CVNov 2, 2025

In-Context-Learning-Assisted Quality Assessment Vision-Language Models for Metal Additive Manufacturing

arXiv:2511.05551v1h-index: 16
Originality Synthesis-oriented
AI Analysis

This addresses data scarcity and transparency issues in manufacturing quality assessment, though it appears incremental as an application of existing methods to a new domain.

The paper tackles vision-based quality assessment in metal additive manufacturing by using in-context learning with vision-language models, eliminating the need for large application-specific datasets. Results show these models achieve classification accuracies similar to traditional machine learning models with minimal samples while providing interpretable rationales.

Vision-based quality assessment in additive manufacturing often requires dedicated machine learning models and application-specific datasets. However, data collection and model training can be expensive and time-consuming. In this paper, we leverage vision-language models' (VLMs') reasoning capabilities to assess the quality of printed parts and introduce in-context learning (ICL) to provide VLMs with necessary application-specific knowledge and demonstration samples. This method eliminates the requirement for large application-specific datasets for training models. We explored different sampling strategies for ICL to search for the optimal configuration that makes use of limited samples. We evaluated these strategies on two VLMs, Gemini-2.5-flash and Gemma3:27b, with quality assessment tasks in wire-laser direct energy deposition processes. The results show that ICL-assisted VLMs can reach quality classification accuracies similar to those of traditional machine learning models while requiring only a minimal number of samples. In addition, unlike traditional classification models that lack transparency, VLMs can generate human-interpretable rationales to enhance trust. Since there are no metrics to evaluate their interpretability in manufacturing applications, we propose two metrics, knowledge relevance and rationale validity, to evaluate the quality of VLMs' supporting rationales. Our results show that ICL-assisted VLMs can address application-specific tasks with limited data, achieving relatively high accuracy while also providing valid supporting rationales for improved decision transparency.

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