DocumentCode :
143134
Title :
Agricultural field delimitation using active learning and random forests margin
Author :
Ghariani, Karim ; Chehata, Nesrine ; Le Bris, Arnaud ; Lagacherie, Philippe
Author_Institution :
INSAT (Inst. Nat. des Sci. Appl. et de Technol.), Tunis, Tunisia
fYear :
2014
fDate :
13-18 July 2014
Firstpage :
1717
Lastpage :
1720
Abstract :
Agricultural practices and spatial arrangements of fields have a strong impact on water flows in cultivated landscapes. In order to monitor landscapes at a large scale, there is a strong need for automatic or semi-automatic field delineation. Field measurements for delineating parcel network are not efficient, thus very high resolution satellite imagery should help delineating agricultural fields in a automatic way. This study focuses on agricultural field delineation based on the classification of very high resolution satellite imagery. A hybrid approach is proposed and combines a region-based approach and active learning (AL) techniques. Random forest (RF) classifier is used for classification and feature selection. The margin concept is used as uncertainty measure in active learning algorithm. Satisfying results are shown on a Geoeye image. AL RF model is compared to simple and global RF models that are built from adjacent and geographically distant fields respectively.
Keywords :
agriculture; feature selection; vegetation; water resources; AL RF model; Geoeye image; RF classifier; active learning algorithm uncertainty measure; active learning technique; agricultural field delimitation; agricultural practice; cultivated landscape water flow impact; feature selection; field measurement; geographically distant field; global RF model; hybrid approach; large scale landscape monitoring; margin concept; parcel network delineation; random forest classifier; random forest margin; region-based approach; semiautomatic field delineation; simple RF model; spatial field arrangement; very high resolution satellite imagery classification; Image resolution; Image segmentation; Object oriented modeling; Radio frequency; Remote sensing; Training; Uncertainty; Classification; active learning; agricultural fields; segmentation; very high resolution;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Geoscience and Remote Sensing Symposium (IGARSS), 2014 IEEE International
Conference_Location :
Quebec City, QC
Type :
conf
DOI :
10.1109/IGARSS.2014.6946782
Filename :
6946782
Link To Document :
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