Matches in SemOpenAlex for { <https://semopenalex.org/work/W2297287410> ?p ?o ?g. }
- W2297287410 endingPage "361" @default.
- W2297287410 startingPage "351" @default.
- W2297287410 abstract "Vegetation index and phenological index derived from MODIS NDVI series are used to establish the maize classifier. This classifier performs reasonably well in mapping interannual variability of maize cover in a large irrigation district with heterogeneous crop cover.Display Omitted A vegetation index - phenological index classifier is developed for maize based on MODIS data.Maize cover is mapped for a large irrigation district from 2003 to 2012.The classifier accuracy is acceptable in an area with complex planting structure.The classifier can be applied in multiple years without further field investigation. Accurate mapping interannual variability of crop cover is a pre-request for modern agricultural management, while most published algorithms require re-calibration when crop cover is mapped over multiple years, and hence greatly hinder their applicability. In addition, these algorithms are often not applicable for areas with complex planting patterns. Here we propose a vegetation index - phenological index (VI-PI) classifier to map interannual variability of crop cover (using maize, which is one of the major crops in the study area as a demonstration case) in the Hetao Irrigation District of North China from 2003 to 2012 using the MODIS data at 250m spatial resolution. Representative MODIS Normalized Difference Vegetation Index (NDVI) time series of maize is obtained during a field survey in late August, 2012, which is fitted with an asymmetric logistic curve to obtain the phenological indices. The maize classifier (an ellipse on the VI-PI space) is shaped based on the in situ data and adjusted by the official statistics in 2010-2012. The performance of the developed classifier is then tested with the official data from 2003 to 2009. Results show that the asymmetric logistic curve performs excellent in describing the NDVI time series of maize, and the estimated distribution of maize agrees reasonably well with the independent official data. The relative errors are lower than 7% in the training years, and lower than 30% during the testing years which is considered acceptable for crop mapping in an area with complex planting patterns. And the kappa coefficient was as high as 0.86. These results indicate that the proposed VI-PI classifier can be used effectively for crop mapping over multiple planting years and in areas with a complex planting structure." @default.
- W2297287410 created "2016-06-24" @default.
- W2297287410 creator A5024017027 @default.
- W2297287410 creator A5035667943 @default.
- W2297287410 creator A5047683711 @default.
- W2297287410 creator A5080486186 @default.
- W2297287410 date "2016-04-01" @default.
- W2297287410 modified "2023-10-01" @default.
- W2297287410 title "Mapping interannual variability of maize cover in a large irrigation district using a vegetation index – phenological index classifier" @default.
- W2297287410 cites W1159361881 @default.
- W2297287410 cites W1544267778 @default.
- W2297287410 cites W1830162628 @default.
- W2297287410 cites W1966517174 @default.
- W2297287410 cites W1968496754 @default.
- W2297287410 cites W1971364019 @default.
- W2297287410 cites W1986738039 @default.
- W2297287410 cites W1992021777 @default.
- W2297287410 cites W1996789565 @default.
- W2297287410 cites W1998281138 @default.
- W2297287410 cites W2009202065 @default.
- W2297287410 cites W2014123980 @default.
- W2297287410 cites W2014555541 @default.
- W2297287410 cites W2016435228 @default.
- W2297287410 cites W2016948742 @default.
- W2297287410 cites W2027690707 @default.
- W2297287410 cites W2029707476 @default.
- W2297287410 cites W2030165874 @default.
- W2297287410 cites W2031340414 @default.
- W2297287410 cites W2033863959 @default.
- W2297287410 cites W2036706101 @default.
- W2297287410 cites W2040046785 @default.
- W2297287410 cites W2042386716 @default.
- W2297287410 cites W2046033369 @default.
- W2297287410 cites W2049403501 @default.
- W2297287410 cites W2053154970 @default.
- W2297287410 cites W2056035740 @default.
- W2297287410 cites W2058499576 @default.
- W2297287410 cites W2069338121 @default.
- W2297287410 cites W2072093516 @default.
- W2297287410 cites W2072326345 @default.
- W2297287410 cites W2072834400 @default.
- W2297287410 cites W2075639053 @default.
- W2297287410 cites W2077214952 @default.
- W2297287410 cites W2095258335 @default.
- W2297287410 cites W2099507093 @default.
- W2297287410 cites W2099698780 @default.
- W2297287410 cites W2113435799 @default.
- W2297287410 cites W2115952782 @default.
- W2297287410 cites W2130937797 @default.
- W2297287410 cites W2131087881 @default.
- W2297287410 cites W2138626196 @default.
- W2297287410 cites W2146833082 @default.
- W2297287410 cites W2148333466 @default.
- W2297287410 cites W2157005989 @default.
- W2297287410 cites W2158770403 @default.
- W2297287410 cites W2160566385 @default.
- W2297287410 cites W2167089131 @default.
- W2297287410 doi "https://doi.org/10.1016/j.compag.2016.03.008" @default.
- W2297287410 hasPublicationYear "2016" @default.
- W2297287410 type Work @default.
- W2297287410 sameAs 2297287410 @default.
- W2297287410 citedByCount "19" @default.
- W2297287410 countsByYear W22972874102016 @default.
- W2297287410 countsByYear W22972874102017 @default.
- W2297287410 countsByYear W22972874102018 @default.
- W2297287410 countsByYear W22972874102019 @default.
- W2297287410 countsByYear W22972874102020 @default.
- W2297287410 countsByYear W22972874102021 @default.
- W2297287410 countsByYear W22972874102022 @default.
- W2297287410 countsByYear W22972874102023 @default.
- W2297287410 crossrefType "journal-article" @default.
- W2297287410 hasAuthorship W2297287410A5024017027 @default.
- W2297287410 hasAuthorship W2297287410A5035667943 @default.
- W2297287410 hasAuthorship W2297287410A5047683711 @default.
- W2297287410 hasAuthorship W2297287410A5080486186 @default.
- W2297287410 hasConcept C100970517 @default.
- W2297287410 hasConcept C127413603 @default.
- W2297287410 hasConcept C136764020 @default.
- W2297287410 hasConcept C1549246 @default.
- W2297287410 hasConcept C187320778 @default.
- W2297287410 hasConcept C205649164 @default.
- W2297287410 hasConcept C25989453 @default.
- W2297287410 hasConcept C2777382242 @default.
- W2297287410 hasConcept C2777904157 @default.
- W2297287410 hasConcept C2780376076 @default.
- W2297287410 hasConcept C2983732647 @default.
- W2297287410 hasConcept C39432304 @default.
- W2297287410 hasConcept C41008148 @default.
- W2297287410 hasConcept C51417038 @default.
- W2297287410 hasConcept C62649853 @default.
- W2297287410 hasConcept C6557445 @default.
- W2297287410 hasConcept C76886044 @default.
- W2297287410 hasConcept C78869512 @default.
- W2297287410 hasConcept C86803240 @default.
- W2297287410 hasConcept C88862950 @default.
- W2297287410 hasConcept C97137747 @default.
- W2297287410 hasConceptScore W2297287410C100970517 @default.
- W2297287410 hasConceptScore W2297287410C127413603 @default.