Abstract

Deep learning approaches have been widely used in building automatic extraction tasks and have made great progress in recent years. However, the missing detection and wrong detection causing by spectrum confusion is still a great challenge. The existing fully convolutional networks (FCNs) cannot effectively distinguish whether the feature differences are from one building or the building and its adjacent non-building objects. In order to overcome the limitations, a building multi-feature fusion refined network (BMFR-Net) was presented in this paper to extract buildings accurately and completely. BMFR-Net is based on an encoding and decoding structure, mainly consisting of two parts: the continuous atrous convolution pyramid (CACP) module and the multiscale output fusion constraint (MOFC) structure. The CACP module is positioned at the end of the contracting path and it effectively minimizes the loss of effective information in multiscale feature extraction and fusion by using parallel continuous small-scale atrous convolution. To improve the ability to aggregate semantic information from the context, the MOFC structure performs predictive output at each stage of the expanding path and integrates the results into the network. Furthermore, the multilevel joint weighted loss function effectively updates parameters well away from the output layer, enhancing the learning capacity of the network for low-level abstract features. The experimental results demonstrate that the proposed BMFR-Net outperforms the other five state-of-the-art approaches in both visual interpretation and quantitative evaluation.

Highlights

  • The building is one of the most important artificial objects

  • hybrid dilated convolution (HDC) constraints for multiscale feature extraction at the end of the contracting path, constraints for multiscale feature extraction at the end of the contracting path, which which can reduce the loss of effective information and enhance the continuity becan reduce the loss of effective information and enhance the continuity between local tween local information

  • (3) The multiscale output fusion constraint (MOFC) structure is explored in this paper, which can enhance the ability of the

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Summary

Introduction

The building is one of the most important artificial objects. Accurately and automatically extracting buildings from high-resolution remote sensing images is of great significance in many aspects, such as urban planning, map data updating, emergency response, etc. [1,2,3]. And automatically extracting buildings from high-resolution remote sensing images is of great significance in many aspects, such as urban planning, map data updating, emergency response, etc. The diverse roof materials of buildings are represented in detail, leading to undetected building results. The similar difference between a building and its adjacent non-building objects results in some wrong detection. These difficulties are the primary factor influencing the building results that can be used in realistic applications. Accurately and automatically extracting buildings from high-resolution remote sensing images is a challenging but crucial task [4]

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