2012
DOI: 10.3390/rs4092661
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Tree Species Classification with Random Forest Using Very High Spatial Resolution 8-Band WorldView-2 Satellite Data

Abstract: Abstract:Tree species diversity is a key parameter to describe forest ecosystems. It is, for example, important for issues such as wildlife habitat modeling and close-to-nature forest management. We examined the suitability of 8-band WorldView-2 satellite data for the identification of 10 tree species in a temperate forest in Austria. We performed a Random Forest (RF) classification (object-based and pixel-based) using spectra of manually delineated sunlit regions of tree crowns. The overall accuracy for class… Show more

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Cited by 655 publications
(566 citation statements)
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References 77 publications
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“…Consequently, the overall accuracy of the resultant map was 89.38%, with a kappa coefficient 0.87 (Table 2). Since the landscape types within forests have similar variation in spectral signatures [71], hillside field was misclassified as other classes, such as flatland field or unstocked forest. Some areas of water were misclassified as built-up for the reason that the sand on the riverside was recognized as bare soil.…”
Section: Classification Results and Accuracy Assessmentmentioning
confidence: 99%
“…Consequently, the overall accuracy of the resultant map was 89.38%, with a kappa coefficient 0.87 (Table 2). Since the landscape types within forests have similar variation in spectral signatures [71], hillside field was misclassified as other classes, such as flatland field or unstocked forest. Some areas of water were misclassified as built-up for the reason that the sand on the riverside was recognized as bare soil.…”
Section: Classification Results and Accuracy Assessmentmentioning
confidence: 99%
“…finer-than the monitored object, to provide an effective tradeoff between within-object and between-object variance (Nagendra 2001). Some of the best performing studies in alien and invasive species detection are based on fine resolution data, either aerial (Dorigo et al 2012;Shouse et al 2013;Artigas and Pechmann 2010;Hantson et al 2012;Clark and Roberts 2012;Colgan et al 2012) or satellite (Laba et al 2008;Walsh et al 2008;Immitzer et al 2012). Dorigo et al (2012) extracted a bi-temporal band ratio (BTBR) and a number of Haralick texture features from bi-seasonal digital orthophotos and successfully detected Fallopia japonica, one of the world's worst invasive alien species, with up to 90.3% PA and 98.1% UA.…”
Section: Plant Speciesmentioning
confidence: 99%
“…RF is a popular ensemble learning classification tree algorithm, which became very common for remote sensing data classification in the past few years [35,49,[68][69][70][71][72].…”
Section: Classification and Feature Selectionmentioning
confidence: 99%