2022
DOI: 10.36227/techrxiv.19704706.v1
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An Attention Augmented Convolution based Improved Residual UNet for Road Extraction

Abstract: <p>Recently remote sensing images have become more popular due to improved image quality and resolution. These images have been shown to be a valuable data source for road extraction applications like intelligent transportation systems, road maintenance, and road map making. In recent decades, the use of highly significant deep learning in automatic road extraction from these images has been a hot research area. However, fully automated and highly accurate road extractions from remote sensing images rema… Show more

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“…Ref. [35] proposed an attention-augmented convolution-based residual UNet architecture (AA-ResUNet) for road extraction in remote sensing images, where the attention-enhanced convolution operation helps to capture remote global information and obtain a more discriminative feature representation. These works are used to improve the segmentation efficiency by modifying the model structure by incorporating attention mechanisms.…”
Section: Related Workmentioning
confidence: 99%
“…Ref. [35] proposed an attention-augmented convolution-based residual UNet architecture (AA-ResUNet) for road extraction in remote sensing images, where the attention-enhanced convolution operation helps to capture remote global information and obtain a more discriminative feature representation. These works are used to improve the segmentation efficiency by modifying the model structure by incorporating attention mechanisms.…”
Section: Related Workmentioning
confidence: 99%