Australian Centre for Field Robotics, University of Sydney, Australia.
PLoS One. 2012;7(12):e50440. doi: 10.1371/journal.pone.0050440. Epub 2012 Dec 12.
This paper demonstrates how multi-scale measures of rugosity, slope and aspect can be derived from fine-scale bathymetric reconstructions created from geo-referenced stereo imagery. We generate three-dimensional reconstructions over large spatial scales using data collected by Autonomous Underwater Vehicles (AUVs), Remotely Operated Vehicles (ROVs), manned submersibles and diver-held imaging systems. We propose a new method for calculating rugosity in a Delaunay triangulated surface mesh by projecting areas onto the plane of best fit using Principal Component Analysis (PCA). Slope and aspect can be calculated with very little extra effort, and fitting a plane serves to decouple rugosity from slope. We compare the results of the virtual terrain complexity calculations with experimental results using conventional in-situ measurement methods. We show that performing calculations over a digital terrain reconstruction is more flexible, robust and easily repeatable. In addition, the method is non-contact and provides much less environmental impact compared to traditional survey techniques. For diver-based surveys, the time underwater needed to collect rugosity data is significantly reduced and, being a technique based on images, it is possible to use robotic platforms that can operate beyond diver depths. Measurements can be calculated exhaustively at multiple scales for surveys with tens of thousands of images covering thousands of square metres. The technique is demonstrated on data gathered by a diver-rig and an AUV, on small single-transect surveys and on a larger, dense survey that covers over [Formula: see text]. Stereo images provide 3D structure as well as visual appearance, which could potentially feed into automated classification techniques. Our multi-scale rugosity, slope and aspect measures have already been adopted in a number of marine science studies. This paper presents a detailed description of the method and thoroughly validates it against traditional in-situ measurements.
本文展示了如何从基于地理参考的立体图像生成的精细水深重建中提取粗糙度、坡度和方位的多尺度度量。我们使用自主水下航行器 (AUV)、遥控潜水器 (ROV)、载人潜水器和潜水员手持成像系统采集的数据,在大空间尺度上生成三维重建。我们提出了一种在 Delaunay 三角网格表面网格中计算粗糙度的新方法,该方法通过使用主成分分析 (PCA) 将面积投影到最佳拟合平面上。坡度和方位可以用很少的额外努力来计算,拟合一个平面可以将粗糙度与坡度解耦。我们将虚拟地形复杂度计算的结果与使用传统现场测量方法的实验结果进行了比较。我们表明,在数字地形重建上进行计算更加灵活、稳健且易于重复。此外,该方法是非接触式的,与传统测量技术相比,对环境的影响要小得多。对于基于潜水员的调查,收集粗糙度数据所需的水下时间大大减少,并且由于该技术基于图像,因此可以使用能够在潜水员深度之外作业的机器人平台。可以对数千平方米的数万张图像的调查进行多尺度的详尽计算。该技术已在潜水器和 AUV 采集的数据、小单剖面调查以及更大、更密集的覆盖超过 [Formula: see text] 的调查中得到验证。立体图像提供了 3D 结构和视觉外观,这可能会为自动分类技术提供支持。我们的多尺度粗糙度、坡度和方位度量已经在许多海洋科学研究中得到采用。本文详细描述了该方法,并对其与传统现场测量进行了全面验证。