The Use of Remote Sensing to Quantitatively Assess the Visual Effect of Urban Landscape—A Case Study of Zhengzhou, China
Abstract
:1. Introduction
2. Data and Method
2.1. Overview of the Study Area
2.2. Introduction to Research Methods
2.3. Data Acquisition and Processing
2.3.1. Acquisition of Panoramic Images
2.3.2. Landsat8 OLI Images and Classification
2.3.3. Surface Elevation Data
2.4. Elo Rating System
2.5. Remote Sensing Model of the Landscape Visual Effect
2.6. Model Accuracy Assessment
3. Results and Analysis
3.1. Elo System Rating Results
3.2. Visual Effect Remote Sensing Model Result
3.2.1. Land Use Status and Surface Elevation
3.2.2. Visual Effect Modeling Results
3.2.3. Visual Effect Estimation Results
3.2.4. Verification of the Method
4. Discussion
4.1. Visual Effect Simulation
4.2. Effect of Typical Landscape Proportions in the Pictures to Visual Effect Scores
4.3. Limitations and Outlook
5. Conclusions
- (1)
- Using the combination of the questionnaire and the Elo rating system, the visual effect of urban landscape can be quantified and scored effectively. This provides a feasible quantitative assessment method for the assessment of the urban landscape visual effect.
- (2)
- Using the combination of the remote sensing technology and ANN simulation technology, the remote sensing estimation model of the urban landscape visual effect can be effectively constructed. By using 32 sampling points to train the network and 15 sampling points to validate the accuracy, the estimation model was found to have high accuracy. Those with a MAPE less than 0.05 and an RMSE less than 80 can be used for remote sensing estimation.
- (3)
- The overall landscape visual effect score of Zhengzhou in 2017 showed a low gradient distribution in the northeast and a high gradient distribution in the southwest. Furthermore, there was a high value island near the CBD of Jinshui District, indicating that the design concept of this area is advanced and pleasing to people’s visual experience.
- (4)
- The model simulation results showed that among the five elements, the building proportion has the most complex impact on the landscape visual effect. When the building proportion is 0.35 and 0.7, the visual effect score has two significant peaks. The other four elements have only one peak. The peak of vegetation proportion appears at 0.5, the peak of water proportion appears at 0.35, the peak of unused land proportion appears at 0.6, and the peak of average elevation appears at 180 m.
- (5)
- The proposed method could be easily applied to similar study areas by inputting land use maps and DSM maps into our trained ANN model.
- (6)
- The proposed scheme is friendly to any expansion. With more in situ samples and advanced machine learning methods, more exiting results could be revealed in the future works.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Class | Landsat OLI Image | Google Earth |
---|---|---|
Vegetation | ||
Construction land | ||
Water | ||
Unused land |
Area | Number of Sampling Points | Average Score | Standard Deviation | Variance | Average Score Ranking |
---|---|---|---|---|---|
North Third Ring Road | 7 | 1451.26 | 65.36 | 4271.95 | 6 |
Xiliu Lake Park | 9 | 1462.55 | 38.83 | 1507.71 | 5 |
Jinshui River | 11 | 1544.19 | 62.71 | 3933.01 | 4 |
Agricultural University (Wenhua Road) | 6 | 1644.08 | 63.28 | 4004.36 | 3 |
Longzi Lake | 9 | 1729.78 | 65.20 | 4251.06 | 2 |
Central Business District | 8 | 1780.63 | 75.28 | 5667.51 | 1 |
Class | Ground Truth (Pixels) | ||||
---|---|---|---|---|---|
Vegetation | Construction Land | Water | Unused Land | Total | |
Vegetation | 594 | 0 | 0 | 0 | 594 |
Construction land | 0 | 231 | 36 | 3 | 270 |
Water | 0 | 0 | 681 | 0 | 681 |
Unused land | 0 | 32 | 0 | 234 | 266 |
Total | 594 | 263 | 717 | 237 | 1811 |
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Xi, C.; Guo, Y.; He, R.; Mu, B.; Zhang, P.; Li, Y. The Use of Remote Sensing to Quantitatively Assess the Visual Effect of Urban Landscape—A Case Study of Zhengzhou, China. Remote Sens. 2022, 14, 203. https://doi.org/10.3390/rs14010203
Xi C, Guo Y, He R, Mu B, Zhang P, Li Y. The Use of Remote Sensing to Quantitatively Assess the Visual Effect of Urban Landscape—A Case Study of Zhengzhou, China. Remote Sensing. 2022; 14(1):203. https://doi.org/10.3390/rs14010203
Chicago/Turabian StyleXi, Chaofan, Yulong Guo, Ruizhen He, Bo Mu, Peixuan Zhang, and Yuan Li. 2022. "The Use of Remote Sensing to Quantitatively Assess the Visual Effect of Urban Landscape—A Case Study of Zhengzhou, China" Remote Sensing 14, no. 1: 203. https://doi.org/10.3390/rs14010203
APA StyleXi, C., Guo, Y., He, R., Mu, B., Zhang, P., & Li, Y. (2022). The Use of Remote Sensing to Quantitatively Assess the Visual Effect of Urban Landscape—A Case Study of Zhengzhou, China. Remote Sensing, 14(1), 203. https://doi.org/10.3390/rs14010203