Fast and Automatic Data-Driven Thresholding for Inundation Mapping with Sentinel-2 Data
Abstract
:1. Introduction
- Radar-based approaches proposed in the literature rely on the specular behavior of the free water surface and its high dielectric constant; thus, very little backscatter is returned to the satellite sensor [1]. Gray-level thresholding is the most prevalent approach. In this context, all pixels with a backscatter lower than a specified threshold in an intensity image are mapped as water [4]. Issues arise with shadow areas or forward scattering sandy soils. Another approach to map surface waters is using active contour models, which exploit local tone and texture measures to delineate flood extension [5,6]. However, emergent vegetation [7,8] and/or waves [9] increase the amount of backscattered radiation from flooded surfaces to the satellite, making the delineation between water and land more difficult.
- In optical images, several methods have been used to detect water bodies by applying thresholds to one or more spectral bands or indices [10,11,12,13]. Commonly applied indices include the Normalized Difference Water Index (NDWI) [11,12,13] and the Modified NDWI [10,12,13], whose estimation relies on green and near-infrared or short-wave infrared bands. Other approaches rely on machine-learning algorithms to extract water bodies from optical imagery. Prevalent supervised classification algorithms that have been used include Random Forests [14,15], neural networks [16], decision trees [17], support vector machines [18,19] and the perceptron model [20]. Classification-based approaches may achieve higher accuracy than thresholding methods; however, ground truth data are required to select appropriate training samples.
- Global approaches [23] estimate thresholds based on the histogram analysis of the complete image. The capability of a global thresholding algorithm to detect an optimal histogram threshold may be unsatisfying when the class proportions within the image are imbalanced [29]. Additionally, the water and non-water class distributions may be quite different when considering the complete image compared to image subsets [27], and this may hamper the ability to detect an optimal global threshold for the complete area.
- Local thresholding approaches separate image into subsets and estimate local thresholds for subsets containing large portions of pixels belonging to the water and non-water classes, and these thresholds may be combined to estimate an overall threshold. Several of the methods rely on image subsets of fixed size [24,26,27,28] to estimate local thresholds, while there is a limited number of recent approaches that adapt the size of the subregions to the information content retrieved from the image [22,29]. The approach in Chini et al. [29] estimates subregions of variable size, which allow the parameterization of the distribution of water and non-water classes, while the approach in Nakmuenwai et al. [22] selects subregions of elliptical shape having a water and non-water cover ratio of nearly 1:1.
2. Materials and Methods
2.1. Study Area
