Characterizing the Spatial and Temporal Availability of Very High Resolution Satellite Imagery in Google Earth and Microsoft Bing Maps as a Source of Reference Data
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Extraction from Google Earth and Microsoft Bing Maps
2.2. Spatial-Temporal Patterns of the Image Dates
2.3. Availability of Very High Resolution (VHR) Images in Protected Areas
2.4. Availability of VHR Images in Areas with High Rates of Deforestation
- Regions where crop expansion is the main driver of forest loss, i.e., the Amazon, the Congo basin, Indonesia and Malaysia; and
- Developed countries with intensive forest management: i.e., Sweden and Finland.
2.5. Availability of VHR Images in Areas with Cropland
- Countries with poor cropland monitoring systems, identified as countries with the highest food security risks [20], i.e., Angola, Chad, Ethiopia, Mongolia, Mozambique and Namibia;
- Countries with a large cropland expansion or cropland loss since 2000, i.e., Nigeria, Indonesia, Brazil, Argentina, Tanzania, Australia, India and Sudan based on FAO statistics and a recent study on risks to biodiversity due to cropland expansion and intensification [21];
- The USA, which was chosen because it has the best coverage of VHR imagery.
2.6. Availability of VHR Images in Urban Areas
2.7. Software Used
3. Results
3.1. Spatial-Temporal Distribution of VHR Satellite Images
3.2. Availability of VHR Images for Monitoring Protected Areas
3.3. Availability of VHR Images for Monitoring Deforestation
3.4. Availability of VHR Imagery in Cropland Areas
3.5. Availability of VHR Imagery for Monitoring Urban Areas
4. Discussion
Supplementary Materials
Author Contributions
Funding
Conflicts of Interest
References
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Spatial-Temporal Patterns of the Image Dates | Indicator | Description |
---|---|---|
(1) Calculated per grid point | Number of images | Total number of images available in a certain location |
Number of unique years | Some of the historical imagery in Google Earth is concentrated in the same year so this indicator shows how many unique years are contained within the Google Earth archive, which is relevant information for monitoring change over time | |
An index of gaps in the time series | The number of unique images at a location was divided by the difference in years between the oldest and most recent image. Values of 1 indicate no time gaps in the time series; as the index decreases, the gap in the time series increases. This indicator was calculated for the USA and India as both countries have high numbers of images and high numbers of unique images. | |
Number of seasons | The dates were grouped by the four seasons of winter (December, January, February), spring (March, April, May), summer (June, July, August) and autumn (September, October, November); this indicator shows the number of historical images that fall in each of the four seasons, which is a relevant indicator for landscapes that change seasonally. | |
(2) Calculated per stratum (region) | Coverage with very high resolution (VHR) imagery (%) | Percentage of sample points with VHR imagery in Google Earth and Microsoft Bing Maps. |
Average number of images per grid point | Total sum of all numbers of images per grid points in a certain stratum divided by the total number of grid points in this stratum. | |
Average number of unique years per grid point | Total sum of all numbers of unique years per grid points in a certain stratum divided by the total number of grid points in this stratum. | |
Average difference between the oldest and the most recent date (years) | Total sum of all numbers of unique years per grid points in a certain stratum divided by the total number of grid points in this stratum. | |
