Abstract

The classification of urban land-use information has become the underlying database for a variety of applications including urban planning and administration. The lack of datasets and changeable semantics of land-use make deep learning methods suffer from low precision, which prevent improvements in the effectiveness of using AI methods for applications. In this paper, we first used GIS data to produce a well-tagged and high-resolution urban land-use image dataset. Then, we proposed a combined convolutional neural network named DUA-Net for complex and diverse urban land-use classification. The DUA-Net combined U-Net and Densely connected Atrous Spatial Pyramid Pooling (DenseASPP) to extract Remote Sensing Imagers (RSIs) features in parallel. Then, channel attention was used to efficiently fuse the multi-source semantic information from the output of the double-layer network to learn the association between different land-use types. Finally, land-use classification of high-resolution urban RSIs was achieved. Experiments were performed on the dataset of this paper, the publicly available Vaihingen dataset and Potsdam dataset with overall accuracy levels reaching 75.90%, 89.71% and 89.91%, respectively. The results indicated that the complex land-use types with heterogeneous features were more difficult to extract than the single-feature land-cover types. The proposed DUA-Net method proved suitable for high-precision urban land-use classification, which will be of great value for urban planning and national land resource surveying.

Highlights

  • Urban land-use classification plays a key role in applications such as urban construction, land-use planning, infrastructure construction management, natural disasters and crisis management [1]

  • We concatenate the channel dimensions of the feature maps outputted by the U-Net module and the DenseASPP

  • DenseASPP used dilated convolution to expand the receptive field of features and to integrate more features of pixels in Remote Sensing Imagers (RSIs), but it failed to fully consider the correlation between pixels

Read more

Summary

Introduction

Urban land-use classification plays a key role in applications such as urban construction, land-use planning, infrastructure construction management, natural disasters and crisis management [1]. The faster the growth of the country, the more rapid the change in land-use. Land-use surveys are time-consuming, labor-intensive and costly [2]. A national land-use survey is implemented every ten years in China. The development of processing technologies for high-resolution remote sensing could help planners to collect exhaustive land-cover information in a timely and cost-effective manner [3]. Deep convolutional neural networks (DCNNs) could automatically extract serval-specific features in remote sensing images to fully realize the classification of urban land-use

Results
Discussion
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