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Assessing the potential for spectrally based remote sensing of salmon spawning locations

机译:评估三文鱼产卵位置的光谱遥感潜力

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Remote sensing tools are increasingly used for quantitative mapping of fluvial habitats, yet few techniques exist for continuous sampling of aquatic organisms, such as spawning salmonids. This study assessed the potential for spectrally based remote sensing of salmon spawning locations (i.e., redds) using data acquired from unmanned aircraft systems (UAS) along a large, gravel-bed river. We developed a novel, semi-automated approach for detecting salmon redds by applying machine learning classification and object detection techniques to UAS-based imagery. We found that both true colour (RGB) and hyperspectral imagery could be used to identify salmon redds, though with varying degrees of accuracy. Redds were mapped with accuracies of similar to 0.75 from RGB imagery using logistic regression and support vector machines (SVM) classification algorithms, but this type of data could not be used to identify redds using Object-based Image Analysis (OBIA). The hyperspectral imagery was more useful for mapping salmon redds, with accuracies greater than 0.9 for both logistic regression and SVM classifiers; OBIA of the hyperspectral data resulted in redd detection accuracies up to 0.86. The hyperspectral imagery also yielded complementary physical habitat information including water depth and substrate composition, which we quantified on the basis of a spectrally based chlorophyll absorption ratio. Overall, the hyperspectral imagery more effectively identified salmon spawning locations than RGB images and was more conducive to the classification approaches we evaluated. Each type of remotely sensed data had advantages and limitations, which are important for potential users to understand when incorporating UAS-based data collection into river ecosystem studies.
机译:遥感工具越来越多地用于河流栖息地的定量映射,但仍有很少存在的技术用于水生生物的持续抽样,例如产卵鲑鱼。该研究评估了使用从无万砾石床河沿着无人机系统(UAS)所获取的数据的频谱基础遥感的频谱遥感的潜力。我们通过将机器学习分类和对象检测技术应用于基于UAS的图像,开发了一种用于检测鲑鱼REDDS的新型半自动方法。我们发现真正的颜色(RGB)和高光谱图像可用于识别鲑鱼REDDS,但是具有不同程度的精度。使用Logistic回归和支持向量机(SVM)分类算法,RGB图像与RGB图像相似的精度映射了REDDS,但这种类型的数据不能用于使用基于对象的图像分析(OBIA)来识别REDDS。高光谱图像对于逻辑回归和SVM分类器来说,对施工鲑鱼REDDS更有用的精度大于0.9;高光谱数据的OBIA导致REDD检测精度高达0.86。高光谱图像还产生了互补的物理栖息地信息,包括水深和衬底组合物,我们基于光谱基叶绿素吸收比量化。总的来说,高光谱图像比RGB图像更有效地确定了三文鱼产卵位置,并且更有利于我们评估的分类方法。每种类型的远程感测数据都具有优缺点和局限性,这对于潜在用户来说是在将基于UAS的数据收集结合到河流生态系统研究中时所理解的。

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