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Precise building semantic segmentation in remote sensing images via MR-DeepLabv3+ network
by
Liu, Yu
, Shi, Xunwang
, Liu, Yifan
, Shang, Lunhua
, Sun, Zeyu
, Wang, Tianhao
, Wang, Yiming
, Lu, Yanyang
in
639/705/117
/ 639/705/258
/ Accuracy
/ Buildings
/ Buildings segmentation
/ Classification
/ Datasets
/ Deep learning
/ Design
/ Humanities and Social Sciences
/ Image processing
/ Machine learning
/ Methods
/ multidisciplinary
/ Neural networks
/ R-Drop loss
/ Remote sensing
/ Remote sensing images
/ Science
/ Science (multidisciplinary)
/ Semantic segmentation
/ Semantics
/ Urban planning
2025
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Precise building semantic segmentation in remote sensing images via MR-DeepLabv3+ network
by
Liu, Yu
, Shi, Xunwang
, Liu, Yifan
, Shang, Lunhua
, Sun, Zeyu
, Wang, Tianhao
, Wang, Yiming
, Lu, Yanyang
in
639/705/117
/ 639/705/258
/ Accuracy
/ Buildings
/ Buildings segmentation
/ Classification
/ Datasets
/ Deep learning
/ Design
/ Humanities and Social Sciences
/ Image processing
/ Machine learning
/ Methods
/ multidisciplinary
/ Neural networks
/ R-Drop loss
/ Remote sensing
/ Remote sensing images
/ Science
/ Science (multidisciplinary)
/ Semantic segmentation
/ Semantics
/ Urban planning
2025
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Precise building semantic segmentation in remote sensing images via MR-DeepLabv3+ network
by
Liu, Yu
, Shi, Xunwang
, Liu, Yifan
, Shang, Lunhua
, Sun, Zeyu
, Wang, Tianhao
, Wang, Yiming
, Lu, Yanyang
in
639/705/117
/ 639/705/258
/ Accuracy
/ Buildings
/ Buildings segmentation
/ Classification
/ Datasets
/ Deep learning
/ Design
/ Humanities and Social Sciences
/ Image processing
/ Machine learning
/ Methods
/ multidisciplinary
/ Neural networks
/ R-Drop loss
/ Remote sensing
/ Remote sensing images
/ Science
/ Science (multidisciplinary)
/ Semantic segmentation
/ Semantics
/ Urban planning
2025
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Precise building semantic segmentation in remote sensing images via MR-DeepLabv3+ network
Journal Article
Precise building semantic segmentation in remote sensing images via MR-DeepLabv3+ network
2025
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Overview
In response to issues such as incomplete contour segmentation, blurred boundaries, and small-building misclassification in remote sensing images, this paper proposes an MR-DeepLabv3+ network. The network integrates MixConv (dataset-adapted multi-scale convolutional kernels: 3 × 3/5 × 5/7 × 7) to enhance multi-scale feature capture and a segmentation-optimized R-Drop Loss (decoder-level channel-wise masking with dynamic KL divergence weight) to reinforce noise robustness. Experiments are conducted on three distinct building datasets: Self-building (1270 images, 10–50 pixel slender buildings), WHU (8170 images, 0.075 m resolution dense small buildings), and Massachusetts (151 images, 340 km
2
large urban clusters). The experimental results show that the MR-DeepLabv3 + achieves Acc, MIoU, and FWIoU of 98.34%, 88.93%, 96.88% (Self-building), 98.22%, 88.56%, 97.18% (WHU), and 88.32%, 79.33%, 86.53% (Massachusetts), outperforming the baseline DeepLabv3+ and 4 recent transformer models. MR-DeepLabv3 + balances model compactness and inference efficiency, making it well-suited for remote sensing image segmentation tasks, especially in scenarios with computational resource constraints. Ultimately, it is proven that the method effectively improves building segmentation accuracy and addresses small-building missing issues, with practical value for UAV-based mapping.
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