Abstract

Enriching Asian perspectives on the 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 the community level. For the case of the Jiangxia District 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 four machine learning approaches and 25 variables are applied to identify urban poverty and relatively important variables. The results show that image features and machine learning approaches can be used to identify urban poverty with the best model performance with a coefficient of determination, R2, of 0.5341 and 0.5324 for Jiangxia and Huangpi, respectively, although some differences exist among the approaches and study areas. The importance of each variable differs for each approach and study area; however, the relatively important variables are similar. In particular, four variables achieved relatively satisfactory prediction results for all models and presented obvious differences in varying communities with different poverty levels. Housing inequality within low-income neighborhoods, which is a response to gaps in wealth, income, and housing affordability among social groups, is an important manifestation of urban poverty. Policy makers can implement these findings to rapidly identify urban poverty, and the findings have potential applications for addressing housing inequality and proving the rationality of urban planning for building a sustainable society.

Highlights

  • Can the features of built-up areas extracted from remote sensing imagery be applied to rapidly explore urban poverty in China? There are many features that can be derived from imagery

  • The results show that among the analyzed regressions, the Support Vector Regression (SVR) approach best presents the performance of Jiangxia and Huangpi, with R2 values of 0.5341 and 0.5324, respectively

  • Local indicator of spatial association (LISA) [48] is used to identify committees of concentrated poverty and to see if the predicted poverty incidence (PI) from remote sensing using Neural Network (NN) can identify the same committees than the survey-based PI

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Summary

Introduction

Can the features of built-up areas extracted from remote sensing imagery be applied to rapidly explore urban poverty in China? There are many features that can be derived from imagery. Can the features of built-up areas extracted from remote sensing imagery be applied to rapidly explore urban poverty in China? This study assesses the relationship between urban poverty and the image features of built-up areas derived from remote sensing imagery at the lowest administrative level to ensure the relative homogeneity of regional built-up areas and efficient resource allocation by policy makers. From the remote sensing perspective, image features such as geometric features, shape features, and texture features that are detectable and observable are variables with great potential to quantitatively distinguish the difference in built-up areas of committees with different poverty levels from the spatial patterning, texture, irregularity, and homogeneity of built-up layouts. The gray-level co-occurrence matrix (GLCM) [32], histogram of oriented gradients (HoG) [33], and local binary patterns (LBP) [34] are significant measures that can be applied to quantify the perceived texture of an image by using texture features such as smoothness and coarseness

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