Assessing in-season crop classification performance using satellite data: A test case in Northern Italy
Academic Article
Publication Date:
2016
abstract:
This study investigated the feasibility of delivering a crop type map early during the growing season. Landsat 8 OLI multi-temporal data acquired in 2013 season were used to classify seven crop types in Northern Italy. The accuracy achieved with four supervised algorithms, fed with multi-temporal spectral indices (EVI, NDFI, RGRI), was assessed as a function of the crop map delivery time during the season. Overall accuracy (Kappa) exceeds 85% (0.83) starting from mid-July, five months before the end of the season, when maximum accuracy is reached (OA=92%, Kappa=0.91). Among crop types, rice is the most accurately classified, followed by forages, maize and arboriculture, while soybean or double crops can be confused with other classes.
Iris type:
01.01 Articolo in rivista
Keywords:
Early mapping; crop type; multi-temporal data; supervised classification; Landsat 8 OLI
List of contributors:
Saidiazar, Ramin; Brivio, PIETRO ALESSANDRO; Boschetti, Mirco; Villa, Paolo; Crema, Alberto; Stroppiana, Daniela
Published in: