Primitives as building blocks for constructing land cover maps

التفاصيل البيبلوغرافية
العنوان: Primitives as building blocks for constructing land cover maps
المؤلفون: Kel Markert, K. Tenneson, Marija Kono, David Saah, Giang Vu Nguyen, Peter Potapov, Chansopheaktra Sovann, Soukanh Bounthabandit, Su Mon Myat, Farrukh Chishtie, Jeffrey Silverman, Sajana Maharjan, Birendra Bajracharya, Jeremy Broadhead, Ate Poortinga, Erik Lindquist, Kabir Uddin, Matthew Patterson, Ian W. Housman, Mir A. Matin, Phuong M. Do, Radhika Bhargava, Peter Cutter, Africa Ixmucane Flores-Anderson, Biplov Bhandari, Nicholas Clinton, P. Towashiraporn, Walter L. Ellenberg, Joshua Goldstein, Eric Anderson, Hai N. Pham, Nishanta Khanal, Raja Ram Aryal, Kei Sato, David J. Ganz, Paul Maus, K. S. Aung, Quyen Nguyen
بيانات النشر: Elsevier, 2020.
سنة النشر: 2020
مصطلحات موضوعية: Global and Planetary Change, 010504 meteorology & atmospheric sciences, Database, Computer science, business.industry, Suite, 0211 other engineering and technologies, Decision tree, Context (language use), 02 engineering and technology, Land cover, Management, Monitoring, Policy and Law, Modular design, computer.software_genre, 01 natural sciences, Key (cryptography), Computers in Earth Sciences, Architecture, business, computer, Smoothing, 021101 geological & geomatics engineering, 0105 earth and related environmental sciences, Earth-Surface Processes
الوصف: Land cover maps play an integral role in environmental management. However, countries and institutes encounter many challenges with producing timely, efficient, and temporally harmonized updates to their land cover maps. To address these issues we present a modular Regional Land Cover Monitoring System (RLCMS) architecture that is easily customized to create land cover products using primitive map layers. Primitive map layers are a suite of biophysical and end member maps, with land cover primitives representing the raw information needed to make decisions in a dichotomous key for land cover classification. We present best practices to create and assemble primitives from optical satellite using computing technologies, decision tree logic and Monte Carlo simulations to integrate their uncertainties. The concept is presented in the context of a regional land cover map based on a shared regional typology with 18 land cover classes agreed on by stakeholders from Cambodia, Laos PDR, Myanmar, Thailand, and Vietnam. We created annual map and uncertainty layers for the period 2000–2017. We found an overall accuracy of 94% when taking uncertainties into account. RLCMS produces consistent time series products using free long term historical Landsat and MODIS data. The customizable architecture can include a variety of sensors and machine learning algorithms to create primitives and the best suited smoothing can be applied on a primitive level. The system is transferable to all regions around the globe because of its use of publicly available global data (Landsat and MODIS) and easily adaptable architecture that allows for the incorporation of a customizable assembly logic to map different land cover typologies based on the user’s landscape monitoring objectives keywords: Land cover, Remote sensing, Mekong region, Google Earth Engine, Landsat, SERVIR ispartof: International Journal Of Applied Earth Observation And Geoinformation vol:85 pages:101979-101979 status: Published online
الوصول الحر: https://explore.openaire.eu/search/publication?articleId=doi_dedup___::3f8e8fb8aa21ced469565b959cf8b8baTest
https://lirias.kuleuven.be/handle/20.500.12942/703464Test
حقوق: OPEN
رقم الانضمام: edsair.doi.dedup.....3f8e8fb8aa21ced469565b959cf8b8ba
قاعدة البيانات: OpenAIRE