최소 단어 이상 선택하여야 합니다.
최대 10 단어까지만 선택 가능합니다.
다음과 같은 기능을 한번의 로그인으로 사용 할 수 있습니다.
NTIS 바로가기대한원격탐사학회지 = Korean journal of remote sensing, v.37 no.5 pt.1, 2021년, pp.1215 - 1227
이기원 (한성대학교 전자정보공학과) , 김광섭 (한성대학교 전자정보공학과)
Surface reflectance, as a product of the absolute atmospheric correction process of low-orbit satellite imagery, is the basic data required for accurate vegetation analysis. The Commission on Earth Observation Satellite (CEOS) has conducted research and guidance to produce analysis-ready data (ARD) ...
Baumann, P., 2017. The Datacube Manifesto, http://earthserver.eu/tech/datacube-manifesto, Accessed on Mar. 25, 2021.
Bendini, H.N., L.M.G. Fonseca, M. Schwieder, P. Rufin, T.S. Korting, A. Koumrouyan, and P. Hostert, 2020. Combining Environmental and Landsat Analysis Ready data for Vegetation Mapping: A Case Study in the Brazilian Savanna Biome, Proc. of 2020 XXIV ISPRS Congress, Virtual Conference, Aug. 31-Sep. 2, vol. XLIII-B3-2020, pp. 953-960.
Cheng, M.-C., C.-R. Chiou, B. Chen, C. Liu, H.-C. Lin, I-. Shih, C.-H. Chung, H.-Y. Lin, and C.-Y. Chou, 2019. Open Data Cube (ODC) in Taiwan: The Initiative and Protocol Development, Proc. of IGARSS 2019, Yokohama, JP, Aug. 1, pp. 5654-5657.
Dhu, T., G. Giuliani, J. Juarez, A. Kavvada, B. Killough, P. Merodio, S. Minchin, and S. Ramage, 2019. National Open Data Cubes and Their Contribution to Country-Level Development Policies and Practices, Data, 4: 144.
Frantz, D., 2019. FORCE - Landsat + Sentinel-2 Analysis Ready Data and Beyond, Remote Sensing, 11: 1124.
Ferreira, K.R., G.R. Queiroz, L. Vinhas, R.F.B. Marujo, R.E.O. Simoes, M.C.A. Picoli, G. Camara, R. Cartaxo, V.C.F. Gomes, I.A. Santos, A.H. Sanchez, J.S. Arcanjo, J.G. Fronza, C.A. Noronha, R.W. Costa, M.C. Zaglia, F. Zioti, T.S. Korting, A.R. Soares, M.E.D. Chaves, and L.M.G. Fonseca, 2020. Earth Observation Data Cubes for Brazil: Requirements, Methodology and Products, Remote Sensing, 12: 4033.
Geller, C., 2021. Introducing Maxar ARD: Accelerating the Pixel-to-Answer Workflow with Analysis-Ready Data, https://blog.maxar.com/earth-intelligence/2021/introducing-maxar-ard-accelerating-the-pixelto-answer-workflow-with-analysis-ready-data, Accessed on Mar. 25, 2021.
Giuliani, G., B. Chatenoux, A. De Bono, D. Rodila, J.-P. Richard, K. Allenbach, H. Dao, and P. Peduzzi, 2017. Building an Earth Observations Data Cube: lessons learned from the Swiss Data Cube (SDC) on generating Analysis Ready Data (ARD), Big Earth Data, 1(1-2): 100-117.
Giuliani, G., E. Egger, J. Italiano, C. Poussin, J.-P. Richard, and B. Chatenoux, 2020. Essential Variables for Environmental Monitoring: What Are the Possible Contributions of Earth Observation Data Cubes?, Data, 5: 100.
Giuliani, G., B. Chatenoux, A. Benvenuti, P. Lacroix, M. Santoro, and P. Mazzetti, 2020. Monitoring Land Degradation at National Level using Satellite Earth Observation Time-Series Data to Support SDG15 - Exploring the Potential of Data Cube, Big Earth Data, 4(1): 3-22.
Gomes, V.C.F., G.R. Queiroz, and K.R. Ferreira, 2020. An Overview of Platforms for Big Earth Observation Data Management and Analysis, Remote Sensing, 12: 1253
Gorelick, N., M. Hancher, M. Dixon, S. Ilyushchenko, D. Thau, and R. Moore, 2017. Google Earth Engine: Planetary-scale Geospatial Analysis for Everyone, Remote Sensing of Environment, 202: 18-27.
Gu, X., 2018. Satellite Earth Observation System and Spectrum Earth, http://ggim.un.org/unwgic/presentations/2.5_Gu_Xingfa.pdf, Accessed on Mar. 25, 2021.
Holmes, C., 2018. Analysis Ready Data Defined Cloud Native Geoprocessing Part 2, https://medium.com/planet-stories/analysis-ready-data-defined-5694f6f48815, Accessed on Mar. 25, 2021.
Kawasaki, A., P. Koudelova, K. Tamakawa, A. Kitamoto, E. Ikoma, K. Ikeuchi, R. Shibasaki, M. Kitsuregawa, and T. Koike, 2018. Data Integration and Analysis System (DIAS) as a Platform for Data and Model Integration: Cases in the Field of Water Resources Management and Disaster Risk Reduction, Data Science Journal, 17(29): 1-14.
Killough, B., A. Siqueira, and G. Dyke, 2020. Advancements in the Open Data cube and Analysis Ready Data - Past, Present and Future, Proc. of 2020 IEEE International Geoscience and Remote Sensing Symposium (IGARSS), Virtual Conference, Waikoloa, HI, USA, Sep. 26-Oct. 2, pp. 3376-3378.
