Javascript must be enabled to continue!
ASCEND-UNet: An Improved UNet Configuration Optimized for Rural Settlements Mapping
View through CrossRef
Different types of rural settlement agglomerations have been formed and mixed in space during the rural revitalization strategy implementation in China. Discriminating them from remote sensing images is of great significance for rural land planning and living environment improvement. Currently, there is a lack of automatic methods for obtaining information on rural settlement differentiation. In this paper, an improved encoder–decoder network structure, ASCEND-UNet, was designed based on the original UNet. It was implemented to segment and classify dispersed and clustered rural settlement buildings from high-resolution satellite images. The ASCEND-UNet model incorporated three components: firstly, the atrous spatial pyramid pooling (ASPP) multi-scale feature fusion module was added into the encoder, then the spatial and channel squeeze and excitation (scSE) block was embedded at the skip connection; thirdly, the hybrid dilated convolution (HDC) block was utilized in the decoder. In our proposed framework, the ASPP and HDC were used as multiple dilated convolution blocks to expand the receptive field by introducing a series of dilated rate convolutions. The scSE is an attention mechanism block focusing on features both in the spatial and channel dimension. A series of model comparisons and accuracy assessments with the original UNet, PSPNet, DeepLabV3+, and SegNet verified the effectiveness of our proposed model. Compared with the original UNet model, ASCEND-UNet achieved improvements of 4.67%, 2.80%, 3.73%, and 6.28% in precision, recall, F1-score and MIoU, respectively. The contributions of HDC, ASPP, and scSE modules were discussed in ablation experiments. Our proposed model obtained more accurate and stable results by integrating multiple dilated convolution blocks with an attention mechanism. This novel model enriches the automatic methods for semantic segmentation of different rural settlements from remote sensing images.
Title: ASCEND-UNet: An Improved UNet Configuration Optimized for Rural Settlements Mapping
Description:
Different types of rural settlement agglomerations have been formed and mixed in space during the rural revitalization strategy implementation in China.
Discriminating them from remote sensing images is of great significance for rural land planning and living environment improvement.
Currently, there is a lack of automatic methods for obtaining information on rural settlement differentiation.
In this paper, an improved encoder–decoder network structure, ASCEND-UNet, was designed based on the original UNet.
It was implemented to segment and classify dispersed and clustered rural settlement buildings from high-resolution satellite images.
The ASCEND-UNet model incorporated three components: firstly, the atrous spatial pyramid pooling (ASPP) multi-scale feature fusion module was added into the encoder, then the spatial and channel squeeze and excitation (scSE) block was embedded at the skip connection; thirdly, the hybrid dilated convolution (HDC) block was utilized in the decoder.
In our proposed framework, the ASPP and HDC were used as multiple dilated convolution blocks to expand the receptive field by introducing a series of dilated rate convolutions.
The scSE is an attention mechanism block focusing on features both in the spatial and channel dimension.
A series of model comparisons and accuracy assessments with the original UNet, PSPNet, DeepLabV3+, and SegNet verified the effectiveness of our proposed model.
Compared with the original UNet model, ASCEND-UNet achieved improvements of 4.
67%, 2.
80%, 3.
73%, and 6.
28% in precision, recall, F1-score and MIoU, respectively.
The contributions of HDC, ASPP, and scSE modules were discussed in ablation experiments.
Our proposed model obtained more accurate and stable results by integrating multiple dilated convolution blocks with an attention mechanism.
This novel model enriches the automatic methods for semantic segmentation of different rural settlements from remote sensing images.
Related Results
VM-UNet++ research on crack image segmentation based on improved VM-UNet
VM-UNet++ research on crack image segmentation based on improved VM-UNet
Abstract
Cracks are common defects in physical structures, and if not detected and addressed in a timely manner, they can pose a severe threat to the overall safety of th...
PLANNING OF RURAL SETTLEMENTS IN CROATIA
PLANNING OF RURAL SETTLEMENTS IN CROATIA
Planned rural settlements are a reflection of socio-political, economic, and cultural conditions of society. The question arises whether there are planned rural settlements in Croa...
Coupling Coordination Relationship and Spatiotemporal Heterogeneity between Functional Diversification and Settlement Evolution in Traditional Mountain Areas (2000–2020): A Case Study of Fengjie County, China
Coupling Coordination Relationship and Spatiotemporal Heterogeneity between Functional Diversification and Settlement Evolution in Traditional Mountain Areas (2000–2020): A Case Study of Fengjie County, China
Since the socio-economic reform in 1978, rural China has undergone drastic spatial restructuring, and the trend of multifunctional development and dynamic evolution of settlements ...
Spatial Morphology Evolution of Rural Settlements in the Lower Yellow River Plain: The Case of Menggang Town in Changyuan City, China
Spatial Morphology Evolution of Rural Settlements in the Lower Yellow River Plain: The Case of Menggang Town in Changyuan City, China
This study investigated the spatial pattern evolution of the rural settlement system in the town of Menggang, China, based on settlement patches extracted from remote sensing data ...
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Hydatid Disease of The Brain Parenchyma: A Systematic Review
Abstarct
Introduction
Isolated brain hydatid disease (BHD) is an extremely rare form of echinococcosis. A prompt and timely diagnosis is a crucial step in disease management. This ...
Assessment of Sustainable Development of Rural Settlements in Mountainous Areas: A Case Study of the Miaoling Mountains in Southwestern China
Assessment of Sustainable Development of Rural Settlements in Mountainous Areas: A Case Study of the Miaoling Mountains in Southwestern China
As a model based on the harmonious development of society, economy, population, and resources, sustainable development is an essential driving force for a country’s social and econ...
Ketersediaan Ruang Terbuka Hijau dan Prasarana Lingkungan Permukiman Kekalik Timur Kota Mataram
Ketersediaan Ruang Terbuka Hijau dan Prasarana Lingkungan Permukiman Kekalik Timur Kota Mataram
Lingkungan permukiman Kekalik Timur mengalami pertumbuhan penduduk dan perkembangan kawasan, hal ini dapat mempengaruhi ruang terbuka hijau dan ketersediaan prasarana lingkungan ya...
Perceptions of Telemedicine and Rural Healthcare Access in a Developing Country: A Case Study of Bayelsa State, Nigeria
Perceptions of Telemedicine and Rural Healthcare Access in a Developing Country: A Case Study of Bayelsa State, Nigeria
Abstract
Introduction
Telemedicine is the remote delivery of healthcare services using information and communication technologies and has gained global recognition as a solution to...

