학술논문

Pixel-based and object-based change detection methods for assessing fuel break maintenance
Document Type
Conference
Source
2020 International Young Engineers Forum (YEF-ECE) Engineers Forum (YEF-ECE), 2020 International Young. :49-54 Jul, 2020
Subject
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Engineering Profession
Fields, Waves and Electromagnetics
Photonics and Electrooptics
Power, Energy and Industry Applications
Robotics and Control Systems
Signal Processing and Analysis
Change detection
Fuel Breaks
Machine Learning
Maximum Entropy
Artificial Neural Network
Pixel-based supervised classification
Object-based supervised classification
Language
Abstract
This last decade, large wildfires have increased in number, size and consequent damages in various countries worldwide. Since 2017, the large fire hazard is a major concern for Portugal. An important fuel break (FB) network is currently implemented in strategic areas by the Portuguese Institute of Nature and Forest Conservation (ICNF). The objective of reducing fuel loads on those thin strips is to reduce fire propagation and to improve firefighting conditions. The efficiency of FB depends on its periodic maintenance. The increasing quality and frequency of Earth Observation Satellite imagery nowadays allow the implementation of change detection methods to identify the occurrence of FB maintenance operations and help their necessary management. This article presents two approaches, a pixel-based and an object-based semi-automated supervised classification using monthly composites of Sentinel-2 imagery to achieve this detection. The pixel-based approach resource to the Maximum Entropy classifier while the object-based to an Artificial Neural Network. The overall accuracies range from 96.5% to 97.5%, which are promising results. Both methods can be combined for optimal detection over the whole territory.