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arxiv 2111.07892 v1 pith:KSGWGWGZ submitted 2021-11-09 eess.IV cond-mat.mtrl-scics.CRcs.CVcs.LG

Data privacy protection in microscopic image analysis for material data mining

classification eess.IV cond-mat.mtrl-scics.CRcs.CVcs.LG
keywords datamaterialimageprivacyuseralgorithmamountbeen
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recent progress in material data mining has been driven by high-capacity models trained on large datasets. However, collecting experimental data has been extremely costly owing to the amount of human effort and expertise required. Therefore, material researchers are often reluctant to easily disclose their private data, which leads to the problem of data island, and it is difficult to collect a large amount of data to train high-quality models. In this study, a material microstructure image feature extraction algorithm FedTransfer based on data privacy protection is proposed. The core contributions are as follows: 1) the federated learning algorithm is introduced into the polycrystalline microstructure image segmentation task to make full use of different user data to carry out machine learning, break the data island and improve the model generalization ability under the condition of ensuring the privacy and security of user data; 2) A data sharing strategy based on style transfer is proposed. By sharing style information of images that is not urgent for user confidentiality, it can reduce the performance penalty caused by the distribution difference of data among different users.

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