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Tytuł pozycji:

Evaluation of Three Different Machine Learning Methods for Object-Based Artificial Terrace Mapping—A Case Study of the Loess Plateau, China.

Tytuł:
Evaluation of Three Different Machine Learning Methods for Object-Based Artificial Terrace Mapping—A Case Study of the Loess Plateau, China.
Autorzy:
Ding, Hu
Na, Jiaming
Jiang, Shangjing
Zhu, Jie
Liu, Kai
Fu, Yingchun
Li, Fayuan
Atzberger, Clement
Peñuelas, Josep
Temat:
MACHINE learning
TERRACING
DIGITAL elevation models
IMAGE segmentation
FEATURE selection
BRAIN-computer interfaces
Źródło:
Remote Sensing; 3/1/2021, Vol. 13 Issue 5, p1021-1021, 1p
Terminy geograficzne:
CHINA
Czasopismo naukowe
Artificial terraces are of great importance for agricultural production and soil and water conservation. Automatic high-accuracy mapping of artificial terraces is the basis of monitoring and related studies. Previous research achieved artificial terrace mapping based on high-resolution digital elevation models (DEMs) or imagery. As a result of the importance of the contextual information for terrace mapping, object-based image analysis (OBIA) combined with machine learning (ML) technologies are widely used. However, the selection of an appropriate classifier is of great importance for the terrace mapping task. In this study, the performance of an integrated framework using OBIA and ML for terrace mapping was tested. A catchment, Zhifanggou, in the Loess Plateau, China, was used as the study area. First, optimized image segmentation was conducted. Then, features from the DEMs and imagery were extracted, and the correlations between the features were analyzed and ranked for classification. Finally, three different commonly-used ML classifiers, namely, extreme gradient boosting (XGBoost), random forest (RF), and k-nearest neighbor (KNN), were used for terrace mapping. The comparison with the ground truth, as delineated by field survey, indicated that random forest performed best, with a 95.60% overall accuracy (followed by 94.16% and 92.33% for XGBoost and KNN, respectively). The influence of class imbalance and feature selection is discussed. This work provides a credible framework for mapping artificial terraces. [ABSTRACT FROM AUTHOR]
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