2.2. Satellite Imagery
Preprocessing of Sentinel-2 Data
2.3. Ground Truth Data
2.4. Unsupervised Approach
2.4.1. Segmentation of the Satellite Image
2.4.2. Mapping of the Open-Water Subclass
2.4.3. Testing of Mean-Shift Segmentation Parameters
2.4.4. Effect of an Alternative Algorithm for Estimating Splitting Thresholds
2.4.5. Mapping of the Water-Vegetation Subclass
2.5. Supervised Approach
3. Results
3.1. Accuracy Assessment Results for S2 and Landsat Coincident Overpasses
3.2. Combined Accuracy
3.3. Performance of the Unsupervised Approach in Marshland
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Cycle | September | October | November | December | January | February | March | April | May | June | July | August |
---|---|---|---|---|---|---|---|---|---|---|---|---|
2015–2016 | 19 29 (L) | 17 | 8 | 6 (L) | 16 (L) 26 | 5 25 (L) | ||||||
2016–2017 | 4 24 | 4 (L) | 23 (L) | 12 | 2 12 | 2 | 1 (L) | 11 21 31 | 20 | |||
11 |
Setinel-2 Bands | Resolution |
---|---|
Band 2 (Blue); Band 3 (Green); Band 4 (Red); Band 8 (NIR) | 10 m |
Band 5 (Vegetation Red Edge); Band 6 (Vegetation Red Edge); Band 7 (Vegetation Red Edge); Band 8A (Narrow NIR); Band 11 (SWIR); Band 12 (SWIR) (upscaled to 10m relying on nearest-neighbors) | 20 m |
Index Name and Abbreviation | Equation |
---|---|
Normalized Difference Water Index (NDWI) | (Band 3 − Band 8)/(Band 3 + Band 8) |
Modified NDWI (MNDWI) | (Band 3 − Band 11)/(Band 3 + Band 11) |
Normalized Difference Vegetation Index (NDVI) | (Band 8 − Band 4)/(Band 8 + Band 4) |
Modified Normalized Difference Vegetation Index (MNDVI) | (Band 7 − Band 5)/(Band 7 + Band 5) |
Part A | Unsupervised: Complete Area | ||||||||||||||
Date | 29 December 2015 | 6 June 2016 | 16 July 2016 | 25 August 2016 | 4 October 2016 | 23 December 2016 | 1 June 2017 | ||||||||
Class | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | |
Water class | 91.34% | 93.41% | 93.21% | 94.46% | 90.03% | 68.98% | 94.77% | 70.79% | 90.76% | 97.16% | 85.10% | 95.82% | 92.49% | 95.21% | |
Non-water class | 99.20% | 98.93% | 99.38% | 99.23% | 96.79% | 99.19% | 97.05% | 99.60% | 99.93% | 99.75% | 98.94% | 95.86% | 99.10% | 98.55% | |
OA | 98.33% | 98.75% | 96.30% | 96.89% | 99.68% | 95.86% | 98.02% | ||||||||
k | 0.9143 | 0.9313 | 0.7613 | 0.7939 | 0.9369 | 0.8753 | 0.9266 | ||||||||
Part B | Supervised: Complete Area | ||||||||||||||
Date | 29 December 2015 | 06 June 2016 | 16 July 2016 | 25 August 2016 | 4 October 2016 | 23 December 2016 | 1 June 2017 | ||||||||
Class | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | |
Water class | 99.26% | 91.58% | 99.05% | 92.85% | 98.81% | 93.02% | 98.24% | 84.90% | 98.30% | 95.78% | 98.61% | 92.23% | 99.38% | 93.98% | |
Non-water class | 98.87% | 99.91% | 99.13% | 99.89% | 99.41% | 99.90% | 98.68% | 99.87% | 99.88% | 99.95% | 97.62% | 99.59% | 98.76% | 99.88% | |
OA | 98.91% | 99.12% | 99.37% | 98.65% | 99.84% | 97.84% | 98.86% | ||||||||
k | 0.9465 | 0.9536 | 0.9548 | 0.9036 | 0.9694 | 0.9391 | 0.9592 |
Part A | Unsupervised: Marshland | ||||||||||||||
Date | 29 December 2015 | 6 June 2016 | 16 July 2016 | 25 August 2016 | 4 October 2016 | 23 December 2016 | 1 June 2017 | ||||||||
