropriate evaluation of the space quality information of urban streets can provide great insight and guidance to urban planners to build more livable urban public space, which is also of great significance for urban management. However, the traditional methods, which mostly use the manual statistical investigation to carry on, are difficult to carry out large-scale objective quantification. To tackle this challenge, this paper presents a complete quantitative analysis method for street space quality score based on street view image analysis. Three quantitative indices (i.e. cleanliness, comfort and traffic) for the evaluation of street space qualities are employed in this study as suggested in literature on urban planning. A new deep learning approach, named as Cross-connected CNN + SVR, is proposed to estimate the street space quality score. A new dataset is constructed based on Baidu Street View image for the training and validation of the proposed framework. Experimental results suggested that the three indices used in this paper is able to reflect the street's objective visual attributes effectively and the proposed CNN + SVR approach has produced insightful results. The proposed approach has been applied to evaluate the street space quality score of the 2nd ring road district of Chengdu, to demonstrate the value and effectiveness of the proposed work for providing data support and analytics support to urban planners.
机译:在城市的定量研究中,对城市街道的空间质量信息的提取和适当评估可以为城市规划者提供良好的洞察力和指导,以建立更居住的城市公共空间,这对城市管理也具有重要意义。然而,主要使用手动统计调查的传统方法难以进行大规模的客观量化。为了解决这一挑战,本文提出了一种基于街道视图图像分析的街道空间质量分数的完全定量分析方法。本研究采用了对街道空间质量评估的三种量级指数(即清洁,舒适和交通),在城市规划中提出。提出了一种以交叉连接的CNN + SVR命名的新的深度学习方法,以估算街道空间质量分数。基于百度街视图图像构建了一个新的数据集,用于培训和验证所提出的框架。实验结果表明,本文中使用的三个指标能够有效地反映街道的客观视觉属性,提出的CNN + SVR方法产生了富有魅力的结果。拟议的方法已被应用于评估成都第二环路区的街道空间质量得分,以展示拟议的工作的价值和有效性,为城市规划者提供数据支持和分析支持。

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