A Web Service-Oriented Geoprocessing System for Supporting Intelligent Land Cover Change Detection
Abstract
:1. Introduction
2. Related Works
2.1. Land Cover-Related Online Geoprocessing Systems
2.2. Current Efforts in Geoprocessing Service Composition
3. Methodology
3.1. Heterogeneous Service Encapsulation Strategy
3.2. Constraint Rule-Based Automatic Service Composition
Algorithm 1. WSChainbyRule (, ) |
Input: , ; Output:WSChain |
1 SET = WSChain =[] 2 WHILE(){ 3 FOR EACH IN WSList{ 4 IF (){ 5 IF ( is satisfied DFinconRules){ 6 WSChain += DFC 7 }ELSE IF ( is satisfied CSinconRules){ 8 WSChain += CSC 9 } ELSE IF ( is satisfied ReinconRules){ 10 WSChain += ReC 11 } 12 WSChain += 13 IF ( satisfied hasOutputRule){ 14 RETURN WSChain 15 }ELSE{ 16 =.output 17 }}} |
4. System Architecture and Implementation
4.1. Architecture Design
4.2. System Implementation
4.3. Walk-Through Example
5. Evaluation and Discussion
5.1. Evaluation
5.2. Discussion
6. Conclusions and Future Work
Author Contributions
Funding
Acknowledgments
References
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System/Tool Name | Provided Functions | Development Technologies | URL | Reference Paper |
---|---|---|---|---|
GlobeLand30 Production | Land cover data production | --Browser side: Openlayers, jQuery, Ext --Server side: PostgreSQL/PostGIS APOLLO Server, PHP, Geoserver, C# | www.globeland30.org | Han et al. (2015) [19] |
GlobeLand30 validation | Land cover validation | www.glcval.geo-compass.com | Chen et al. (2016) [20] | |
GlobeLand30 tagging | Land cover tagging | www.globeland30.org /biaobao/default.aspx | Xing et al. (2015) [21] | |
GlobeLand30 statistics | Land cover statistics | www.globeland30.org /chinese/stat/index.html | Li et al. (2016) [22] | |
CropScape | Land cover browsing, statistics | --Browser side: Openlayers, Extjs, Ajax-powered rich Internet application | www.nassgeodata.gmu.edu/CropScape | Han et al. (2012) [23] |
GeoWiki | Land cover validation | --Browser side: Openlayers, Google Earth APIs --Server side:PHP | www.geo-wiki.org | Steffen et al. (2012) [24] |
LACO-Wiki | Land cover validation | --Browser side: Openlayers --Server side: ASP.NET, C#, PostgreSQL, Geoserver, GDAL/OGR library | www.laco-wiki.net | Linda et al. (2017) [25] |
VIEW-IT | Land cover tagging | --Browser side: ArcGIS JavaScript API --Server side: ArcGIS Server, PHP, MySQL | Not found | Clark et al. (2011) [26] |
Web-based land cover validation tool | Land cover validation | --Browser side: Openlayers --Server side: IDL, PostGIS, GeoServer | www.landcover-change.jrc.ec.europa.eu/validation/videos/Birdlife_editor.html | Bastin et al. (2013) [27] |
Geospatial service for land cover mapping | Land cover mapping | --Browser side: Openlayers, GeoExt --Server side: Orfeo Toolbox, OpenCV, LibSVM Rasdaman database | Not found | Karantzalos et al. (2015) [15] |
Constraint Rules | SWRL-Based Formal Description |
---|---|
hasInputRule | Service:presents (? Service, ?profile)∩ Profile:hasInput(?profile,? input)∩ Process:paraType(?input,? input_req)∩ rdf:type(? input, owl: class)→ rule: hasInputRule (? Service, ? input_req) |
hasOutputRule | Service:presents (? Service, ?profile)∩ Profile:hasInput(?profile,? output)∩ Process:paraType(?input,? output_req)∩ rdf:type(?output, owl: class) hasOutputRule (? Service, ? output _req) |
Constraint Rules | SWRL-Based Formal Description |
---|---|
DFinconRules | hasInputRule (?Service, input)∩ rdf:format(?input, formati) ∩ rdf:format(?data, formatj) rule:DFinconRules (?Service, ?data) |
CSinconRules | hasInputRule (?Service, input)∩ rdf:coordinate (?input, coordinatei) ∩ rdf:coordinate (?data, coordinatej) rule:CSinconRules (?Service, ?data) |
ReinconRules | hasInputRule (?Service, input)∩ rdf:resolution (?input, resolutioni) ∩ rdf:resolution (?data, resolutionj) rule:RinconRules (?Service, ?data) |
{"Sensor": "Landsat 5 TM", | {"Sensor": "Landsat 8 OLI", |
"Acquire_time": "2010/06/22", | "Acquire_time": "2018/06/12", |
"Spatial_resolution": "30", | "Spatial_resolution": "30", |
"Coverage":{"Type": "Rectangle", | "Coverage":{"Type": "Rectangle", |
"UL_lat":"35.82","UL_lon":"116.59", | "UL_lat":"35.82","UL_lon":"116.59", |
"UR_lat":"35.82","UR_lon":"116.69", | "UR_lat":"35.82","UR_lon":"116.69", |
"BL_lat":"35.74","BL_lon":"116.59", | "BL_lat":"35.74","BL_lon":"116.59", |
"BR_lat":"35.74","BR_lat":"116.69",} | "BR_lat":"35.74","BR_lat":"116.69",} |
"Radiometric_resolution": "8 bit", | "Radiometric_resolution": "12 bit", |
"Format": "IMG", | "Format": "GeoTIFF", |
"Data_size":"245242"} | "Data_size":"718239"} |
Service Name | Service Semantics |
---|---|
DFC | The DFC service is used to transform image data from the ‘IMG’ format into the ‘GeoTIFF’ format. The input and output data type of the DFC service is imagery data. |
RC | The RC service is used to convert the digital number (DN) value of image data to surface reflectance. The input and output data type of the RC service is imagery data. |
CVA | The CVA service is used to acquire a change magnitude image by computing the difference vectors between two image analysis units. The input type of the CVA service is imagery data, and its output data type is change magnitude data. |
EM | The EM service is used to acquire the changed area from a change magnitude map based on an iterative threshold selection method. The input type of the EM service is change magnitude data, and its output data type is change area data. |
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Xing, H.; Chen, J.; Wu, H.; Hou, D. A Web Service-Oriented Geoprocessing System for Supporting Intelligent Land Cover Change Detection. ISPRS Int. J. Geo-Inf. 2019, 8, 50. https://doi.org/10.3390/ijgi8010050
Xing H, Chen J, Wu H, Hou D. A Web Service-Oriented Geoprocessing System for Supporting Intelligent Land Cover Change Detection. ISPRS International Journal of Geo-Information. 2019; 8(1):50. https://doi.org/10.3390/ijgi8010050
Chicago/Turabian StyleXing, Huaqiao, Jun Chen, Hao Wu, and Dongyang Hou. 2019. "A Web Service-Oriented Geoprocessing System for Supporting Intelligent Land Cover Change Detection" ISPRS International Journal of Geo-Information 8, no. 1: 50. https://doi.org/10.3390/ijgi8010050