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Title

An Automatic Random Forest-OBIA Algorithm for Early Weed Mapping between and within Crop Rows Using UAV Imagery

AuthorsCastro, Ana Isabel de ; Torres-Sánchez, Jorge ; Peña, José María; Jiménez-Brenes, Francisco Manuel ; Csillik, Ovidiu; López Granados, Francisca
KeywordsDigital Surface Model
Segmentation
Precision agriculture
In-season post-emergence site-specific weed control
Plant height
Issue Date12-Feb-2018
PublisherMultidisciplinary Digital Publishing Institute
CitationRemote Sensing 10(2): 285 (2018)
AbstractAccurate and timely detection of weeds between and within crop rows in the early growth stage is considered one of the main challenges in site-specific weed management (SSWM). In this context, a robust and innovative automatic object-based image analysis (OBIA) algorithm was developed on Unmanned Aerial Vehicle (UAV) images to design early post-emergence prescription maps. This novel algorithm makes the major contribution. The OBIA algorithm combined Digital Surface Models (DSMs), orthomosaics and machine learning techniques (Random Forest, RF). OBIA-based plant heights were accurately estimated and used as a feature in the automatic sample selection by the RF classifier; this was the second research contribution. RF randomly selected a class balanced training set, obtained the optimum features values and classified the image, requiring no manual training, making this procedure time-efficient and more accurate, since it removes errors due to a subjective manual task. The ability to discriminate weeds was significantly affected by the imagery spatial resolution and weed density, making the use of higher spatial resolution images more suitable. Finally, prescription maps for in-season post-emergence SSWM were created based on the weed maps—the third research contribution—which could help farmers in decision-making to optimize crop management by rationalization of the herbicide application. The short time involved in the process (image capture and analysis) would allow timely weed control during critical periods, crucial for preventing yield loss.
Publisher version (URL)http://dx.doi.org/10.3390/rs10020285
URIhttp://hdl.handle.net/10261/163556
DOI10.3390/rs10020285
E-ISSN2072-4292
Appears in Collections:(ICA) Artículos
(IAS) Artículos
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