Abstract

Abstract. Building category refereed to categorizing structures based on their usage is useful for urban design and management and can provide indexes of population, resource and environment related problems. Currently, the statistics are mainly collected by manual from street data or roughly extracted from remote sensing data which are either laborious or too coarse. With remote sensing data (e.g. satellite and aerial images), buildings can be automatically identified from the top-view, but the detailed categories of single buildings are not recognized. Façade from oblique-view image can greatly help us to identify the categories of buildings, for example, balcony usually exist in resident buildings. Hence, in this paper, we propose an efficient way to classify building categories with the façade information. Firstly, following the texture mapping procedure, each building’s façade textures are cropped from oblique images via a perspective transformation. Then, the average colour, the stander deviation in R, G, B channel, and the rectangle Haar-like features are extracted and feed to a further random forest classifier for their category identifications. In the experiment, we manually selected 262 building façades that can be classified into four functional types as: 1) regular residence ; 2) educational building; 3) office ; 4) condominium. The results shows that, with 30% data as training samples, the classification accuracy can reach 0.6 which is promising in real applications and we believe with more sophisticated feature descriptors and classifiers, e.g., neuronal networks, the accuracy can be much higher.

Highlights

  • The building category refereed to categorizing structures based on their usage is useful for urban design and management

  • This kind of information can provide indexes of population, resource and environment-related problems, such as population distribution, power supply, and traffic system design. They are the basis of urban planning, policy-making and disaster management (Kolbe et al, 2005, Tutzauer et al, 2016)

  • The statistics are mainly collected by manual from street data or roughly extracted from remote sensing data which are either laborious or too coarse

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Summary

INTRODUCTION

The building category refereed to categorizing structures based on their usage is useful for urban design and management This kind of information can provide indexes of population, resource and environment-related problems, such as population distribution, power supply, and traffic system design. Single buildings can be classified and detected from overview data, such as satellite and aerial images Most of these building detection methods use the topview information such as the appearance of the roof and the high from DSM (digital surface model) which are not enough for individual building category identification. Based on the geo-referenced coordinates of buildings, the facade textures can be cropped and selected from oblique images, as same as the texture mapping procedures in (Xiao et al, 2020) From these facade textures, color and texture features are extracted and further fed to a random forest classifier for the building category classification

RELATED WORK
FAC ADE FEATURE EXTRACTION AND CLASSIFICATION
Facade Texture Mapping
Facade Feature Description and Classification
EXPERIMENT AND DISCUSSION
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