Class | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | |
Water class | 91.48% | 99.36% | 91.07% | 99.73% | 88.74% | 82.41% | 90.16% | 54.68% | 92.83% | 95.97% | 92.84% | 99.98% | 88.32% | 99.93% | |
Non-water class | 99.98% | 99.75% | 99.93% | 97.34% | 99.92% | 99.95% | 99.90% | 99.99% | 99.99% | 99.99% | 99.94% | 79.79% | 99.95% | 90.92% | |
OA | 99.74% | 97.85% | 99.87% | 99.89% | 99.99% | 94.40% | 94.59% | ||||||||
k | 0.9512 | 0.9383 | 0.8540 | 0.6802 | 0.9438 | 0.8508 | 0.8902 | ||||||||
Part B | Supervised: Marshland | ||||||||||||||
Date | 29 December 2015 | 6 June 2016 | 16 July 2016 | 25 August 2016 | 4 October 2016 | 23 December 2016 | 1 June 2017 | ||||||||
Class | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | |
Water class | 98.59% | 92.76% | 99.26% | 97.95% | 96.53% | 95.74% | 97.56% | 87.25% | 98.65% | 77.81% | 99.01% | 98.52% | 99.24% | 98.70% | |
Non-water class | 99.77% | 99.96% | 99.37% | 99.77% | 99.98% | 99.99% | 99.98% | 99.99% | 99.98% | 99.99% | 94.73% | 96.45% | 98.88% | 99.35% | |
OA | 99.74% | 99.34% | 99.97% | 99.98% | 99.98% | 98.07% | 99.05% | ||||||||
k | 0.9545 | 0.9817 | 0.9612 | 0.9611 | 0.8699 | 0.9435 | 0.9809 |
Part A | Unsupervised: Rice-Paddies | ||||||||||||||
Date | 29 December 2015 | 6 June 2016 | 16 July 2016 | 25 August 2016 | 4 October 2016 | 23 December 2016 | 1 June 2017 | ||||||||
Class | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | |
Water class | 92.08% | 99.97% | 94.62% | 99.58% | 86.34% | 70.44% | 95.90% | 76.23% | 47.30% | 98.80% | 82.26% | 99.98% | 95.15% | 99.94% | |
Non-water class | 99.95% | 86.49% | 99.75% | 96.80% | 71.44% | 86.90% | 75.36% | 95.70% | 99.99% | 99.69% | 99.95% | 65.84% | 99.87% | 90.33% | |
OA | 94.73% | 97.80% | 78.00% | 84.64% | 99.69% | 86.77% | 96.62% | ||||||||
k | 0.8863 | 0.9529 | 0.5642 | 0.6967 | 0.6384 | 0.7024 | 0.9236 | ||||||||
Part B | Supervised: Rice-Paddies | ||||||||||||||
Date | 29 December 2015 | 6 June 2016 | 16 July 2016 | 25 August 2016 | 4 October 2016 | 23 December 2016 | 1 June 2017 | ||||||||
Class | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | |
Water class | 99.63% | 98.98% | 99.07% | 97.84% | 98.87% | 98.00% | 97.85% | 87.23% | 89.18% | 74.10% | 98.71% | 98.39% | 99.69% | 99.51% | |
Non-water class | 97.98% | 99.27% | 98.66% | 99.42% | 98.41% | 99.10% | 88.19% | 98.03% | 99.81% | 99.94% | 95.27% | 96.21% | 98.92% | 99.31% | |
OA | 99.08% | 98.81% | 98.61% | 92.56% | 99.75% | 97.84% | 99.45% | ||||||||
k | 0.9792 | 0.9749 | 0.9719 | 0.8513 | 0.8082 | 0.9429 | 0.9871 |
Part A | Unsupervised: Temporary Ponds | ||||||||||||||
Date | 29 December 2015 | 6 June 2016 | 16 July 2016 | 25 August 2016 | 4 October 2016 | 23 December 2016 | 1 June 2017 | ||||||||
Class | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | |
Water class | 93.03% | 83.21% | 94.25% | 65.53% | 96.58% | 33.58% | 94.76% | 23.40% | 98.37% | 12.25% | 79.12% | 89.16% | 92.24% | 54.89% | |
Non-water class | 99.99% | 99.99% | 99.95% | 99.99% | 99.90% | 99.99% | 99.93% | 99.99% | 99.92% | 99.99% | 99.99% | 99.97% | 99.90% | 99.99% | |
