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Depth Estimation of Submerged Aquatic Vegetation in Clear Water Streams Using Low-Altitude Optical Remote Sensing

机译:利用低空光学遥感技术估算清澈水域中淹没植被的深度

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摘要

UAVs and other low-altitude remote sensing platforms are proving very useful tools for remote sensing of river systems. Currently consumer grade cameras are still the most commonly used sensors for this purpose. In particular, progress is being made to obtain river bathymetry from the optical image data collected with such cameras, using the strong attenuation of light in water. No studies have yet applied this method to map submergence depth of aquatic vegetation, which has rather different reflectance characteristics from river bed substrate. This study therefore looked at the possibilities to use the optical image data to map submerged aquatic vegetation (SAV) depth in shallow clear water streams. We first applied the Optimal Band Ratio Analysis method (OBRA) of Legleiter et al. (2009) to a dataset of spectral signatures from three macrophyte species in a clear water stream. The results showed that for each species the ratio of certain wavelengths were strongly associated with depth. A combined assessment of all species resulted in equally strong associations, indicating that the effect of spectral variation in vegetation is subsidiary to spectral variation due to depth changes. Strongest associations (R2-values ranging from 0.67 to 0.90 for different species) were found for combinations including one band in the near infrared (NIR) region between 825 and 925 nm and one band in the visible light region. Currently data of both high spatial and spectral resolution is not commonly available to apply the OBRA results directly to image data for SAV depth mapping. Instead a novel, low-cost data acquisition method was used to obtain six-band high spatial resolution image composites using a NIR sensitive DSLR camera. A field dataset of SAV submergence depths was used to develop regression models for the mapping of submergence depth from image pixel values. Band (combinations) providing the best performing models (R2-values up to 0.77) corresponded with the OBRA findings. A 10% error was achieved under sub-optimal data collection conditions, which indicates that the method could be suitable for many SAV mapping applications.
机译:无人机和其他低空遥感平台被证明对河流系统的遥感非常有用的工具。当前,消费级相机仍然是用于此目的的最常用传感器。尤其是,利用光在水中的强烈衰减,正在从用这种照相机收集的光学图像数据中获得河流测深的方法正在取得进展。尚无研究将这种方法用于绘制水生植被的淹没深度,该方法具有与河床底物不同的反射特性。因此,本研究探讨了使用光学图像数据绘制浅色清澈水流中水下水生植物(SAV)深度的可能性。我们首先应用了Legleiter等人的最佳带宽比分析方法(OBRA)。 (2009年)到一个在清澈的水流中来自三种大型植物物种的光谱特征数据集。结果表明,对于每种物种,某些波长的比率与深度密切相关。对所有物种的综合评估得出同样强烈的联系,表明植被中光谱变化的影响是由于深度变化而引起的光谱变化的辅助。对于包括在825和925 nm之间的近红外(NIR)区域中的一个波段和在可见光区域中的一个波段的组合,发现了最强的关联(不同物种的R2-值范围从0.67至0.90)。当前,高空间分辨率和光谱分辨率的数据均不通用,无法将OBRA结果直接应用于图像数据以进行SAV深度映射。取而代之的是,使用一种新型的低成本数据获取方法,使用近红外敏感的DSLR相机获得六波段高空间分辨率的图像合成。使用SAV淹没深度的现场数据集来开发回归模型,以从图像像素值映射淹没深度。提供最佳性能模型的带(组合)(R2值最高为0.77)与OBRA发现相对应。在次优的数据收集条件下实现了10%的误差,这表明该方法可能适用于许多SAV映射应用程序。

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