Unmanned aerial vehicle and remote sensors: tools for the management of forest resources
DOI:
https://doi.org/10.20873/jbb.uft.cemaf.v8n2.vsouzaKeywords:
remote sensing, UAVs, vegetationAbstract
The objective of this work is to describe, through the literature review, or the use of remote sensors integrated to unmanned vehicles (UAV). The types of sensors and their operation are also described in addition to the processing methods and applications in forestry and protection against forest fires. The UAV was used for military activities, mainly for monitoring areas of difficult access, for human use. With the technological development of vehicles equipped with the Global Satellite Navigation System (GNSS) and minimization of sensors made possible to capture electromagnetic electrical energy reflected and transmitted by targets on the surface, being converted into traffic signals so that they can be stored or transmitted in real time. The data captured by the sensors are processed to be used in the process of using information from objects observed on the earth's surface to be used in the management of forest resources.
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