Abstract

Unplanned urban settlements exist worldwide. The geospatial information of these areas is critical for urban management and reconstruction planning but usually unavailable. Automatically characterizing individual buildings in the unplanned urban village using remote sensing imagery is very challenging due to complex landscapes and high-density settlements. The newly emerging deep learning method provides the potential to characterize individual buildings in a complex urban village. This study proposed an urban village mapping paradigm based on U-net deep learning architecture. The study area is located in Guangzhou City, China. The Worldview satellite image with eight pan-sharpened bands at a 0.5-m spatial resolution and building boundary vector file were used as research purposes. There are ten sites of the urban villages included in this scene of the Worldview image. The deep neural network model was trained and tested based on the selected six and four sites of the urban village, respectively. Models for building segmentation and classification were both trained and tested. The results indicated that the U-net model reached overall accuracy over 86% for building segmentation and over 83% for the classification. The F1-score ranged from 0.9 to 0.98 for the segmentation, and from 0.63 to 0.88 for the classification. The Interaction over Union reached over 90% for the segmentation and 86% for the classification. The superiority of the deep learning method has been demonstrated through comparison with Random Forest and object-based image analysis. This study fully showed the feasibility, efficiency, and potential of the deep learning in delineating individual buildings in the high-density urban village. More importantly, this study implied that through deep learning methods, mapping unplanned urban settlements could further characterize individual buildings with considerable accuracy.

Highlights

  • IntroductionRapid urbanization with the housing demand of low-income city dwellers has contributed to the emergence of unplanned settlements [3,4,5]

  • In less developed countries like Asian and Africa, urban sprawling is usually accompanied by the emergence of unplanned settlements, such as slums, shantytowns, and urban villages [1,2].Rapid urbanization with the housing demand of low-income city dwellers has contributed to the emergence of unplanned settlements [3,4,5]

  • The motivation of this study was to show the capability of deep learning for the urban village mapping in which both segmentation and classification of individual buildings were tested

Read more

Summary

Introduction

Rapid urbanization with the housing demand of low-income city dwellers has contributed to the emergence of unplanned settlements [3,4,5]. This kind of built-up area is often stuffed with high-density small buildings. Unplanned settlements do provide housing for low-income city dwellers, their existence contributes to unequal living conditions, inhabitants often do not have access to equal services and face unsanitary living conditions, and there are issues with public safety [4,6]. The urban village is the most commonly existing unplanned urban settlement in China

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call