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Parameterization of bedform morphology and defect density with fingerprint analysis techniques

机译:利用指纹分析技术对床形和缺陷密度进行参数化

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摘要

A novel method for parameterizing the morphology of seafloor ripples with fingerprint analysis numerical techniques is presented. This fully automated analysis tool identifies rippled areas in two-dimensional imagery of the seafloor, and returns ripple orientation and wavelength as well as a new morphological parameter, the spatial density of ripple defects. In contrast to widely used manual and spectral parameterization methods, this new technique yields a unique probability distribution for each derived parameter, which describes its spatial variability across the sampled domain. Here we apply this new analysis technique to synthetic and field collected side-scan sonar seafloor images in order to assess the methods capacity to define bed geometry across a wide range of simulated and observed morphological conditions. The resulting orientation and wavelength values compare favorably with those of the existing manual and spectral parameterization methods, and are superior under environmental conditions characterized by low signal to noise ratios as well as high planform ripple sinuosity. Furthermore, the resulting ripple defect density values demonstrate correlation with ripple orientation, wave direction, and the Shields parameter, which is consistent with recent investigations that have theoretically linked this parameter to hydrodynamic forcing conditions. The presented fingerprint analysis method surpasses the capacity of existing methods for ripple parameterization and promises to yield greater insight into theoretical and applied problems associated with the temporal and spatial variability of ripple morphology across a wide spectrum of marine environments.
机译:提出了一种利用指纹分析数值技术参数化海底波纹形态的新方法。这款全自动分析工具可识别海底二维图像中的波纹区域,并返回波纹方向和波长以及新的形态学参数,即波纹缺陷的空间密度。与广泛使用的手动和频谱参数化方法相反,此新技术为每个派生参数产生唯一的概率分布,从而描述了其在采样域中的空间变异性。在这里,我们将这种新的分析技术应用于合成和现场收集的侧扫声纳海底图像,以便评估在各种模拟和观察到的形态学条件下定义床层几何形状的方法的能力。所得的方向和波长值可与现有的手动和光谱参数化方法相媲美,并且在以信噪比低以及平面纹波弯曲度高为特征的环境条件下具有优越性。此外,所产生的波纹缺陷密度值显示出与波纹方向,波浪方向和Shields参数的相关性,这与理论上将此参数与流体动力强迫条件联系起来的最新研究一致。提出的指纹分析方法超越了现有的波纹参数化方法的能力,并有望对与大范围海洋环境中波纹形态的时间和空间变异性相关的理论和应用问题有更深入的了解。

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