Developing Relative Spatial Poverty Index Using Integrated Remote Sensing and Geospatial Big Data Approach: A Case Study of East Java, Indonesia
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Area
2.2. Data Used in This Study
2.3. Methodology
2.3.1. Data Collection and Pre-Processing
Remote Sensing Satellite Imagery Data Pre-Processing
Geospatial Big Data Pre-Processing
2.3.2. Data Transformation
2.3.3. Data Integration
2.3.4. Correlation Analysis and Variable Selection
2.3.5. Relative Spatial Poverty Index (RSPI) Calculation
2.3.6. Validation Assessment
3. Results
3.1. Correlation Model Development
3.2. Relative Spatial Poverty Index Calculation
4. Discussion
4.1. RSPI Numerical Evaluation
4.2. RSPI Ground Truth Analysis
4.3. Comparison between the Obtained RSPI and the Official Poverty Data
4.4. Limitations and Future Possible Directions
5. Conclusions
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Remote-Sensing Variables Ground-Truth Check
References
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Source | Spatial Resolution | Variable | Band Used | Year Data Analysis | Units | Socio-Economic References |
---|---|---|---|---|---|---|
NOAA-VIIRS [58] | 750 m | Night-time Light Intensity (NTL) | avg_rad | One-year NTL value | nanowatts/ cm2/sr | [17,24,25,26,27,28,59,60] |
Sentinel-2 [61] | 10 m | Normalized Difference Vegetation Index (NDVI) [62] | B4 (Red) and B8 (NIR) | The median value of 2315 cloud masked images. | index | [32,36,37] |
Built-Up Index (BUI) [63] | B4 (Red), B8 (NIR), and B11 (SWIR 1) | index | [33,63] | |||
Normalized Difference Water Index (NDWI) [64] | B3 (Green) and B8 (NIR) | index | [36,37] | |||
MODIS [65] | 1000 m | Land Surface Temperature (LST) | LST_Day_1 km | The median value of 365 cloud-masked images. | Kelvin | [35,36] |
Sentinel-5P [66,67,68] | 1113.2 m | Carbon Monoxide (CO) | CO column number density | The median value of the obtained images in 2020. | mol/m2 | [40] |
Nitrogen Dioxide (NO2) | NO2 column number density | mol/m2 | [42] | |||
Sulfur Dioxide (SO2) | SO2 column number density | mol/m2 | [43] | |||
Open Street Map [69] | - | POI Density | - | The number of points in a 1.5 km × 1.5 km grid. | points | [14] |
- | POI Distance | - | The distance from the center of the 1.5 km × 1.5 km grid to the nearest point. | meter | [56,57] |
Satellite Data Source | Band | Value |
---|---|---|
Sentinel-2 | QA60 | Bit 10 (opaque clouds) equal 0 Bit 11 (cirrus clouds) equal 0 |
MODIS Terra LST Daily | QC_Day | Bits 0–1 (Mandatory QA flags) equal 0 |
Correlation Coefficient | Interpretation |
---|---|
Very Weak | |
Weak | |
Moderate | |
Strong | |
Very Strong |
Variable | Pearson Correlation | Spearman Rank Correlation | Closeness | Direction | Statistically Significant | ||
---|---|---|---|---|---|---|---|
Correlation Coefficient | p-Value | Correlation Coefficient | p-Value | ||||
NTL | −0.5 | 0.001 | −0.49 | 0.001 | Moderate | Negative | Yes |
NDVI | 0.25 | 0.130 | 0.21 | 0.205 | Weak | Positive | No |
BUI | −0.45 | 0.004 | −0.44 | 0.005 | Moderate | Negative | Yes |
NDWI | 0.14 | 0.401 | 0.14 | 0.401 | Weak | Positive | No |
LST | −0.29 | 0.077 | −0.31 | 0.058 | Weak | Negative | No |
CO | −0.065 | 0.698 | −0.054 | 0.747 | Very Weak | Negative | No |
NO2 | −0.25 | 0.130 | −0.26 | 0.114 | Weak | Negative | No |
SO2 | −0.6 | −0.63 | Strong | Negative | Yes | ||
POI Density | −0.64 | −0.72 | Strong | Negative | Yes | ||
POI Distance | 0.73 | 0.79 | Strong | Positive | Yes |
Variable | ||
---|---|---|
NTL | −0.5 | 0.5 |
BUI | −0.45 | 0.26 |
SO2 | −0.6 | 0.29 |
POI Density | −0.64 | 0.5 |
POI Distance | 0.75 | 0.58 |
Index | Pearson Correlation | Spearman Rank Correlation | Closeness | Direction | Statistically Significant | ||
---|---|---|---|---|---|---|---|
Correlation Coefficient | p-Value | Correlation Coefficient | p-Value | ||||
0.71 | 0.77 | Strong | Positive | Yes | |||
0.69 | 0.72 | Strong | Positive | Yes |
Model | ||
RMSE | 3.18% | 3.25% |
0.50 | 0.48 |
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Putri, S.R.; Wijayanto, A.W.; Sakti, A.D. Developing Relative Spatial Poverty Index Using Integrated Remote Sensing and Geospatial Big Data Approach: A Case Study of East Java, Indonesia. ISPRS Int. J. Geo-Inf. 2022, 11, 275. https://doi.org/10.3390/ijgi11050275
Putri SR, Wijayanto AW, Sakti AD. Developing Relative Spatial Poverty Index Using Integrated Remote Sensing and Geospatial Big Data Approach: A Case Study of East Java, Indonesia. ISPRS International Journal of Geo-Information. 2022; 11(5):275. https://doi.org/10.3390/ijgi11050275
Chicago/Turabian StylePutri, Salwa Rizqina, Arie Wahyu Wijayanto, and Anjar Dimara Sakti. 2022. "Developing Relative Spatial Poverty Index Using Integrated Remote Sensing and Geospatial Big Data Approach: A Case Study of East Java, Indonesia" ISPRS International Journal of Geo-Information 11, no. 5: 275. https://doi.org/10.3390/ijgi11050275