Detecting Phenological Development of Winter Wheat and Winter Barley Using Time Series of Sentinel-1 and Sentinel-2
Abstract
:1. Introduction
2. Study Sites
3. Materials and Methods
3.1. Data
3.1.1. Sentinel-1 Data
3.1.2. Sentinel-2 Data
3.1.3. Field Data
3.1.4. Meteorological and Phenological Data
3.2. Methods
3.2.1. Data Processing
3.2.2. Time Series Analysis
4. Results
4.1. BBCH 31—Beginning of Stem Elongation
4.2. BBCH 51—Beginning of Heading
4.3. BBCH 75—Medium Milk
4.4. BBCH 87—Hard Dough
4.5. BBCH 99—Harvest
5. Discussion
5.1. Evaluation of the Results
5.2. Uncertainties and Outlook
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Test Site | Year | Sentinel-1 | Sentinel-2 | Wheat Fields | Barley Fields |
---|---|---|---|---|---|
DEMMIN | 2017 | 26 | 9 (8) | 59 | 15 |
2018 | 24 | 22 (18) | 51 | 22 | |
Blönsdorf | 2017 | 26 | 7 (6) | 39 | 18 |
2018 | 24 | 35 (29) | 46 | 33 |
DWD | BBCH | Name | Description |
---|---|---|---|
15 | 31 | Beginning of Stem Elongation | About half of the plants grow clearly in length and the first stem node above the ground is perceptible. |
18 | 51 | Beginning of Heading | At about half of the stems, the first spikelets are visible and emerge laterally from the sheats. |
19 | 75 | Medium Milk | The grain content is milky. The first grains reached their final size and are still green. |
21 | 87 | Hard Dough | First grains in about half of the ears have changed their color from green to yellow and can be easily removed from from the panicle. The grain content is solid. |
24 | 99 | Harvest | The field is harvested. |
BBCH | Crop Type | Parameter | Time Series Feature | Mean | Median |
---|---|---|---|---|---|
31 | Wheat | Alpha, Entropy, Anisotropy, VH/VV | 2. Breakpoint | 8–15 | 5–6 |
NDVI (2018) | 2. Breakpoint | 10–14 | 4–9 | ||
VH | Maximum | 8–15 | 6–15 | ||
Barley | VV (2017) | 1. Breakpoint | 11 | 8–10 | |
VV (2018) | 1. Breakpoint | 3–5 | 1–3 | ||
Alpha, Entropy, Anisotropy, VH/VV, NDVI (2018) | 1. Breakpoint | 8 | 5 | ||
VH (2018) | Maximum | 9 | 9 | ||
51 | Wheat | Alpha, Entropy, VH/VV | Maximum | 7–9 | 4–7 |
Anisotropy | Minimum | 7–9 | 4–7 | ||
VH, VV | Minimum | 4–7 | 2–5 | ||
NDVI | Maximum | 2–8 | 2–7 | ||
Barley | Alpha, Entropy, VH/VV | Maximum | 9–10 | 9 | |
Anisotropy | Minimum | 9–10 | 9 | ||
VH, VV | Minimum | 3–6 | 3–6 | ||
NDVI | Maximum | 10 | 10 | ||
75 | Wheat | Alpha, Entropy, VH/VV (2017) | Minimum | 10 | 5 |
Anisotropy (2017) | Maximum | 10 | 5 | ||
Barley | no data | - | - | - | |
87 | Wheat | Alpha, Entropy, Anisotropy, VH/VV (2018) | 4. Breakpoint | 7–12 | 7–8 |
VV (2018) | Maximum | 10–19 | 3–5 | ||
Barley | Alpha, Entropy, Anisotropy, VH/VV (2017) | Maximum | 7–13 | 5–7 | |
Alpha, Entropy, Anisotropy, VH/VV (2018) | 4. Breakpoint | 7–12 | 3–13 | ||
VH, VV | Maximum | 6–8 | 5–9 | ||
VH (2018) | 4. Breakpoint | 3–5 | 1–3.5 | ||
VV (2018) | 3. Breakpoint | 6–8 | 1–3.5 | ||
99 | Wheat | not detected | - | - | - |
Barley | Alpha, Entropy, Anisotropy, VH/VV, VH | 4. Breakpoint | 3–12 | 2–9 | |
VV | Minimum | 9–14 | 2–10 |
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Harfenmeister, K.; Itzerott, S.; Weltzien, C.; Spengler, D. Detecting Phenological Development of Winter Wheat and Winter Barley Using Time Series of Sentinel-1 and Sentinel-2. Remote Sens. 2021, 13, 5036. https://doi.org/10.3390/rs13245036
Harfenmeister K, Itzerott S, Weltzien C, Spengler D. Detecting Phenological Development of Winter Wheat and Winter Barley Using Time Series of Sentinel-1 and Sentinel-2. Remote Sensing. 2021; 13(24):5036. https://doi.org/10.3390/rs13245036
Chicago/Turabian StyleHarfenmeister, Katharina, Sibylle Itzerott, Cornelia Weltzien, and Daniel Spengler. 2021. "Detecting Phenological Development of Winter Wheat and Winter Barley Using Time Series of Sentinel-1 and Sentinel-2" Remote Sensing 13, no. 24: 5036. https://doi.org/10.3390/rs13245036