2016
DOI: 10.3390/rs8110888
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Rapid Land Cover Map Updates Using Change Detection and Robust Random Forest Classifiers

Abstract: Abstract:The paper evaluated the Landsat Automated Land Cover Update Mapping (LALCUM) system designed to rapidly update a land cover map to a desired nominal year using a pre-existing reference land cover map. The system uses the Iteratively Reweighted Multivariate Alteration Detection (IRMAD) to identify areas of change and no change. The system then automatically generates large amounts of training samples (n > 1 million) in the no-change areas as input to an optimized Random Forest classifier. Experiments w… Show more

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Cited by 83 publications
(47 citation statements)
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“…The validated USGS NLCD 2006 map’s OA values of 78% and 84% with, respectively, a 16 and a 9 LC class legend can be considered state of the art. For example, these OA estimates are superior to OAs featured by national-scale maps recently generated by pixel-based random forest classifiers from monthly WELD composites, whose OA is 65%–67% using 22 detailed classes and 72%–74% using 12 aggregated national classes (Wessels et al, 2016). In general, renowned experts in Geographical Information Science (GIScience) suggest that “the widely used target accuracy of 85% may often be inappropriate and that the approach to accuracy assessment adopted commonly in RS can be pessimistically biased” (Foody, 2006, 2016).…”
Section: Methodsmentioning
confidence: 97%
“…The validated USGS NLCD 2006 map’s OA values of 78% and 84% with, respectively, a 16 and a 9 LC class legend can be considered state of the art. For example, these OA estimates are superior to OAs featured by national-scale maps recently generated by pixel-based random forest classifiers from monthly WELD composites, whose OA is 65%–67% using 22 detailed classes and 72%–74% using 12 aggregated national classes (Wessels et al, 2016). In general, renowned experts in Geographical Information Science (GIScience) suggest that “the widely used target accuracy of 85% may often be inappropriate and that the approach to accuracy assessment adopted commonly in RS can be pessimistically biased” (Foody, 2006, 2016).…”
Section: Methodsmentioning
confidence: 97%
“…The PCA-k-means method has two parameters, i.e., non-overlapping blocks H (H = 5 in our experiments) and the dimensions S (S = 5 in our experiments) of the eigenvector space. OCVA [18] is employed as the unsupervised method, and extreme learning machine (ELM) [54] and random forest (RF) [55] are used as the supervised classifiers. The parameters involved in these methods are set as in the original paper.…”
Section: Experimental Results and Analysismentioning
confidence: 99%
“…This is very time-consuming. RF provides the potential of quantifying the importance of spectral variables for using a great amount of data and a large number of spectral variables [23][24][25][26][27] but still ignores the correlations among spectral variables and duplication of information.…”
Section: Discussionmentioning
confidence: 99%
“…Here, we just simply described the machine learning algorithm RF. RF [21][22][23][24][25][26][27] constructs many classification trees by randomly sampling training data with replacement. For each of the trees, about two-third sample data are selected as training data and the left one-third sample data are used as validation data.…”
Section: Improving Selection Of Spectral Variablesmentioning
confidence: 99%
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