Matches in SemOpenAlex for { <https://semopenalex.org/work/W2097542451> ?p ?o ?g. }
- W2097542451 endingPage "1573" @default.
- W2097542451 startingPage "1551" @default.
- W2097542451 abstract "Coarse spatial resolution satellites are capable of observing large swaths of the planetary surface in each overpass resulting in image time series with high temporal resolution. Many change‐detection strategies commonly used in remote sensing studies were developed in an era of image scarcity and thus focus on comparing just a few scenes. However, change analysis methods applicable to images with sparse temporal sampling are not necessarily efficient and effective when applied to long image time series. We present a statistical framework that gathers together: (1) robust methods for multiple comparisons; (2) seasonally corrected Mann–Kendall trend tests; (3) a testing sequence for quadratic models of land surface phenology. This framework can be applied to long image time series to partition sources of variation and to assess the significance of detected changes. Using a standard image time series, the Pathfinder AVHRR Land (PAL) NDVI data, we apply the framework to address the question of whether the institutional changes accompanying the collapse of the Soviet Union resulted in significant changes in land surface phenologies across the ecoregions of Kazakhstan." @default.
- W2097542451 created "2016-06-24" @default.
- W2097542451 creator A5016226269 @default.
- W2097542451 creator A5049848654 @default.
- W2097542451 date "2005-04-01" @default.
- W2097542451 modified "2023-10-14" @default.
- W2097542451 title "A statistical framework for the analysis of long image time series" @default.
- W2097542451 cites W1966117174 @default.
- W2097542451 cites W1977175067 @default.
- W2097542451 cites W1987389994 @default.
- W2097542451 cites W1992037397 @default.
- W2097542451 cites W1995613086 @default.
- W2097542451 cites W1999787515 @default.
- W2097542451 cites W2001594506 @default.
- W2097542451 cites W2004668576 @default.
- W2097542451 cites W2007468519 @default.
- W2097542451 cites W2012121350 @default.
- W2097542451 cites W2012407814 @default.
- W2097542451 cites W2014395160 @default.
- W2097542451 cites W2015435324 @default.
- W2097542451 cites W2016150941 @default.
- W2097542451 cites W2029364683 @default.
- W2097542451 cites W2037574716 @default.
- W2097542451 cites W2039814090 @default.
- W2097542451 cites W2051275149 @default.
- W2097542451 cites W2058803495 @default.
- W2097542451 cites W2069620727 @default.
- W2097542451 cites W2071518857 @default.
- W2097542451 cites W2073200637 @default.
- W2097542451 cites W2082201041 @default.
- W2097542451 cites W2087642186 @default.
- W2097542451 cites W2092811392 @default.
- W2097542451 cites W2093343264 @default.
- W2097542451 cites W2095258335 @default.
- W2097542451 cites W2097960263 @default.
- W2097542451 cites W2100457067 @default.
- W2097542451 cites W2102417376 @default.
- W2097542451 cites W2104145134 @default.
- W2097542451 cites W2112932599 @default.
- W2097542451 cites W2116584554 @default.
- W2097542451 cites W2117404342 @default.
- W2097542451 cites W2119370997 @default.
- W2097542451 cites W2121300297 @default.
- W2097542451 cites W2128033169 @default.
- W2097542451 cites W2144113709 @default.
- W2097542451 cites W2145132429 @default.
- W2097542451 cites W2161881124 @default.
- W2097542451 cites W2168184426 @default.
- W2097542451 cites W2171935633 @default.
- W2097542451 cites W2173251738 @default.
- W2097542451 cites W223730970 @default.
- W2097542451 cites W2272473773 @default.
- W2097542451 cites W4241721618 @default.
- W2097542451 cites W4244566850 @default.
- W2097542451 cites W4245705676 @default.
- W2097542451 doi "https://doi.org/10.1080/01431160512331326657" @default.
- W2097542451 hasPublicationYear "2005" @default.
- W2097542451 type Work @default.
- W2097542451 sameAs 2097542451 @default.
- W2097542451 citedByCount "205" @default.
- W2097542451 countsByYear W20975424512012 @default.
- W2097542451 countsByYear W20975424512013 @default.
- W2097542451 countsByYear W20975424512014 @default.
- W2097542451 countsByYear W20975424512015 @default.
- W2097542451 countsByYear W20975424512016 @default.
- W2097542451 countsByYear W20975424512017 @default.
- W2097542451 countsByYear W20975424512018 @default.
- W2097542451 countsByYear W20975424512019 @default.
- W2097542451 countsByYear W20975424512020 @default.
- W2097542451 countsByYear W20975424512021 @default.
- W2097542451 countsByYear W20975424512022 @default.
- W2097542451 countsByYear W20975424512023 @default.
- W2097542451 crossrefType "journal-article" @default.
- W2097542451 hasAuthorship W2097542451A5016226269 @default.
- W2097542451 hasAuthorship W2097542451A5049848654 @default.
- W2097542451 hasConcept C106131492 @default.
- W2097542451 hasConcept C119857082 @default.
- W2097542451 hasConcept C127313418 @default.
- W2097542451 hasConcept C140779682 @default.
- W2097542451 hasConcept C143724316 @default.
- W2097542451 hasConcept C151406439 @default.
- W2097542451 hasConcept C151730666 @default.
- W2097542451 hasConcept C203595873 @default.
- W2097542451 hasConcept C205649164 @default.
- W2097542451 hasConcept C31972630 @default.
- W2097542451 hasConcept C41008148 @default.
- W2097542451 hasConcept C62649853 @default.
- W2097542451 hasConceptScore W2097542451C106131492 @default.
- W2097542451 hasConceptScore W2097542451C119857082 @default.
- W2097542451 hasConceptScore W2097542451C127313418 @default.
- W2097542451 hasConceptScore W2097542451C140779682 @default.
- W2097542451 hasConceptScore W2097542451C143724316 @default.
- W2097542451 hasConceptScore W2097542451C151406439 @default.
- W2097542451 hasConceptScore W2097542451C151730666 @default.
- W2097542451 hasConceptScore W2097542451C203595873 @default.
- W2097542451 hasConceptScore W2097542451C205649164 @default.
- W2097542451 hasConceptScore W2097542451C31972630 @default.
- W2097542451 hasConceptScore W2097542451C41008148 @default.