[go: up one dir, main page]
More Web Proxy on the site http://driver.im/
You seem to have javascript disabled. Please note that many of the page functionalities won't work as expected without javascript enabled.
 
 
Sign in to use this feature.

Years

Between: -

Subjects

remove_circle_outline

Journals

Article Types

Countries / Regions

Search Results (1)

Search Parameters:
Keywords = RDAU-Net

Order results
Result details
Results per page
Select all
Export citation of selected articles as:
24 pages, 9347 KiB  
Article
RDAU-Net: A U-Shaped Semantic Segmentation Network for Buildings near Rivers and Lakes Based on a Fusion Approach
by Yipeng Wang, Dongmei Wang, Teng Xu, Yifan Shi, Wenguang Liang, Yihong Wang, George P. Petropoulos and Yansong Bao
Remote Sens. 2025, 17(1), 2; https://doi.org/10.3390/rs17010002 - 24 Dec 2024
Viewed by 137
Abstract
The encroachment of buildings into the waters of rivers and lakes can lead to increased safety hazards, but current semantic segmentation algorithms have difficulty accurately segmenting buildings in such environments. The specular reflection of the water and boats with similar features to the [...] Read more.
The encroachment of buildings into the waters of rivers and lakes can lead to increased safety hazards, but current semantic segmentation algorithms have difficulty accurately segmenting buildings in such environments. The specular reflection of the water and boats with similar features to the buildings in the environment can greatly affect the performance of the algorithm. Effectively eliminating their influence on the model and further improving the segmentation accuracy of buildings near water will be of great help to the management of river and lake waters. To address the above issues, the present study proposes the design of a U-shaped segmentation network of buildings called RDAU-Net that works through extraction and fuses a convolutional neural network and a transformer to segment buildings. First, we designed a residual dynamic short-cut down-sampling (RDSC) module to minimize the interference of complex building shapes and building scale differences on the segmentation results; second, we reduced the semantic and resolution gaps between multi-scale features using a multi-channel cross fusion transformer module (MCCT); finally, a double-feature channel-wise fusion attention (DCF) was designed to improve the model’s ability to depict building edge details and to reduce the influence of similar features on the model. Additionally, an HRI Building dataset was constructed, comprising water-edge buildings situated in a riverine and lacustrine regulatory context. This dataset encompasses a plethora of water-edge building sample scenarios, offering a comprehensive representation of the subject matter. The experimental results indicated that the statistical metrics achieved by RDAU-Net using the HRI and WHU Building datasets are better than those of others, and that it can effectively solve the building segmentation problems in the management of river and lake waters. Full article
Show Figures

Figure 1

Figure 1
<p>The architecture of RDAU-Net.</p>
Full article ">Figure 2
<p>The running flow of dynamic convolution.</p>
Full article ">Figure 3
<p>The structure of RDSC module.</p>
Full article ">Figure 4
<p>The structure of the MCCT module.</p>
Full article ">Figure 5
<p>Multi-channel attention mechanism.</p>
Full article ">Figure 6
<p>The structure of the DCF module.</p>
Full article ">Figure 7
<p>Example of a typical sample of the HRI Building dataset.</p>
Full article ">Figure 8
<p>Results of ablation experiments on the HRI Building dataset. (<b>a</b>) Image. (<b>b</b>) Ground truth. (<b>c</b>) Baseline. (<b>d</b>) Baseline + RDSC. (<b>e</b>) Baseline + RDSC + MCCT. (<b>f</b>) Baseline + RDSC + MCCT + DCF.</p>
Full article ">Figure 9
<p>Results of ablation experiments on the WHU Building dataset. (<b>a</b>) Image. (<b>b</b>) Ground truth. (<b>c</b>) Baseline. (<b>d</b>) Baseline + RDSC. (<b>e</b>) Baseline + RDSC + MCCT. (<b>f</b>) Baseline + RDSC + MCCT + DCF.</p>
Full article ">Figure 10
<p>Visualization of the results of comparative experiments on the HRI Building dataset. (<b>a</b>) Image. (<b>b</b>) Ground truth. (<b>c</b>) FCN. (<b>d</b>) U-Net. (<b>e</b>) U-Net++. (<b>f</b>) Swin-UNet. (<b>g</b>) ACC-UNet. (<b>h</b>) CSC-UNet. (<b>i</b>) UCTransNet. (<b>j</b>) DTA-UNet. (<b>k</b>) RDAU-Net.</p>
Full article ">Figure 11
<p>Visualization of the results of comparative experiments on the WHU Building dataset. (<b>a</b>) Image. (<b>b</b>) Ground truth. (<b>c</b>) FCN. (<b>d</b>) U-Net. (<b>e</b>) U-Net++. (<b>f</b>) Swin-UNet. (<b>g</b>) ACC-UNet. (<b>h</b>) CSC-UNet. (<b>i</b>) UCTransNet. (<b>j</b>) DTA-UNet. (<b>k</b>) RDAU-Net.</p>
Full article ">
Back to TopTop