globalchange  > 气候变化事实与影响
DOI: 10.3390/rs11070772
WOS记录号: WOS:000465549300037
论文题名:
Assessment of Convolution Neural Networks for Wetland Mapping with Landsat in the Central Canadian Boreal Forest Region
作者: Pouliot, Darren1; Latifovic, Rasim2; Pasher, Jon1; Duffe, Jason1
通讯作者: Pouliot, Darren
刊名: REMOTE SENSING
ISSN: 2072-4292
出版年: 2019
卷: 11, 期:7
语种: 英语
英文关键词: Wetlands ; Landsat ; classification ; deep learning ; convolution neural network ; machine learning
WOS关键词: COVER DATABASE ; CLASSIFICATION ; RADAR ; ECOSYSTEMS ; ACCURACY ; IMAGERY ; QUEBEC ; SCALE
WOS学科分类: Remote Sensing
WOS研究方向: Remote Sensing
英文摘要:

Methods for effective wetland monitoring are needed to understand how ecosystem services may be altered from past and present anthropogenic activities and recent climate change. The large extent of wetlands in many regions suggests remote sensing as an effective means for monitoring. Remote sensing approaches have shown good performance in local extent studies, but larger regional efforts have generally produced low accuracies for detailed classes. In this research we evaluate the potential of deep-learning Convolution Neural Networks (CNNs) for wetland classification using Landsat data to bog, fen, marsh, swamp, and water classes defined by the Canada Wetland Classification System (CWCS). The study area is the northern part of the forested region of Alberta where we had access to two reference data sources. We evaluated ResNet CNNs and developed a Multi-Size/Scale ResNet Ensemble (MSRE) approach that exhibited the best performance. For assessment, a spatial extension strategy was employed that separated regions for training and testing. Results were consistent between the two reference sources. The best overall accuracy for the CWCS classes was 62-68%. Compared to a pixel-based random forest implementation this was 5-7% higher depending on the accuracy measure considered. For a parameter-optimized spatial-based implementation this was 2-4% higher. For a reduced set of classes to water, wetland, and upland, overall accuracy was in the range of 86-87%. Assessment for sampling over the entire region instead of spatial extension improved the mean class accuracies (F1-score) by 9% for the CWCS classes and for the reduced three-class level by 6%. The overall accuracies were 69% and 90% for the CWCS and reduced classes respectively with region sampling. Results in this study show that detailed classification of wetland types with Landsat remains challenging, particularly for small wetlands. In addition, further investigation of deep-learning methods are needed to identify CNN configurations and sampling methods better suited to moderate spatial resolution imagery across a range of environments.


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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/133178
Appears in Collections:气候变化事实与影响

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作者单位: 1.Environm & Climate Change Canada, Landscape Sci & Technol, Ottawa, ON K1A 0H3, Canada
2.Canada Ctr Remote Sensing, Nat Resources Canada, Ottawa, ON K1A 0E4, Canada

Recommended Citation:
Pouliot, Darren,Latifovic, Rasim,Pasher, Jon,et al. Assessment of Convolution Neural Networks for Wetland Mapping with Landsat in the Central Canadian Boreal Forest Region[J]. REMOTE SENSING,2019-01-01,11(7)
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