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Towards a Transferable UAV-Based Framework for River Hydromorphological Characterization

机译:迈向基于可转让无人机的河流水形特征描述框架

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摘要

The multiple protocols that have been developed to characterize river hydromorphology, partly in response to legislative drivers such as the European Union Water Framework Directive (EU WFD), make the comparison of results obtained in different countries challenging. Recent studies have analyzed the comparability of existing methods, with remote sensing based approaches being proposed as a potential means of harmonizing hydromorphological characterization protocols. However, the resolution achieved by remote sensing products may not be sufficient to assess some of the key hydromorphological features that are required to allow an accurate characterization. Methodologies based on high resolution aerial photography taken from Unmanned Aerial Vehicles (UAVs) have been proposed by several authors as potential approaches to overcome these limitations. Here, we explore the applicability of an existing UAV based framework for hydromorphological characterization to three different fluvial settings representing some of the distinct ecoregions defined by the WFD geographical intercalibration groups (GIGs). The framework is based on the automated recognition of hydromorphological features via tested and validated Artificial Neural Networks (ANNs). Results show that the framework is transferable to the Central-Baltic and Mediterranean GIGs with accuracies in feature identification above 70%. Accuracies of 50% are achieved when the framework is implemented in the Very Large Rivers GIG. The framework successfully identified vegetation, deep water, shallow water, riffles, side bars and shadows for the majority of the reaches. However, further algorithm development is required to ensure a wider range of features (e.g., chutes, structures and erosion) are accurately identified. This study also highlights the need to develop an objective and fit for purpose hydromorphological characterization framework to be adopted within all EU member states to facilitate comparison of results.
机译:已经开发出多种用于表征河流水文形态的协议,部分是对诸如欧盟水框架指令(EU WFD)之类的立法动因的回应,这使得在不同国家获得的结果进行比较具有挑战性。最近的研究已经分析了现有方法的可比性,提出了基于遥感的方法作为协调水形态学表征方案的潜在手段。但是,通过遥感产品获得的分辨率可能不足以评估允许精确表征所需的一些关键水形特征。几位作者已经提出了基于从无人飞行器(UAV)拍摄的高分辨率航空摄影的方法,作为克服这些限制的潜在方法。在这里,我们探讨了现有的基于UAV的水形态特征描述框架在三个不同的河流环境中的适用性,这些环境代表了WFD地理互校准组(GIG)定义的某些不同的生态区域。该框架基于通过经过测试和验证的人工神经网络(ANN)对水形态特征的自动识别。结果表明,该框架可转移到中波罗的海和地中海GIG,特征识别的准确性超过70%。在甚大河流域GIG中实施该框架时,可达到50%的准确性。该框架成功地确定了大部分河段的植被,深水,浅水,浅滩,侧栏和阴影。但是,需要进一步的算法开发,以确保准确识别更广泛的特征(例如滑道,结构和腐蚀)。这项研究还强调,有必要制定一个客观且适合目的的水形态表征框架,以在所有欧盟成员国中采用,以促进结果比较。

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