Publication | Open Access
Winter wheat mapping using a random forest classifier combined with multi-temporal and multi-sensor data
62
Citations
47
References
2017
Year
Winter WheatPrecision AgricultureEngineeringForest BiometricsLand UseForestryAgricultural EconomicsMulti-sensor DataLand CoverYield PredictionSocial SciencesImage AnalysisBoxing CountyData SciencePattern RecognitionKappa CoefficientCrop MonitoringCartographyGeographyAgricultureLand Cover MapRandom Forest ClassifierRemote SensingRemote Sensing SensorRandom Forest
Wheat is a major staple food crop in China. Accurate and cost-effective wheat mapping is exceedingly critical for food production management, food security warnings, and food trade policy-making in China. To reduce confusion between wheat and non-wheat crops for accurate growth stage wheat mapping, we present a novel approach that combines a random forest (RF) classifier with multi-sensor and multi-temporal image data. This study aims to (1) determine whether an RF combined with multi-sensor and multi-temporal imagery can achieve accurate winter wheat mapping, (2) to find out whether the proposed approach can provide improved performance over the traditional classifiers, and (3) examine the feasibility of deriving reliable estimates of winter wheat-growing areas from medium-resolution remotely sensed data. Winter wheat mapping experiments were conducted in Boxing County. The experimental results suggest that the proposed method can achieve good performance, with an overall accuracy of 92.9% and a kappa coefficient (κ) of 0.858. The winter wheat acreage was estimated at 33,895.71 ha with a relative error of only 9.3%. The effectiveness and feasibility of the proposed approach has been evaluated through comparison with other image classification methods. We conclude that the proposed approach can provide accurate delineation of winter wheat areas.
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