Roundness Estimation of Sedimentary Rocks Using Eliptic Fourier and Deep Neural Networks

E. M. Hernández, G. M. Chávez, J. Hernández
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Abstract

Sedimentary rocks analysis is useful in geological science, economic sector, and risk evaluation. Roundness is a morphological parameter that provide information to characterize and classify sedimentary material. Roundness degrees is estimated from the contour of the particle. Waddell (1932) proposed a remarkable method based on the measurement of parti-cle's curvature. This method is accurate; nevertheless, it is not invariant to scale and rotation. This problem can be solved by mapping the contour to the frequency-domain, however, spectral analysis is a difficult task. Based on these two approaches, we propose to use a deep neural network whose input is the elliptical Fourier spectrum and target is roundness proposed by Wadell. The training database consists of 623 real-rocks images from some geological phenomena. We have found the neural networks perform very well on the 88.8% of rocks.
基于椭圆傅里叶和深度神经网络的沉积岩圆度估计
沉积岩分析在地质科学、经济、风险评价等方面具有重要的应用价值。圆度是一种形态参数,为沉积物质的表征和分类提供了信息。圆度由粒子的轮廓估计。Waddell(1932)提出了一种基于测量粒子曲率的显著方法。这种方法是准确的;然而,它对缩放和旋转不是不变的。这一问题可以通过将轮廓线映射到频域来解决,但频谱分析是一项困难的任务。在这两种方法的基础上,我们提出了一种以Wadell提出的椭圆傅立叶谱为输入,圆度为目标的深度神经网络。训练数据库由623张真实岩石图像组成,这些图像来自一些地质现象。我们发现神经网络在88.8%的岩石上表现很好。
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