In this paper, we assess the use of Random Forest (RF) for mapping land cover classes within Mer Bleue bog, a large northern peatland in southeastern Ontario near Ottawa, Canada, using Synthetic Aperture Radar (SAR) and airborne Light Detection and Ranging (LiDAR). Not only has RF been shown to improve classification accuracies over more traditional classifiers, but it also provides useful information on the statistical importance of individual input image bands for land cover classification. Our specific objectives in this study were to: (i) assess the robustness of a RF approach to northern peatland classification; (ii) examine variable importance resulting from the RF classifications to identify which imagery types, derivatives, and anal...
Wetlands are an important ecosystem for many vital functions such as groundwater recharge, flood con...
Wetlands are an important ecosystem for many vital functions such as groundwater recharge, flood con...
The objective of this study was to develop a decision-based methodology, focused on data fusion for ...
To better understand and mitigate threats to the long-term health and functioning of wetlands, there...
Wetland mapping at the landscape scale using remotely sensed data requires both affordable data and ...
The ability to distinguish peatland types at the landscape scale has implications for inventory, con...
The ability to distinguish peatland types at the landscape scale has implications for inventory, con...
Wetlands are amongst the most valuable natural resources that provide many advantages to the ecosys...
University of Minnesota Ph.D. dissertation. May 2013. Major: Natural Resources Science and Managemen...
Multi-spectral imagery provides a robust and low-cost dataset for assessing wetland extent and quali...
Synthetic aperture radar (SAR) compact polarimetry (CP) systems are of great interest for large area...
© 2017, Canadian Science Publishing. All rights reserved. The ability to distinguish peatland types ...
Despite wetlands being critical components of healthy functioning landscapes and providing valuable ...
The goal of this research was to improve wetland classification by fully exploiting multi-source rem...
The authors evaluated multiple remotely sensed datasets for their contributions to operational wetla...
Wetlands are an important ecosystem for many vital functions such as groundwater recharge, flood con...
Wetlands are an important ecosystem for many vital functions such as groundwater recharge, flood con...
The objective of this study was to develop a decision-based methodology, focused on data fusion for ...
To better understand and mitigate threats to the long-term health and functioning of wetlands, there...
Wetland mapping at the landscape scale using remotely sensed data requires both affordable data and ...
The ability to distinguish peatland types at the landscape scale has implications for inventory, con...
The ability to distinguish peatland types at the landscape scale has implications for inventory, con...
Wetlands are amongst the most valuable natural resources that provide many advantages to the ecosys...
University of Minnesota Ph.D. dissertation. May 2013. Major: Natural Resources Science and Managemen...
Multi-spectral imagery provides a robust and low-cost dataset for assessing wetland extent and quali...
Synthetic aperture radar (SAR) compact polarimetry (CP) systems are of great interest for large area...
© 2017, Canadian Science Publishing. All rights reserved. The ability to distinguish peatland types ...
Despite wetlands being critical components of healthy functioning landscapes and providing valuable ...
The goal of this research was to improve wetland classification by fully exploiting multi-source rem...
The authors evaluated multiple remotely sensed datasets for their contributions to operational wetla...
Wetlands are an important ecosystem for many vital functions such as groundwater recharge, flood con...
Wetlands are an important ecosystem for many vital functions such as groundwater recharge, flood con...
The objective of this study was to develop a decision-based methodology, focused on data fusion for ...