OA | 99.98% | 99.95% | 99.90% | 99.93% | 99.92% | 99.95% | 99.89% | ||||||||
k | 0.8784 | 0.7729 | 0.4980 | 0.3751 | 0.2177 | 0.8382 | 0.6877 | ||||||||
Part B | Supervised: Temporary Ponds | ||||||||||||||
Date | 29 December 2015 | 6 June 2016 | 16 July 2016 | 25 August 2016 | 4 October 2016 | 23 December 2016 | 1 June 2017 | ||||||||
Class | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | PA | UA | |
Water class | 96.60% | 55.82% | 95.83% | 60.11% | 99.09% | 33.33% | 99.37% | 21.36% | 100% | 10.29% | 90.36% | 58.10% | 96.51% | 59.70% | |
Non-water class | 99.95% | 99.99% | 99.94% | 99.99% | 99.90% | 99.99% | 99.92% | 99.99% | 99.90% | 100% | 99.90% | 99.99% | 99.92% | 99.99% | |
OA | 99.95% | 99.94% | 99.90% | 99.92% | 99.90% | 99.89% | 99.91% | ||||||||
k | 0.7073 | 0.7372 | 0.4984 | 0.3513 | 0.1864 | 0.7067 | 0.7373 |
Water Class | Non-Water Class | ||||||
---|---|---|---|---|---|---|---|
Measure | PA | UA | PA | UA | OA | k | |
Approach and Study Area | |||||||
1 | Unsupervised (MCET): Complete area | 90.23% | 88.90% | 98.62% | 98.80% | 97.71% | 0.8827 |
2 | Supervised: Complete area | 98.90% | 92.06% | 98.96% | 99.86% | 98.95% | 0.9477 |
3 | Unsupervised: Marshland | 91.14% | 99.77% | 99.95% | 97.82% | 98.18% | 0.9413 |
4 | Supervised: Marshland | 99.10% | 98.32% | 98.96% | 99.77% | 99.48% | 0.9839 |
5 | Unsupervised: Rice-paddies | 90.54% | 92.09% | 92.87% | 91.46% | 91.76% | 0.8347 |
6 | Supervised: Rice-paddies | 99.07% | 97.21% | 97.39% | 99.13% | 98.19% | 0.9639 |
7 | Unsupervised: Temporary Ponds | 89.67% | 52.59% | 99.94% | 99.99% | 99.93% | 0.6626 |
8 | Supervised: Temporary Ponds | 95.04% | 46.32% | 99.92% | 99.99% | 99.91% | 0.6224 |
9 | Unsupervised (Otsu): Complete area | 94.20% | 76.49% | 96.46% | 99.27% | 96.21% | 0.8320 |
Water Class | Non-Water Class | ||||||
---|---|---|---|---|---|---|---|
Measure | PA | UA | PA | UA | ΟA | k | |
Approach | |||||||
Unsupervised using | 91.14% | 99.77% | 99.95% | 97.82% | 98.18% | 0.9413 | |
Unsupervised using | 93.30% | 99.63% | 99.91% | 98.34% | 98.59% | 0.9548 |
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Kordelas, G.A.; Manakos, I.; Aragonés, D.; Díaz-Delgado, R.; Bustamante, J. Fast and Automatic Data-Driven Thresholding for Inundation Mapping with Sentinel-2 Data. Remote Sens. 2018, 10, 910. https://doi.org/10.3390/rs10060910
Kordelas GA, Manakos I, Aragonés D, Díaz-Delgado R, Bustamante J. Fast and Automatic Data-Driven Thresholding for Inundation Mapping with Sentinel-2 Data. Remote Sensing. 2018; 10(6):910. https://doi.org/10.3390/rs10060910
Chicago/Turabian StyleKordelas, Georgios A., Ioannis Manakos, David Aragonés, Ricardo Díaz-Delgado, and Javier Bustamante. 2018. "Fast and Automatic Data-Driven Thresholding for Inundation Mapping with Sentinel-2 Data" Remote Sensing 10, no. 6: 910. https://doi.org/10.3390/rs10060910
APA StyleKordelas, G. A., Manakos, I., Aragonés, D., Díaz-Delgado, R., & Bustamante, J. (2018). Fast and Automatic Data-Driven Thresholding for Inundation Mapping with Sentinel-2 Data. Remote Sensing, 10(6), 910. https://doi.org/10.3390/rs10060910