Most recent year, calculated as the median | At each grid point, we selected the year of the most recent image. Then from a subset of grid points in a certain stratum, we calculated the median of the most recent year. | |
Oldest year, calculated as the median | At each grid point, we selected the year of the oldest image. Then from a subset of grid points in a certain stratum, we calculated the median of the oldest years. | |
Average number of different seasons per location | Total sum of all numbers of different seasons per grid point in a certain stratum divided by the total number of grid points in this stratum. |
Region | Total Number of Grid Points | Google Earth | Microsoft Bing Maps | |||||
---|---|---|---|---|---|---|---|---|
Coverage with VHR Imagery (%) | Average Number of Images per Grid Point | Average Number of Unique Years per Grid Point | Average Difference between the Oldest and the Most Recent Date (Years) | Most Recent Year, Calculated as the Median | Coverage with VHR Imagery (%) | Most Recent Year, Calculated as Median | ||
North America | 3421 | 47% | 5 | 5 | 10 | 2016 | 51% | 2011 |
Central America | 219 | 95% | 4 | 3 | 6 | 2016 | 94% | 2013 |
Most South America | 1534 | 72% | 4 | 3 | 5 | 2016 | 88% | 2010 |
Northern Europe | 318 | 90% | 3 | 2 | 3 | 2015 | 64% | 2012 |
Southern Europe | 142 | 99% | 5 | 4 | 8 | 2016 | 96% | 2011 |
Western Europe | 136 | 99% | 4 | 3 | 7 | 2016 | 100% | 2012 |
Eastern Europe | 3129 | 39% | 3 | 2 | 4 | 2016 | 58% | 2012 |
Northern Africa | 740 | 73% | 3 | 2 | 4 | 2013 | 67% | 2013 |
Western Africa | 509 | 70% | 3 | 3 | 4 | 2016 | 67% | 2013 |
Middle Africa | 536 | 75% | 2 | 2 | 3 | 2013 | 65% | 2013 |
Eastern Africa | 530 | 96% | 4 | 3 | 5 | 2016 | 90% | 2013 |
Southern Africa | 243 | 100% | 5 | 3 | 7 | 2016 | 99% | 2013 |
Eastern Asia | 1212 | 89% | 3 | 3 | 4 | 2013 | 82% | 2012 |
Western Asia | 415 | 79% | 4 | 3 | 5 | 2016 | 93% | 2013 |
Southern Asia | 583 | 91% | 7 | 4 | 8 | 2016 | 92% | 2015 |
Southeastern Asia | 372 | 89% | 5 | 3 | 6 | 2016 | 58% | 2013 |
Regions | Total Number of Points Inside Protected Areas | Google Earth | Microsoft Bing Maps | ||||||
---|---|---|---|---|---|---|---|---|---|
Coverage with VHR Imagery (%) | Most Recent Year, Calculated as the Median | Oldest Year, Calculated as the Median | Average Number of Images per Location | Average Number of Unique Years Per Location | Average Number of Different Seasons per Location | Coverage with VHR Imagery (%) | Most Recent Year, Calculated as the Median | ||
Northern America and Central America (excl. Greenland) | 361 | 54% | 2013 | 2006 | 4 | 3 | 2 | 59% | 2011 |
South America | 322 | 48% | 2013 | 2009 | 2 | 2 | 2 | 84% | 2010 |
Australia and New Zealand | 117 | 63% | 2014 | 2006 | 3 | 3 | 2 | 100% | 2014 |
Asia (Southern, Eastern, Southern-Eastern, Central and Western) | 337 | 72% | 2013 | 2009 | 3 | 2 | 2 | 87% | 2012 |
Africa | 324 | 84% | 2013 | 2009 | 3 | 3 | 2 | 79% | 2013 |
Western, Southern and Northern Europe | 116 | 90% | 2014 | 2010 | 3 | 3 | 2 | 83% | 2012 |
Eastern Europe | 349 | 35% | 2014 | 2009 | 3 | 3 | 2 | 58% | 2012 |
Region | Number of Points | Number of Points Classed as ‘Forest’ | Google Earth | Microsoft Bing Maps | |||||
---|---|---|---|---|---|---|---|---|---|
Coverage by VHR Imagery (%) | Oldest Year, Calculated as the Median | Most Recent Year, Calculated as the Median | Average Number of Images | Average Number of Unique Years | Coverage by VHR Imagery (%) | Most Frequent Year, Calculated as the Median | |||
Amazon biome | 694 | 601 | 48% | 2010 | 2012 | 1 | 1 | 93% | 2010 |
Congo basin | 439 | 277 | 74% | 2012 | 2013 | 2 | 1 | 92% | 2012 |
