Quasar Science Resources, S. L. Camino de las Ceudas 2, 28232, Las Rozas de Madrid, Madrid, Spain.
Departamento de Física Aplicada, Instituto Universitario de Investigación Marina (INMAR), Universidad de Cádiz, Campus de Excelencia Internacional/Global del Mar (CEI·MAR), Puerto Real, Cadiz, Spain.
Sci Rep. 2024 Apr 10;14(1):8360. doi: 10.1038/s41598-024-59091-7.
Seagrasses are undergoing widespread loss due to anthropogenic pressure and climate change. Since 1960, the Mediterranean seascape lost 13-50% of the areal extent of its dominant and endemic seagrass-Posidonia oceanica, which regulates its ecosystem. Many conservation and restoration projects failed due to poor site selection and lack of long-term monitoring. Here, we present a fast and efficient operational approach based on a deep-learning artificial intelligence model using Sentinel-2 data to map the spatial extent of the meadows, enabling short and long-term monitoring, and identifying the impacts of natural and human-induced stressors and changes at different timescales. We apply ACOLITE atmospheric correction to the satellite data and use the output to train the model along with the ancillary data and therefore, map the extent of the meadows. We apply noise-removing filters to enhance the map quality. We obtain 74-92% of overall accuracy, 72-91% of user's accuracy, and 81-92% of producer's accuracy, where high accuracies are observed at 0-25 m depth. Our model is easily adaptable to other regions and can produce maps in in-situ data-scarce regions, providing a first-hand overview. Our approach can be a support to the Mediterranean Posidonia Network, which brings together different stakeholders such as authorities, scientists, international environmental organizations, professionals including yachting agents and marinas from the Mediterranean countries to protect all P. oceanica meadows in the Mediterranean Sea by 2030 and increase each country's capability to protect these meadows by providing accurate and up-to-date maps to prevent its future degradation.
由于人为压力和气候变化,海草正在广泛消失。自 1960 年以来,地中海景观失去了其主导和特有海草——海洋波西多尼亚的 13-50%的面积,而这种海草调节着其生态系统。由于选址不佳和缺乏长期监测,许多保护和恢复项目都失败了。在这里,我们提出了一种基于深度学习人工智能模型的快速有效的操作方法,该模型使用 Sentinel-2 数据来绘制草地的空间范围,从而实现短期和长期监测,并识别自然和人为压力源以及不同时间尺度的变化的影响。我们对卫星数据应用 ACOLITE 大气校正,并使用输出数据以及辅助数据来训练模型,从而绘制草地的范围。我们应用降噪滤波器来提高地图质量。我们获得了 74-92%的总体精度、72-91%的用户精度和 81-92%的生产者精度,其中在 0-25 米的深度观察到高精度。我们的模型易于适应其他地区,并可以在数据匮乏的地区生成地图,提供第一手的概览。我们的方法可以为地中海波西多尼亚网络提供支持,该网络汇集了不同的利益相关者,如当局、科学家、国际环境组织、专业人士,包括来自地中海国家的游艇代理和码头,以便到 2030 年保护地中海所有的海洋波西多尼亚草地,并提高每个国家保护这些草地的能力,提供准确和最新的地图,以防止其未来退化。