Abstract

Terrestrial features extraction, such as roads and buildings from aerial images using an automatic system, has many usages in an extensive range of fields, including disaster management, change detection, land cover assessment, and urban planning. This task is commonly tough because of complex scenes, such as urban scenes, where buildings and road objects are surrounded by shadows, vehicles, trees, etc., which appear in heterogeneous forms with lower inter-class and higher intra-class contrasts. Moreover, such extraction is time-consuming and expensive to perform by human specialists manually. Deep convolutional models have displayed considerable performance for feature segmentation from remote sensing data in the recent years. However, for the large and continuous area of obstructions, most of these techniques still cannot detect road and building well. Hence, this work’s principal goal is to introduce two novel deep convolutional models based on UNet family for multi-object segmentation, such as roads and buildings from aerial imagery. We focused on buildings and road networks because these objects constitute a huge part of the urban areas. The presented models are called multi-level context gating UNet (MCG-UNet) and bi-directional ConvLSTM UNet model (BCL-UNet). The proposed methods have the same advantages as the UNet model, the mechanism of densely connected convolutions, bi-directional ConvLSTM, and squeeze and excitation module to produce the segmentation maps with a high resolution and maintain the boundary information even under complicated backgrounds. Additionally, we implemented a basic efficient loss function called boundary-aware loss (BAL) that allowed a network to concentrate on hard semantic segmentation regions, such as overlapping areas, small objects, sophisticated objects, and boundaries of objects, and produce high-quality segmentation maps. The presented networks were tested on the Massachusetts building and road datasets. The MCG-UNet improved the average F1 accuracy by 1.85%, and 1.19% and 6.67% and 5.11% compared with UNet and BCL-UNet for road and building extraction, respectively. Additionally, the presented MCG-UNet and BCL-UNet networks were compared with other state-of-the-art deep learning-based networks, and the results proved the superiority of the networks in multi-object segmentation tasks.

Highlights

  • Multiple urban features extraction, such as buildings and road objects from highresolution remotely sensed data, is an essential stage that has numerous applications in many domains, e.g., infrastructure planning, change detection, disaster management, real estate management, urban planning, and geographical database updating [1]

  • BCL-UNet model is inspired by UNet and BConvLSTM, whereas dense convolutions and the squeeze and excitation (SE) function are added in the MCG-UNet model

  • The proposed models in the current work were compared with convolutional networks, such as DeeplabV3 [58], BTRoadNet [59], DLinkNet-34 [24], RoadNet [60], and GL-DenseUNet [61] for road extraction, and building residual refine network (BRRNet) [62], fully convolutional network (FCN)-conditional random fields (CRFs) [34], a modification of UNet model pretrained by ImageNet called TernausNetV2 [63], Res-U-Net [64], and JointNet [65]

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Summary

Introduction

Multiple urban features extraction, such as buildings and road objects from highresolution remotely sensed data, is an essential stage that has numerous applications in many domains, e.g., infrastructure planning, change detection, disaster management, real estate management, urban planning, and geographical database updating [1]. This task is very expensive and time-consuming to execute by human experts manually. Labeling pixels of a large remote sensing image manually is a complicated and time-consuming task.

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