Linking heterogeneous microstructure informatics with expert characterization knowledge through customized and hybrid vision-language representations for industrial qualification
Mutahar Safdar, Gentry Wood, Max Zimmermann, Guy Lamouche, Priti Wanjara, Yaoyao Fiona Zhao

TL;DR
This paper presents a hybrid vision-language framework that links microstructure data with expert knowledge, enabling zero-shot classification of materials and improving interpretability in industrial qualification processes.
Contribution
It introduces a customized similarity-based representation combining visual and textual data for microstructure analysis, advancing semantic interoperability and zero-shot classification capabilities.
Findings
Effective distinction between acceptable and defective microstructures
FLAVA model shows higher visual sensitivity
Z-score normalization improves classification accuracy
Abstract
Rapid and reliable qualification of advanced materials remains a bottleneck in industrial manufacturing, particularly for heterogeneous structures produced via non-conventional additive manufacturing processes. This study introduces a novel framework that links microstructure informatics with a range of expert characterization knowledge using customized and hybrid vision-language representations (VLRs). By integrating deep semantic segmentation with pre-trained multi-modal models (CLIP and FLAVA), we encode both visual microstructural data and textual expert assessments into shared representations. To overcome limitations in general-purpose embeddings, we develop a customized similarity-based representation that incorporates both positive and negative references from expert-annotated images and their associated textual descriptions. This allows zero-shot classification of previously…
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Taxonomy
TopicsManufacturing Process and Optimization
