CVMar 5, 2025

Mineral segmentation using electron microscope images and spectral sampling through multimodal graph neural networks

arXiv:2503.03507v11 citationsh-index: 50Pattern Recognition Letters
Originality Incremental advance
AI Analysis

This enables rapid analysis of mineral samples for geology and materials science, though it is incremental as it adapts existing methods to a specific domain problem.

The paper tackles mineral segmentation from electron microscope images by fusing sparse spectral data with images using a Graph Neural Network, achieving accurate segmentation with only 1% of pixels having spectral data.

We propose a novel Graph Neural Network-based method for segmentation based on data fusion of multimodal Scanning Electron Microscope (SEM) images. In most cases, Backscattered Electron (BSE) images obtained using SEM do not contain sufficient information for mineral segmentation. Therefore, imaging is often complemented with point-wise Energy-Dispersive X-ray Spectroscopy (EDS) spectral measurements that provide highly accurate information about the chemical composition but that are time-consuming to acquire. This motivates the use of sparse spectral data in conjunction with BSE images for mineral segmentation. The unstructured nature of the spectral data makes most traditional image fusion techniques unsuitable for BSE-EDS fusion. We propose using graph neural networks to fuse the two modalities and segment the mineral phases simultaneously. Our results demonstrate that providing EDS data for as few as 1% of BSE pixels produces accurate segmentation, enabling rapid analysis of mineral samples. The proposed data fusion pipeline is versatile and can be adapted to other domains that involve image data and point-wise measurements.

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