Reference Hub8
Machine Learning Classification of Tree Cover Type and Application to Forest Management

Machine Learning Classification of Tree Cover Type and Application to Forest Management

Duncan MacMichael, Dong Si
Copyright: © 2018 |Volume: 9 |Issue: 1 |Pages: 21
ISSN: 1947-8534|EISSN: 1947-8542|EISBN13: 9781522543787|DOI: 10.4018/IJMDEM.2018010101
Cite Article Cite Article

MLA

MacMichael, Duncan, and Dong Si. "Machine Learning Classification of Tree Cover Type and Application to Forest Management." IJMDEM vol.9, no.1 2018: pp.1-21. http://doi.org/10.4018/IJMDEM.2018010101

APA

MacMichael, D. & Si, D. (2018). Machine Learning Classification of Tree Cover Type and Application to Forest Management. International Journal of Multimedia Data Engineering and Management (IJMDEM), 9(1), 1-21. http://doi.org/10.4018/IJMDEM.2018010101

Chicago

MacMichael, Duncan, and Dong Si. "Machine Learning Classification of Tree Cover Type and Application to Forest Management," International Journal of Multimedia Data Engineering and Management (IJMDEM) 9, no.1: 1-21. http://doi.org/10.4018/IJMDEM.2018010101

Export Reference

Mendeley
Favorite Full-Issue Download

Abstract

This article is driven by three goals. The first is to use machine learning to predict tree cover types, helping to address current challenges faced by U.S. forest management agencies. The second is to bring previous research in the area up-to-date, owing to a lack of development over time. The third is to improve on previous results with new data analysis, higher accuracy, and higher reliability. A Deep Neural Network (DNN) was constructed and compared with three baseline traditional machine learning models: Naïve Bayes, Decision Tree, and K-Nearest Neighbor (KNN). The neural network model achieved 91.55% accuracy while the best performing traditional classifier, K-Nearest Neighbor, managed 74.61%. In addition, the neural network model performed 20.97% better than the past neural networks, which illustrates both advances in machine learning algorithms, as well as improved accuracy high enough to apply practically to forest management issues. Using the techniques outlined in this article, agencies can cost-efficiently and quickly predict tree cover type and expedite natural resource inventorying.

Request Access

You do not own this content. Please login to recommend this title to your institution's librarian or purchase it from the IGI Global bookstore.