- Resource Types
- Resource Languages
- Institutional Repository
About Site Language
WHDL is viewable in multiple languages. Use the pull-down menu to select a language to view the site.
I changed my language, but I’m still seeing resources in the other languages?
If a resource or text has not been translated into your selected language, it will appear in the initially added language. We are always looking for help translating these resources. If you can help, contact us!
WHDL - 00013545
Using machine learning algorithms on imagery obtained from small unmanned aircraft systems (sUAS) has been an efficient and accurate way to collect data on postfire forests. This effort applies machine learning to obtain useful information about postfire forests. It uses a mask region-based convolutional neural network (MR-CNN) to as well as a support vector machine (SVM) to tree mortality as well as burn extent. Using machine learning helps automated the process while still having accurate data. Having fast and accurate process to calculate the damage done by a fire helps land managers make a quick and calculated response to aid in forest rehabilitation.
Non-exclusive right to publish on file at NNU Library. Available on request.
74 Resources
1998-1999
1999-2000
2006