Smallholder Crop Type Mapping and Rotation Monitoring in Mountainous Areas with Sentinel-1/2 Imagery
Abstract
:1. Introduction
2. Data and Methods
2.1. Study Area
2.2. Data and Processing
2.2.1. Sentinel-1 Imagery and Preprocessing
2.2.2. Sentinel-2 Imagery and Preprocessing
2.2.3. Cropland Layer Mask
2.3. Crop Type Reference Data
2.4. Crop Type Classification
2.5. Accuracy Assessment
3. Results
3.1. Sentinel Features in Crop Classification
3.2. Classification Accuracy Assessment
3.3. Crop Type Distribution and Rotation
4. Discussion
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Total Observation of S1 | Total Observation of S2 | Good Observation of S2 | |
---|---|---|---|
2017 | 407 | 1492 | 505 |
2018 | 398 | 3777 | 1476 |
VIs | Full Name | Formula | Reference |
---|---|---|---|
EVI | Enhanced Vegetation Index | 2.5 × (NIR − Red)/(NIR + 6 × Red − 7.5 × Blue + 1) | [65] |
LSWI | Land Surface Water Index | (NIR − SWIR1)/(NIR + SWIR1) | [66] |
NDVI | Normalized Difference Vegetation Index | (NIR − Red)/(NIR + Red) | [67] |
NDYI | Normalized Difference Yellow Index | (Green − Blue)/(Green + Blue) | [68] |
REP | Red Edge Position | 705 + 35 × (0.5 × (RE3 + Red) − RE1)/(RE2 − RE1) | [69] |
Crop Type | 2017 | 2018 |
---|---|---|
Soybean | 60 | 57 |
Corn | 63 | 63 |
Rice | 31 | 29 |
Wheat | 55 | 55 |
Rapeseed | 52 | 60 |
Others | 27 | 25 |
Total | 288 | 289 |
Group | Features |
---|---|
G1 | B2, B3, B4, B5, B6, B7, B8, B8A, B11, B12 |
G2 | EVI, LSWI, NDVI, NDYI, REP |
G3 | VV, VH |
G12 | G1 + G2 |
G13 | G1 + G3 |
G23 | G2 + G3 |
G123 | G1 + G2 + G3 |
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Ren, T.; Xu, H.; Cai, X.; Yu, S.; Qi, J. Smallholder Crop Type Mapping and Rotation Monitoring in Mountainous Areas with Sentinel-1/2 Imagery. Remote Sens. 2022, 14, 566. https://doi.org/10.3390/rs14030566
Ren T, Xu H, Cai X, Yu S, Qi J. Smallholder Crop Type Mapping and Rotation Monitoring in Mountainous Areas with Sentinel-1/2 Imagery. Remote Sensing. 2022; 14(3):566. https://doi.org/10.3390/rs14030566
Chicago/Turabian StyleRen, Tingting, Hongtao Xu, Xiumin Cai, Shengnan Yu, and Jiaguo Qi. 2022. "Smallholder Crop Type Mapping and Rotation Monitoring in Mountainous Areas with Sentinel-1/2 Imagery" Remote Sensing 14, no. 3: 566. https://doi.org/10.3390/rs14030566