Abstract

Urban land use is key to rational urban planning and management. Traditional land use classification methods rely heavily on domain experts, which is both expensive and inefficient. In this paper, deep neural network-based approaches are presented to label urban land use at pixel level using high-resolution aerial images and ground-level street view images. We use a deep neural network to extract semantic features from sparsely distributed street view images and interpolate them in the spatial domain to match the spatial resolution of the aerial images, which are then fused together through a deep neural network for classifying land use categories. Our methods are tested on a large publicly available aerial and street view images dataset of New York City, and the results show that using aerial images alone can achieve relatively high classification accuracy, the ground-level street view images contain useful information for urban land use classification, and fusing street image features with aerial images can improve classification accuracy. Moreover, we present experimental studies to show that street view images add more values when the resolutions of the aerial images are lower, and we also present case studies to illustrate how street view images provide useful auxiliary information to aerial images to boost performances.

Highlights

  • Urban areas account for less than 2% of the earth land surface, but accommodate more than half of the world population, and the urban population is still growing and is estimated to reach five billion by 2030 globally [1]

  • The contributions of the paper lie in three aspects: (1) The paper presents a novel method to fuse extracted ground-level features from street view images with high-resolution aerial images to enhance pixel-level urban land use classification accuracy. It integrates the two sources of images collected from totally different views, and demonstrates a new possibility and paradigm of multi-source and multi-modal data fusion for urban land use classification; (2) The paper examines the impact of aerial image resolution changes on classification accuracy, and it presents case studies to investigate into the contribution that street view images make to the improvement of the classification results; (3) This paper explores deep neural network methods for pixel-level urban land use classification using high-resolution aerial images, which enriches the remote sensing applications of deep neural networks

  • For each group of experiment, i.e., aerial images only, street view images only, and integration of the two sources of data, we have trained five instances of the same network with different order of inputs since previous experiments suggest that five instances are sufficient in most cases [65], and the average of the results on those instances of segmentation models are taken as the final results

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Summary

Introduction

Urban areas account for less than 2% of the earth land surface, but accommodate more than half of the world population, and the urban population is still growing and is estimated to reach five billion by 2030 globally [1]. Urban land use and land cover (LULC) maps are very important tools to understand and monitor our cities, they can reflect the macro properties of the urban surface. Land cover indicates the physical attributes of landscapes, such as forestry, grass, agricultural, water bodies, built-up areas, etc., while land use documents how people use the land with social-economic purposes, such as residential, commercial, and recreational purposes. The classification of urban land use is very difficult, especially for mega-cities with high population density where land use is extremely diversified and complicated. Earth observation data such as multi-spectral satellite images have long been used to classify different land covers in terms of spectral reflectance characteristics of different objects [2].

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