Abstract
This paper shows the efficacy of a novel urban categorization framework based on deep learning, and a novel categorization method customized for cities in the global south. The proposed categorization method assesses urban space broadly on two dimensions—the states of urbanization and the architectural form of the units observed. This paper shows how the sixteen sub-categories can be used by state-of-the-art deep learning modules (fully convolutional network FCN-8, U-Net, and DeepLabv3+) to categorize formal and informal urban areas in seven urban cities in the developing world—Dhaka, Nairobi, Jakarta, Guangzhou, Mumbai, Cairo, and Lima. Firstly, an expert visually annotated and categorized 50 × 50 km Google Earth images of the cities. Each urban space was divided into four socioeconomic categories: (1) highly informal area; (2) moderately informal area; (3) moderately formal area, and (4) highly formal area. Then, three models mentioned above were used to categorize urban spaces. Image encompassing of the urban space was used to train the models, and the remaining was used for testing and validation of each city. The DeepLabv3+ model can segment the test part with an average accuracy of for Dhaka, for Nairobi, for Jakarta, for Guangzhou city, for Mumbai, for Cairo, and for Lima. These results are the best for the DeepLabv3+ model among all. Thus, DeepLabv3+ shows an overall high accuracy level for most of the measuring parameters for all cities, making it highly scalable, readily usable to understand the cities’ current conditions, forecast land use growth, and other computational modeling tasks. Therefore, the proposed categorization method is also suited for real-time socioeconomic comparative analysis among cities, making it an essential tool for the policymakers to plan future sustainable urban spaces.
Highlights
IntroductionMany people have flown into urban spaces, accelerating the development of cities
We show the efficacy of the categorization method proposed in [2], in seven cities from the developing world
To automate the categorization method of [2], we examined three state-of-the-art algorithms that are widely used in satellite image data: FCN-8 [21], U-Net [22], and DeepLabv3+ [12]
Summary
Many people have flown into urban spaces, accelerating the development of cities. According to UN DESA 2018 [1], more than 50% of the world’s population lives in urban areas. The growth rate is higher in developing countries in the global south. In order to keep the urban environment sustainable, policymakers need to plan based on extensive analysis of the urban environment. Automating categorization of formal and informal areas of living is vital for city planners and policymakers [2,3,4,5,6]
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