Extraction the Spatial Distribution of Mangroves in the Same Month Based on Images Reconstructed with the FSDAF Model
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Introduction and Preprocessing
2.2.1. Satellite Image Data
2.2.2. Sample Data
2.2.3. Other Auxiliary Data
2.3. Research Method
2.3.1. FSDAF Model
2.3.2. Feature Extraction
2.3.3. Construction and Accuracy Evaluation of Mangrove Classification Model
2.3.4. Calculation of Landscape Pattern Index
3. Results and Analysis
3.1. Fusion Image Based on FSDAF Model
3.2. Mangrove Extraction Results Based on the Original Image and Fused Image
3.3. Analysis of Differences in Mangrove Extraction Results
3.4. Spatial Distribution and Area Extraction Results of Mangroves in China
3.5. Analysis Results of Mangrove Landscape Pattern in China
4. Conclusions
- (1)
- The fused image based on the FSDAF model is highly similar to the reference image, with a correlation coefficient ® of 0.85. The results indicate that the fused image based on the FSDAF model has a strong correlation with the reference image and can be used for the reconstruction of images depicting specific times;
- (2)
- The overall accuracy of extracting the spatial distribution of mangroves from the January 2021 image reconstructed based on the FSDAF model is 89.97%, which is better than the extraction result based on the original October image (the overall accuracy is 87.29%). In January 2021, the total area of mangroves in China was 27,122.4 ha, of which Guangdong had the largest area of 12,098.34 ha, while Macao had the smallest area of 16.74 ha. Guangdong, Guangxi, and Hainan provinces accounted for 90.29% of the total area of mangroves in China;
- (3)
- The mangroves in Guangdong, Guangxi, Fujian, Hong Kong, and Macao are highly fragmented and severely affected by human disturbance. The mangroves in Guangxi, Hainan, Zhejiang, and Hong Kong are densely distributed and have a higher degree of aggregation. The mangroves in Guangdong and Guangxi are irregular in shape and severely affected by human logging and invasive alien vegetation. The mangroves in Zhejiang, Hong Kong, and Macao are regular in shape, thanks to active local efforts to carry out artificial restoration.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Landsat Path/Row | Landsat Date | Landsat Path/Row | Landsat Date | Landsat Path/Row | Landsat Date | Landsat Path/Row | Landsat Date |
---|---|---|---|---|---|---|---|
117/45 | 16 January 2021 | 119/41 | 14 January 2021 | 119/42 | 14 January 2021 | 119/43 | 14 January 2021 |
120/43 | 21 January 2021 | 121/44 | 12 January 2021 | 121/45 | 12 January 2021 | 122/44 | 19 January 2021 |
124/45 | 1 January 2021 | 124/46 | 1 January 2021 | 124/47 | 1 January 2021 | 125/47 | 24 January 2021 |
Landsat | MODIS | Paired MODIS Data Date | Reconstructed Image | ||
---|---|---|---|---|---|
Path/Row | Date | Path/Row | (MOD/MYD/Mosaic) 1 | Date 2 | Band Number 3 |
117/43 | 29 September 2021 | H28/V06, H29/V06 | 30 September 2021 (MOD Mosaic) | 15 January 2021 | 6 |
117/44 | 1 February 2021 | H29/V06 | 6 February 2021 (MOD) | 26 January 2021 | 6 |
118/39 | 22 December 2020 | H28/V05, H29/V06 | 21 December 2020 (MOD Mosaic) | 29 January 2021 | 6 |
118/40 | 22 December 2020 | H28/V06 | 31 December 2020 (MYD) | 13 January 2021 | 5 |
118/41 | 10 April 2020 | H28/V06 | 9 April 2020 (MOD) | 15 January 2021 | 6 |
118/42 | 10 April 2020 | H28/V06 | 9 April 2020 (MOD) | 15 January 2021 | 6 |
118/43 | 7 November 2021 | H28/V06, H29/V06 | 11 November 2021 (MYD Mosaic) | 13 January 2021 | 5 |
