Building Extraction from Remote Sensing Images via an Uncertainty-Aware Network

23 Jul 2023  Â·  wei he, Jiepan Li, Weinan Cao, Liangpei Zhang, Hongyan zhang ·

Building extraction aims to segment building pixels from remote sensing images and plays an essential role in many applications, such as city planning and urban dynamic monitoring. Over the past few years, deep learning methods with encoder-decoder architectures have achieved remarkable performance due to their powerful feature representation capability. Nevertheless, due to the varying scales and styles of buildings, conventional deep learning models always suffer from uncertain predictions and cannot accurately distinguish the complete footprints of the building from the complex distribution of ground objects, leading to a large degree of omission and commission. In this paper, we realize the importance of uncertain prediction and propose a novel and straightforward Uncertainty-Aware Network (UANet) to alleviate this problem. To verify the performance of our proposed UANet, we conduct extensive experiments on three public building datasets, including the WHU building dataset, the Massachusetts building dataset, and the Inria aerial image dataset. Results demonstrate that the proposed UANet outperforms other state-of-the-art algorithms by a large margin.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Semantic Segmentation INRIA Aerial Image Labeling UANet(PVT-V2-B2) IoU 83.34 # 1
Semantic Segmentation INRIA Aerial Image Labeling UANet(ResNet50) IoU 82.17 # 6
Semantic Segmentation INRIA Aerial Image Labeling UANet(VGG-16) IoU 83.08 # 3
Semantic Segmentation INRIA Aerial Image Labeling UANet(Re2sNet50) IoU 83.17 # 2
Extracting Buildings In Remote Sensing Images Massachusetts building dataset UANet(VGG-16) IoU 76.41 # 3
Extracting Buildings In Remote Sensing Images WHU Building Dataset UANet(VGG-16) F1 95.91 # 6
IoU 92.15 # 6

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