Indonesia and Malaysia | 182 | 171 | 82% | 2011 | 2015 | 3 | 2 | 47% | 2012 |
Sweden and Finland | 142 | 123 | 85% | 2012 | 2014 | 2 | 2 | 67% | 2012 |
Selected Countries | Total Number of Points | Number of Points Classed as ‘Cropland’ | Google Earth | Microsoft Bing Maps | |||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Coverage with VHR Imagery (%) | Oldest Year, Calculated as the Median | Most Recent Year, Calculated as the Median | Number of Images | Average Number of Unique Years | Average Number of Different Seasons per Location | Coverage with VHR Imagery (%) | Most Frequent Year, Calculated as the Median | ||||
Top countries with highest priority to map croplands | Angola | 102 | 13 | 100% | 2007 | 2013 | 2 | 2 | 92% | 2012 | 2 |
Chad | 105 | 12 | 92% | 2010 | 2013 | 2 | 2 | 100% | 2013 | 1 (non-growing season) | |
Ethiopia | 91 | 33 | 94% | 2012 | 2016 | 6 | 3 | 94% | 2012 | 2 | |
Mongolia | 183 | 0 | 0 | - | - | 0 | 0 | 0 | - | - | |
Mozambique | 68 | 4 | 100% | 2010 | 2013 | 2 | 2 | 100% | 2012 | 2 | |
Namibia | 75 | 3 | 100% | 2005 | 2016 | 5 | 3 | 100% | 2012 | 2 | |
Top countries with cropland expansion, 2000–2014 | Nigeria | 74 | 53 | 100% | 2007 | 2016 | 6 | 4 | 87% | 2012 | 2 |
Indonesia | 153 | 23 | 96% | 2007 | 2016 | 7 | 4 | 74% | 2012 | 1 (growing season) | |
Brazil | 705 | 52 | 92% | 2005 | 2014 | 4 | 3 | 100% | 2011 | 2 | |
Argentina | 284 | 60 | 93% | 2004 | 2016 | 4 | 3 | 100% | 2013 | 2 | |
Tanzania | 77 | 26 | 100% | 2008 | 2015 | 4 | 3 | 96% | 2012 | 2 | |
Top countries with cropland area loss, 2000–2014 | Australia | 699 | 45 | 98% | 2010 | 2015 | 4 | 3 | 100% | 2014 | 2 |
India | 274 | 170 | 100% | 2004 | 2016 | 9 | 5 | 100% | 2015 | 2 | |
Sudan | 209 | 29 | 98% | 2009 | 2015 | 3 | 2 | 100% | 2012 | 2 | |
USA | 1108 | 172 | 99% | 1994 | 2015 | 10 | 9 | 2 | 100% | 2011 |
Number of Points | Google Earth | Microsoft Bing Maps | |||||
---|---|---|---|---|---|---|---|
Coverage by VHR Imagery (%) | Average Number of Unique Years | Oldest Year, Calculated as the Median | Most Recent Year, Calculated as the Median Image | Coverage by VHR Imagery (%) | Most Frequent Year, Calculated as the Median | ||
Urban areas | 219 | 100% | 6 | 2004 | 2016 | 87% | 2012 |
Rural areas | 2790 | 79% | 4 | 2005 | 2014 | 82% | 2011 |
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Lesiv, M.; See, L.; Laso Bayas, J.C.; Sturn, T.; Schepaschenko, D.; Karner, M.; Moorthy, I.; McCallum, I.; Fritz, S. Characterizing the Spatial and Temporal Availability of Very High Resolution Satellite Imagery in Google Earth and Microsoft Bing Maps as a Source of Reference Data. Land 2018, 7, 118. https://doi.org/10.3390/land7040118
Lesiv M, See L, Laso Bayas JC, Sturn T, Schepaschenko D, Karner M, Moorthy I, McCallum I, Fritz S. Characterizing the Spatial and Temporal Availability of Very High Resolution Satellite Imagery in Google Earth and Microsoft Bing Maps as a Source of Reference Data. Land. 2018; 7(4):118. https://doi.org/10.3390/land7040118
Chicago/Turabian StyleLesiv, Myroslava, Linda See, Juan Carlos Laso Bayas, Tobias Sturn, Dmitry Schepaschenko, Mathias Karner, Inian Moorthy, Ian McCallum, and Steffen Fritz. 2018. "Characterizing the Spatial and Temporal Availability of Very High Resolution Satellite Imagery in Google Earth and Microsoft Bing Maps as a Source of Reference Data" Land 7, no. 4: 118. https://doi.org/10.3390/land7040118
APA StyleLesiv, M., See, L., Laso Bayas, J. C., Sturn, T., Schepaschenko, D., Karner, M., Moorthy, I., McCallum, I., & Fritz, S. (2018). Characterizing the Spatial and Temporal Availability of Very High Resolution Satellite Imagery in Google Earth and Microsoft Bing Maps as a Source of Reference Data. Land, 7(4), 118. https://doi.org/10.3390/land7040118