Comparing Deep Learning and Shallow Learning for Large-Scale Wetland Classification in Alberta, Canada

被引:124
|
作者
DeLancey, Evan R. [1 ]
Simms, John F.
Mahdianpari, Masoud [2 ,3 ]
Brisco, Brian [4 ]
Mahoney, Craig [5 ]
Kariyeva, Jahan [1 ]
机构
[1] Univ Alberta, Alberta Biodivers Monitoring Inst, Edmonton, AB T6G 2E9, Canada
[2] Mem Univ Newfoundland, C CORE, St John, NF A1B 3X5, Canada
[3] Mem Univ Newfoundland, Dept Elect Engn, St John, NF A1B 3X5, Canada
[4] Nat Resources Canada, Canada Ctr Mapping & Earth Observat, 560 Rochester St, Ottawa, ON K1A 0Y7, Canada
[5] Govt Alberta, Alberta Environm & Pk, 200 5 Ave S, Lethbridge, AB T1J 4L1, Canada
关键词
wetlands; Sentinel-1; Sentinel-2; Google Earth Engine; remote sensing; Alberta; segmentation convolutional neural nets; XGBoost; land cover; SAR; machine learning; CLIMATE-CHANGE; SURFACE-WATER; CARBON; VEGETATION; INDEX;
D O I
10.3390/rs12010002
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Advances in machine learning have changed many fields of study and it has also drawn attention in a variety of remote sensing applications. In particular, deep convolutional neural networks (CNNs) have proven very useful in fields such as image recognition; however, the use of CNNs in large-scale remote sensing landcover classifications still needs further investigation. We set out to test CNN-based landcover classification against a more conventional XGBoost shallow learning algorithm for mapping a notoriously difficult group of landcover classes, wetland class as defined by the Canadian Wetland Classification System. We developed two wetland inventory style products for a large (397,958 km(2)) area in the Boreal Forest region of Alberta, Canada, using Sentinel-1, Sentinel-2, and ALOS DEM data acquired in Google Earth Engine. We then tested the accuracy of these two products against three validation data sets (two photo-interpreted and one field). The CNN-generated wetland product proved to be more accurate than the shallow learning XGBoost wetland product by 5%. The overall accuracy of the CNN product was 80.2% with a mean F1-score of 0.58. We believe that CNNs are better able to capture natural complexities within wetland classes, and thus may be very useful for complex landcover classifications. Overall, this CNN framework shows great promise for generating large-scale wetland inventory data and may prove useful for other landcover mapping applications.
引用
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页数:20
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