Optimized 3D Segmentation Algorithm for Shelly Sand Images

Antonio Leonti, J. Fonseca, I. Valova, R. Beemer, Devin Cannistraro, C. Pilskaln, Dylan DeFlorio, Grayson Kelly
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引用次数: 3

Abstract

There is much to be gained from analysing and studying calcareous sediment, with applications ranging from the study of climate change, rock dating, and even building offshore oil rigs and wind farms. One way of performing this analysis is to obtain a µCT scan of the sediment, allowing scientists and engineers to automate much of their analysis using software. Many existing and prospective analysis techniques require handling individual grains. Thus, fast and effective segmentation is an essential first step for any such analysis. Segmentation is non-trivial; these scans hold a lot of information, exhibit ambiguous boundaries between objects, and many objects are hollow, making it even more difficult to apply traditional watershed segmentation. Addressing these issues, in this paper we propose an optimized 3D segmentation (O3DS) algorithm based on watersheds. We make use of branch recursion, partition the image by height prior to segmentation, artificially reducing the size of the largest connected objects. These and additional changes are extremely effective in optimizing performance; O3DS reduces the time to segment a 659x925x932 scan of sediment by 95.4% and produces better or comparable results when compared to similar implementation by our co-author.
雪莉沙图像的优化三维分割算法
从分析和研究钙质沉积物中可以获得很多东西,其应用范围从研究气候变化,岩石年代测定,甚至建造海上石油钻井平台和风力发电场。执行这种分析的一种方法是获得沉积物的微CT扫描,允许科学家和工程师使用软件自动进行大部分分析。许多现有的和未来的分析技术需要处理单个颗粒。因此,快速有效的分割是任何此类分析必不可少的第一步。分割是非常重要的;这些扫描包含大量信息,物体之间的边界模糊,许多物体是空心的,这使得应用传统的分水岭分割变得更加困难。针对这些问题,本文提出了一种基于流域的优化三维分割(O3DS)算法。我们利用分支递归,在分割前按高度对图像进行分割,人为地减少最大连接对象的大小。这些变化和其他变化在优化性能方面非常有效;O3DS将沉积物659x925x932扫描的分割时间缩短了95.4%,与我们的合著者的类似实现相比,产生了更好或可比较的结果。
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