Kim, K. and K. Lee, 2020b. A Validation Experiment of the Reflectance Products of KOMPSAT-3A Based on RadCalNet Data and Its Applicability to Vegetation Indexing, Remote Sensing, 12: 3971.
Kim, T.J., S.H. Kim, Y.H. Hwang, S.W. Jung, C.S. Ye, and Y.K. Han, 2021. A Study on the Planning of User-Friendly Image Products for Utilization of the National Base Map, Research Report 11-1613436-000271-01, National Land Satellite Center of National Geographic Information Institute (NGII), Suwon, Korea, pp. 12-159.
Kline, K., 2018. CEOS WGISS #46 USGS Agency Report, https://ceos.org/meetings/wgiss-46/, Accessed on Mar. 25, 2021.
Kopp, S., P. Becker, A. Doshi, D.J. Wright, K. Zhang, and H. Xu, 2019. Achieving the Full Vision of Earth Observation Data Cubes, Data, 4: 94.
Kuester, M. and T. Ochoa, 2019. Improvements in Calibration, and Validation of the Absolute Radiometric Response of MAXAR Earth-Observing Sensors, https://calval.cr.usgs.gov/apps/sites/default/files/jacie/MicheleKuester.pdf, Accessed on Sept. 14, 2021.
Kumar, L. and O. Mutang, 2018. Google Earth Engine Applications since Inception: Usage, Trends, and Potential, Remote Sensing, 10: 1509.
Lee, K., K. Kim, S. Lee, and Y. Kim, 2020. Determination of the Normalized Difference Vegetation Index (NDVI) with Top-of-Canopy(TOC) Reflectance from a KOMPSAT-3A Image Using Orfeo ToolBox (OTB) Extension, International Journal of Geo-Information, 9(4): 257.
Maso, J., A. Zabala, I. Serral, and X. Pons, 2019. A Portal Offering Standard Visualization and Analysis on Top of an Open Data Cube for Sub-National Regions: The Catalan Data Cube Example, Data, 4: 96.
Pacific, F., 2020. Future of Remote Sensing and Data Quality, https://calval.cr.usgs.gov/apps/sites/default/files/jacie/2020-S5-Pacifici-Future_Remote_Sensing_Data_Quality.pdf. Accessed on June 12, 2021.
Pinto, C.T., X. Jing and L. Leigh, 2020. Evaluation Analysis of Landsat Level-1 and Level-2 Data Products Using In Situ Measurements, Remote Sensing, 12: 2597.
Quang, N.H., V.A. Tuan, N.T.P. Hao, L.T.T. Hang, N.M. Hung, V.L. Anh, L.T.M. Phuong, and R. Carrie, 2019. Synthetic aperture radar and optical remote sensing image fusion for flood monitoring in the Vietnam lower Mekong basin: a prototype application for the Vietnam Open Data Cube, European Journal of Remote Sensing, 52(1): 599-612.
Rizvi, S. R., B. Killough, A. Cherry, J. Rattz, A. Lubawy, and S. Gowda, 2020. Data Cube Application Algorithms for the United Nation Sustainable Development Goals (UN-SDGS), Proc. of 2020 IEEE International Geoscience and Remote Sensing Symposium (IGARSS), Virtual Conference, Waikoloa, HI, USA, Sep. 26-Oct. 2, pp. 3399-3402.
Sudmanns, M., D. Tiede, S. Lang, H. Bergstedt, G. Trost, H. Augustin, A. Baraldi, and T. Blaschke, 2020. Big Earth Data: Disruptive Changes in Earth Observation Data Management and Analysis?, International Journal of Digital Earth, 13(7): 832-850.
Truckenbrodt, J., T. Freemantle, C. Williams, T. Jones, D. Small, C. Dubois, C. Thiel, C. Rossi, A. Syriou, and G. Giuliani, 2019. Towards Sentinel-1 SAR Analysis-Ready Data: A Best Practices Assessment on Preparing Backscatter Data for the Cube, Data, 4: 93.
Voidrot, M.-F. and G. Percivall, G., 2020. OGC Geospatial Coverages Data Cube Community Practice, https://iopscience.iop.org/article/10.1088/1755-1315/509/1/012058/pdf, Accessed on Mar. 25, 2021.
Yao, X., Y. Liu, Q. Cao, J. Li, R. Huang, R. Woodcock, M. Paget, J. Wang, and G. Li, 2018. China Data Cube (CDC) for Big Earth Observation Data: Lessons Learned from the Design and Implementation, Proc. of International Workshop on Big Geospatial Data and Data Science (BGDDS), Wuhan, CN, Sept. 22, pp.1-3.
Zhang, L., G. Li, C. Zhang, H. Yue, and X. Liao, 2019. Approach and Practice: Integrating Earth Observation Resources for Data Sharing in China GEOSS, International Journal of Digital Earth, 12(12): 1441-1456.
Zhong, B., A. Yang, Q. Liu, S. Wu, X. Shan, X. Mu, L. Hu, and J. Wu, 2021. Analysis Ready Data of the Chinese GaoFen Satellite Data, Remote Sensing, 13: 1709.
*원문 PDF 파일 및 링크정보가 존재하지 않을 경우 KISTI DDS 시스템에서 제공하는 원문복사서비스를 사용할 수 있습니다.
오픈액세스 학술지에 출판된 논문
※ AI-Helper는 부적절한 답변을 할 수 있습니다.