支持半自动大理石薄壁图像分割与机器学习

Á. Budai, K. Csorba
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引用次数: 0

摘要

对于考古学家来说,知道大理石文物的来源是很重要的。这些方法是基于寻找大理石颗粒的边界,但只有少数算法可以代替专家来做这件事。在本文中,我们提出了一种自适应算法,称为live-polyline,它能够帮助专家标记晶粒边界,并且能够从用户交互中学习。我们研究了两种不同的方法。第一个是基于启发式的方法,而另一个是基于机器学习的解决方案。我们定义了性能指标,确定了关键指标,提供了一种算法来计算它,并确定了足够性能所需的关键指标的值。我们还根据这些指标检查了启发式和机器学习方法,并测量了它们的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supporting semi-automatic marble thin-section image segmentation with machine learning
For archaeologists knowing the provenance of mar-ble artifacts is important. The methodologies are based on finding the boundaries of the marble grains but only a few algorithms are available to do this instead of the expert. In this paper we propose an adaptive algorithm, called live-polyline, which is able to help the experts marking the grain boundaries and it is able to learn from user interactions as well. We investigate two different approaches. The first one is a heuristic based method, however the other one is a machine learning based solution. We define metrics for the performance, identify its key indicators, provide an algorithm to calculate it and determine the required values of the key indicators for sufficient performance. We also examined the heuristic and machine learning methods in terms of these indicators and measured their performance.
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