珊瑚礁
无人机
暗礁
多光谱图像
瓦砾
海岸管理
遥感
环境资源管理
计算机科学
环境科学
海洋学
地理
地质学
遗传学
生物
考古
作者
Paula A. Zapata-Ramírez,Hernando Hernández-Hamón,Clare Fitzsimmons,Marcela Cano,J. M. Pajares García,Carlos A. Zuluaga,Rafael E. Vásquez
出处
期刊:Remote Sensing
[Multidisciplinary Digital Publishing Institute]
日期:2023-07-12
卷期号:15 (14): 3504-3504
被引量:6
摘要
The Caribbean is one of the world’s most vulnerable regions to the projected impacts of climate change, and changes in coral reef ecosystems have been studied over the last two decades. Lately, new technology-based methods using satellites and unmanned vehicles, among others have emerged as tools to aid the governance of these ecosystems by providing managers with high-quality data for decision-making processes. This paper addresses the development of a Google Earth Engine (GEE)-based application for use in the management processes of shallow coral reef ecosystems, using images acquired with Remotely Piloted Aircraft Systems (RPAS) known as drones, at the Old Providence McBean Lagoon National Natural Park; a Marine Protected Area (MPA) located northwest of Old Providence Island, Colombia. Image acquisition and processing, known as drone imagery, is first described for flights performed using an RTK multispectral drone at five different monitoring stations within the MPA. Then, the use of the GEE app is described and illustrated. The user executes four simple steps starting with the selection of the orthomosaics uploaded to GEE and obtaining the reef habitat classification for four categories: coral, macroalgae, sand, and rubble, at any of the five monitoring stations. Results show that these classes can be effectively mapped using different machine-learning (ML) algorithms available inside GEE, helping the manager obtain high-quality information about the reef. This remote-sensing application represents an easy-to-use tool for managers that can be integrated into modern ecosystem monitoring protocols, supporting effective reef governance within a digitized society with more demanding stakeholders.
科研通智能强力驱动
Strongly Powered by AbleSci AI