118/44 | 7 November 2021 | H29/V06 | 6 November 2021 (MOD) | 15 January 2021 | 6 |
120/44 | 6 February 2021 | H28/V06 | 4 February 2021 (MYD) | 13 January 2021 | 5 |
122/45 | 4 February 2021 | H28/V06 | 4 February 2021 (MYD) | 31 January 2021 | 5 |
123/45 | 7 November 2020 | H28/V06 | 7 November 2020 (MYD) | 18 January 2021 | 5 |
123/46 | 19 June 2021 | H28/V06, H28/V07 | 20 June 2021 (MOD Mosaic) | 18 January 2021 | 6 |
123/47 | 19 June 2021 | H28/V07 | 20 June 2021 (MOD) | 18 January 2021 | 6 |
125/45 | 7 October 2021 | H28/V06 | 26 October 2021 (MOD) | 2 January 2021 | 6 |
Feature Category | Quantity | Specific Parameters | Instructions |
---|---|---|---|
Spectral | 8–10 | Band1-7, PCA-1, PCA-2, PCA-3 | The spectral features of the original Landsat image are band 1–7. The reconstructed Landsat image lacks band 1 (coastal). Some of the reconstructed Landsat images lack band 1 and band 6 (SWIR1) due to the presence of a stripe in MODIS band 6 that cannot participate in the reconstruction. In addition, all images were subjected to PCA, and the first three principal components (PCA-1, PCA-2, PCA-3) were fused with the original bands. |
Texture | 24 | Mean, Var, Hom, Con, Ent, Cor, ASM, Dis | The texture features of the first three principal components (PCA-1, PCA-2, PCA-3) of each image are calculated using a grayscale co-occurrence matrix. |
Index | 7 | NDVI [26] | |
MNDWI [27] 1 | |||
EVI [26] | |||
GNDVI [28] | |||
GEMI [29] | Among them: | ||
NDBI [30] | |||
Terrain | 3 | Slope direction, slope, elevation | Slope direction, slope, and elevation information can be calculated using ArcGIS 10.6. |
Original Landsat 8 Image on 7 October 2021 | Fusion Image on 2 January 2021 | |
---|---|---|
UA | 92.17% | 92.40% |
PA | 89.36% | 93.08% |
OA | 87.29% | 89.97% |
Kappa | 0.80 | 0.84 |
Mangrove_Original Image | Mangrove_Fusion Image | |
---|---|---|
Water | 1.999 | 1.998 |
Land | 1.996 | 1.960 |
Other_tree | 1.563 | 1.768 |
CA (ha) | NP (Number) | PD (No./100 ha) | ED (m) | AI (%) | LSI | |
---|---|---|---|---|---|---|
Guangdong | 12,098.34 | 3959 | 1.57 | 12.88 | 77.64 | 82.66 |
Guangxi | 7642.17 | 2044 | 1.75 | 13.22 | 83.01 | 50.33 |
Hainan | 4746.96 | 961 | 0.80 | 7.44 | 83.64 | 38.34 |
Fujian | 1085.94 | 460 | 2.09 | 13.59 | 77.61 | 25.34 |
Hongkong | 657.09 | 67 | 1.07 | 12.71 | 88.12 | 11.02 |
Taiwan | 635.67 | 268 | 0.86 | 5.83 | 73.98 | 22.49 |
Zhejiang | 239.49 | 82 | 0.35 | 2.49 | 81.94 | 10.06 |
Macao | 16.74 | 10 | 1.67 | 11.33 | 75.29 | 4.04 |
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You, Q.; Deng, W.; Liu, Y.; Tang, X.; Chen, J.; You, H. Extraction the Spatial Distribution of Mangroves in the Same Month Based on Images Reconstructed with the FSDAF Model. Forests 2023, 14, 2399. https://doi.org/10.3390/f14122399
You Q, Deng W, Liu Y, Tang X, Chen J, You H. Extraction the Spatial Distribution of Mangroves in the Same Month Based on Images Reconstructed with the FSDAF Model. Forests. 2023; 14(12):2399. https://doi.org/10.3390/f14122399
Chicago/Turabian StyleYou, Qixu, Weixi Deng, Yao Liu, Xu Tang, Jianjun Chen, and Haotian You. 2023. "Extraction the Spatial Distribution of Mangroves in the Same Month Based on Images Reconstructed with the FSDAF Model" Forests 14, no. 12: 2399. https://doi.org/10.3390/f14122399
APA StyleYou, Q., Deng, W., Liu, Y., Tang, X., Chen, J., & You, H. (2023). Extraction the Spatial Distribution of Mangroves in the Same Month Based on Images Reconstructed with the FSDAF Model. Forests, 14(12), 2399. https://doi.org/10.3390/f14122399