2012
DOI: 10.4028/www.scientific.net/kem.500.701
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The Research on Forest Resources Change Detection Based on C5.0 Algorithm and Neighborhood Correlation Image Analysis

Abstract: With double-temporal Landsat TM and ETM+ datasets, the change information of forest resources of Culai Mountain in Shandong Province was explored. This paper applies decision tree classification based on C5.0 algorithm and neighborhood correlation image analysis to detect forest change information,and compares the three different detection methods:1)C5.0 classifies single-temporal data respectively,and extract change information after comparing classification results;2) create C5.0 train rules through double-t… Show more

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“…When the traditional DT algorithms identify the single sand body based on logging data, they need to enumerate all the possibilities of each feature, and then find the best segmentation point by calculating the mean square error, which results in the algorithm's inefficiency [22]. The XGBoost arranges the features in advance according to the percentile method and selects candidates that may become the split point.…”
Section: Abc-xgboost Methods Principlementioning
confidence: 99%
“…When the traditional DT algorithms identify the single sand body based on logging data, they need to enumerate all the possibilities of each feature, and then find the best segmentation point by calculating the mean square error, which results in the algorithm's inefficiency [22]. The XGBoost arranges the features in advance according to the percentile method and selects candidates that may become the split point.…”
Section: Abc-xgboost Methods Principlementioning
confidence: 99%