DeepSC-Edge: Scientific Corrosion Segmentation with Edge-Guided and Class-Balanced Losses.

Biao Yin,Nicholas Josselyn,Thomas A. Considine,John V. Kelley, Berend C. Rinderspacher, Robert E. Jensen, James F. Snyder,Ziming Zhang,Elke A. Rundensteiner

International Conference on Machine Learning and Applications(2023)

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摘要
Corrosion is a prevalent issue in numerous industrial fields, causing expenses nearing $3 trillion or 4% of the GDP annually with safety threats and environmental pollution. To timely qualify and validate new corrosion-inhibiting materials on a large scale, accurate and efficient corrosion assessment is crucial. Yet it is hindered by a lack of automatic tools for expert-level corrosion segmentation of material science experimental images. Developing such tools is challenging due to limited domain-valid data, image artifacts visually similar to corrosion, various corrosion morphology, strong class imbalance, and millimeter-precision corrosion boundaries. To help the community address these challenges, we curate the first expert-level segmentation annotations for a real-world image dataset [1] for scientific corrosion segmentation. In addition, we design a deep learning based model, called DeepSC-Edge that achieves guidance of ground-truth edge learning by adopting a novel loss that avoids over-fitting to edges. It also is enriched by integrating a class-balanced loss that improves segmentation with small area but crucial edges of interest for scientific corrosion assessment. Our dataset and methods pave the way to advanced deep-learning models for corrosion assessment and generation – promoting new research to connect computer vision and material science discovery. Once the appropriate approvals have been cleared, we expect to release the code and data at: https://arl.wpi.edu/
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关键词
Deep Learning,Computer Vision,Gross Domestic Product,Image Segmentation,Deep Learning Models,Image Dataset,Materials Science,Class Imbalance,Image Artifacts,Scientific Assessment,Domain Experts,Low-level Features,Segmentation Task,Deep Learning Architectures,Background Pixels,Open Dataset,Edge Information,Binary Segmentation,Ground Truth Segmentation,Image Segmentation Tasks
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