Arthur de Grandpré, Christophe Kinnard, Andrea Bertolo
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引用次数: 0
摘要
植被的空间组织已被证明是多种生态系统生态状态的有力指标。在本研究中,我们分析了沉水植被(SAV)景观中空间复杂性指标之间的关系,并探索了卫星遥感技术量化沉水环境中这些指标的潜力。为此,我们估算了一系列具有不同空间组织的模拟和真实水下植被景观的复杂性指标。所有这些景观都经过人为处理,以(i)模拟与水生环境低信噪比(SNR)有关的遥感噪声以及风浪产生的环境噪声,(ii)将空间分辨率从很高(2 米)降低到中等(30 米)。在这些处理方法中,空间分辨率和低信噪比(以传感器噪声为代表)对感知到的景观空间复杂性影响最大,而环境噪声的影响则高度依赖于分辨率。尽管单一指标被认为不足以描述景观的空间复杂性,但信息复杂性指标的组合(如砾石指数、平均信息增益、景观形状指数和边缘密度)对真实和模拟数据集的变化提供了可靠的解释。这些研究结果表明,遥感技术有助于建立 SAV 空间结构与生态状况之间的联系,在 SAV 生态监测方面具有很大的潜力。
Quantifying spatial complexity in submerged aquatic vegetation landscapes using remote sensing: Lessons from simulated and real landscapes
The spatial organization of vegetation has been shown to be a strong indicator of ecological state in multiple ecosystems. In this study, we analyze the relationships between spatial complexity metrics in submerged aquatic vegetation (SAV) landscapes, and we explore the potential of satellite remote sensing to quantify these metrics in submerged environments. To do so, we estimated an array of complexity metrics over both simulated and real SAV landscapes of contrasted spatial organization. All these landscapes were artificially manipulated to (i) simulate remote sensing noise associated with the low signal-to-noise ratio (SNR) of aquatic environments and environmental noise generated by wind and waves, and (ii) reduce their spatial resolution from very high (2 m) to medium (30 m). Among these treatments, spatial resolution and low SNR (represented by sensor noise) had the strongest impacts on the perceived spatial complexity of the landscapes, while the impact of environmental noise was highly dependent on resolution. Although single metrics were deemed insufficient to characterize the spatial complexity of a landscape, a combination of informational complexity metrics such as the clumpy index, mean information gain, landscape shape index, and edge density provided a robust explanation of variation in the real and simulated datasets. These findings suggest that remote sensing has a strong potential for the ecological monitoring of SAV by contributing to establishing the link between SAV spatial structure and ecological status.
期刊介绍:
Limnology and Oceanography (L&O; print ISSN 0024-3590, online ISSN 1939-5590) publishes original articles, including scholarly reviews, about all aspects of limnology and oceanography. The journal''s unifying theme is the understanding of aquatic systems. Submissions are judged on the originality of their data, interpretations, and ideas, and on the degree to which they can be generalized beyond the particular aquatic system examined. Laboratory and modeling studies must demonstrate relevance to field environments; typically this means that they are bolstered by substantial "real-world" data. Few purely theoretical or purely empirical papers are accepted for review.