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Instance segmentation from small dataset by a dual-layer semantics-based deep learning framework

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摘要 Efficient and accurate segmentation of complex microstructures is a critical challenge in establishing process-structure-property(PSP) linkages of materials. Deep learning(DL)-based instance segmentation algorithms show potential in achieving this goal.However, to ensure prediction reliability, the current algorithms usually have complex structures and demand vast training data.To overcome the model complexity and its dependence on the amount of data, we developed an ingenious DL framework based on a simple method called dual-layer semantics. In the framework, a data standardization module was designed to remove extraneous microstructural noise and accentuate desired structural characteristics, while a post-processing module was employed to further improve segmentation accuracy. The framework was successfully applied in a small dataset of bimodal Ti-6Al-4V microstructures with only 112 samples. Compared with the ground truth, it realizes an 86.81% accuracy IoU for the globular αphase and a 94.70% average size distribution similarity for the colony structures. More importantly, only 36 s was taken to handle a 1024 × 1024 micrograph, which is much faster than the treatment of experienced experts(usually 900 s). The framework proved reliable, interpretable, and scalable, enabling its utilization in complex microstructures to deepen the understanding of PSP linkages.
出处 《Science China(Technological Sciences)》 SCIE EI CAS CSCD 2024年第9期2817-2833,共17页 中国科学(技术科学英文版)
基金 supported by the National Key R&D Program of China(Grant No.2023YFB4606502) the National Natural Science Foundation of China(Grant Nos.51871183 and 51874245) the Research Fund of the State Key Laboratory of Solidification Processing(NPU), China(Grant No.2020-TS-06) Sponsored by the Practice and Innovation Funds for Graduate Students of Northwestern Polytechnical University。
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