A Morphological Feature-Oriented Algorithm for Extracting Impervious Surface Areas Obscured by Vegetation in Collaboration with OSM Road Networks in Urban Areas
Abstract
:1. Introduction
2. Study Area and Data Used
2.1. The Study Area
2.2. Data Used
2.2.1. GF-2 Remotely Sensed Imagery
2.2.2. OpenStreetMap Road Network
- The road network is complete at a large scale; however, as the scale decreases, the completeness of the road network decreases, which means some roads totally disappear on low scales.
- Although some roads do not disappear, the road information is incomplete on a low scale.
3. Methodology
3.1. Vegetation Detection Based on Image Segmentation and Color VI
3.2. Skeleton Extraction
3.2.1. Data Preprocessing
3.2.2. Skeleton Extraction
3.3. Feature Mining
3.3.1. Feature Consistency
3.3.2. Feature Recognition
4. Results
4.1. Vegetation Detection from the GF-2 Image
4.2. Skeleton Extraction Using Mathematical Morphology
4.3. Feature Mining
5. Discussion
5.1. Deviation of Extracted Vegetation-Obscured ISAs
5.2. Network Structure of Extracted Vegetation-Obscured ISAs
5.3. Overestimation of Extracted Vegetation-Obscured ISAs
6. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Satellite Name | Spatial Resolution (m) | Number of Bands | Coordinate System | Range of Study Area | Acquisition Season |
---|---|---|---|---|---|
GF-2 | 0.8 | 3 (Red, Green, Blue) | WGS84 | 30.50–30.54° N 114.35–114.42° E | Summer, 2020 |
Num | Field Name | Description | Buffer Width (m) |
---|---|---|---|
1 | Motorway | Mainly high-grade roads, on which vegetation usually covers the road shoulders or non-motorized lanes attached to high-grade roads. The coverage of vegetation is not broad. | 1.25 |
2 | Trunk | ||
3 | Secondary | ||
4 | Tertiary | ||
5 | Trunk_link | ||
6 | Secondary_link | ||
7 | Cycleway | ||
8 | Unclassified | Contains some special road types. It should be noted that “Unclassified” does not mean that the classification is unknown. It refers to the least important roads in a country’s system. | 4.5 |
9 | Residential | ||
10 | Living_street | ||
11 | Service | ||
12 | Null | Roads without grade | |
13 | Pedestrian | Only for people to walk. | 1 |
14 | Footway | ||
15 | Steps | ||
16 | Path | A non-specific path. It can be used as a cycleway or sidewalk. | |
17 | Construction | Roads under construction, do not study | 0 |
Proposed Algorithm | |
---|---|
PA | 79.98% |
UA | 56.08% |
OA | 86.64% |
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Mao, T.; Fan, Y.; Zhi, S.; Tang, J. A Morphological Feature-Oriented Algorithm for Extracting Impervious Surface Areas Obscured by Vegetation in Collaboration with OSM Road Networks in Urban Areas. Remote Sens. 2022, 14, 2493. https://doi.org/10.3390/rs14102493
Mao T, Fan Y, Zhi S, Tang J. A Morphological Feature-Oriented Algorithm for Extracting Impervious Surface Areas Obscured by Vegetation in Collaboration with OSM Road Networks in Urban Areas. Remote Sensing. 2022; 14(10):2493. https://doi.org/10.3390/rs14102493
Chicago/Turabian StyleMao, Taomin, Yewen Fan, Shuang Zhi, and Jinshan Tang. 2022. "A Morphological Feature-Oriented Algorithm for Extracting Impervious Surface Areas Obscured by Vegetation in Collaboration with OSM Road Networks in Urban Areas" Remote Sensing 14, no. 10: 2493. https://doi.org/10.3390/rs14102493
APA StyleMao, T., Fan, Y., Zhi, S., & Tang, J. (2022). A Morphological Feature-Oriented Algorithm for Extracting Impervious Surface Areas Obscured by Vegetation in Collaboration with OSM Road Networks in Urban Areas. Remote Sensing, 14(10), 2493. https://doi.org/10.3390/rs14102493