Identifying urban poverty using high-resolution satellite imagery and machine learning approaches: Implications for housing inequality
编号:1847 稿件编号:914 访问权限:仅限参会人 更新:2021-06-16 16:09:17 浏览:632次 口头报告

报告开始:2021年07月11日 09:54 (Asia/Shanghai)

报告时间:12min

所在会议:[S7D] 7D、地理及地理信息科学 » [S7D-2] 专题7.4 地理大数据计算与应用

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摘要
Enriching the Asian perspectives in the research of rapid identification of urban poverty and its implications for housing inequality, this paper contributes empirical evidence about the utility of image features derived from high-resolution satellite imagery and machine learning approaches for identifying urban poverty in China at a community level. In the case of Jiangxia and Huangpi District of Wuhan, image features including perimeter, line segment detector (LSD), Hough transform, gray level cooccurrence matrix (GLCM), histogram of oriented gradients (HoG), and local binary patterns (LBP) are calculated, and 4 machine learning approaches and 25 variables are used to identify urban poverty and relatively important variables. Results show that image features and machine learning approaches can be used to identify urban poverty with the best model performance of R2 of Jiangxia and Huangpi of 0.5341 and 0.5324, respectively, although some differences exist among the approaches and study areas. The importance of each variable differs among the different approaches and study areas; however, the relatively important variables are similar. In particular, 4 variables achieved relatively good prediction results for all models, and presented obvious differences in varying community with different poverty level. Housing inequality within low-income neighborhoods, which as a response to gaps in wealth, income, and housing affordability among social groups, is an important manifestation of urban poverty. These findings are useful for policymakers to rapidly identify urban poverty and have potential applications for revealing housing inequality and proofing the rationality of urban planning for building a sustainable society.
 
关键字
urban poverty; high-resolution satellite imagery; image features; machine learning approaches; China
报告人
李桂娥
中国矿业大学

稿件作者
李桂娥 中国矿业大学
蔡忠亮 武汉大学
钱韵 北京大学
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