基于高斯混合模型的无监督扫描电镜图像分割

J. Dramsch, F. Amour, M. Lüthje
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引用次数: 3

摘要

研究了北海白垩的扫描电子图像,发现了重要的岩石性质。为了减轻这种体力劳动,我们研究了几种标准图像处理方法,这些方法在复杂的粉笔上表现不佳。由于缺乏人工标记的数据,深度神经网络不能得到充分的应用。高斯混合模型学习了一种双重表示,可以很好地将背景与岩石分开。随后的形态过滤清理预测并启用自动分析。
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Gaussian Mixture Models For Robust Unsupervised Scanning-Electron Microscopy Image Segmentation Of North Sea Chalk
Scanning-Electron images from North Sea Chalk are studied for important rock properties. To relieve this manual labor, we investigated several standard image processing methods that underperformed on complicated chalk. Due to the lack of manually labeled data, deep neural networks could not be adequately applied. Gaussian Mixture Models learnt a two-fold representation that separated the background well from the rock. Subsequent morphological filtering cleans up the prediction and enables automatic analysis.
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