基于Google Earth Engine的Sentinel-1 Sar图像变化检测分析评估圭亚那北鲁普努尼湿地水文动态

Javier Ruiz-Ramos, A. Berardi, A. Marino, Deepayan Bhowmik, Matthew G. Simpson
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摘要

湿地是世界上最具生产力的自然生态系统之一,通常是重要的生物多样性热点。然而,这些景观的复杂性以及这些地区生物之间脆弱的动态关系使湿地生态系统特别容易受到气候变化等环境干扰的影响。因此,开发能够持续监测和绘制湿地动态的新型自动化系统对于为决策提供信息和保护湿地的自然健康至关重要。部署在SENTINEL-1等卫星平台上的合成孔径雷达(SAR)传感器越来越被认为是湿地监测的关键。SAR传感器对环境变化的高灵敏度使其特别适合于调查这些生态系统内发生的水文过程。本文的主要目的是提出一种快速极化SAR (PolSAR)变化检测工具,用于监测和绘制圭亚那北鲁普努尼地区的洪水动态和环境状况。通过使用密集的Sentinel-1时间序列数据和Google Earth Engine (GEE)平台,我们能够连续和近实时地绘制时间开放水域和时间淹没植被区域。本研究的结果对确定研究区域的水文机制有重要贡献,同时为快速响应和环境影响评估提供了重要和有价值的信息。
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Assessing Hydrological Dynamics of Guyana’s North Rupununi Wetlands Using Sentinel-1 Sar Imagery Change Detection Analysis on Google Earth Engine
Wetlands are among the most productive natural ecosystems in the world, generally being important biodiversity hotspots. However, the complex nature of these landscapes together with the fragile and dynamic relationships among the organisms inhabiting these regions, make wetland ecosystems especially vulnerable to environmental disturbance, such as climate change. Thus, developing new automated systems which allow the continuous monitoring and mapping of wetland dynamics is crucial for informing decision-making and preserving their natural health. Synthetic Aperture Radar (SAR) sensors deployed on satellite platforms such as SENTINEL-1 are increasingly recognized as essential for wetland monitoring. The high sensitivity of SAR sensors to environmental variation makes them particularly suitable for investigating the hydrological processes occurring within these ecosystems.The main objective of this paper is to propose a rapid polarimetric SAR (PolSAR) change detection tool for monitoring and mapping the flood dynamics and environmental condition of the North Rupununi region, Guyana. By making use of dense Sentinel-1 timeseries data and the Google Earth Engine (GEE) platform, we were able to map temporal open water and temporal flooded vegetation areas in a continuous and near-real time basis. The outcomes derived from this study significantly contributed to identify the hydrological mechanisms of the region of study while providing essential and valuable information for rapid response and environmental impact assessment.
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