LVLM-Aided Alignment of Task-Specific Vision Models
- URL: http://arxiv.org/abs/2512.21985v1
- Date: Fri, 26 Dec 2025 11:11:25 GMT
- Title: LVLM-Aided Alignment of Task-Specific Vision Models
- Authors: Alexander Koebler, Lukas Kuhn, Ingo Thon, Florian Buettner,
- Abstract summary: Small task-specific vision models are crucial in high-stakes domains.<n>We introduce a novel and efficient method for aligning small task-specific vision models with human domain knowledge.<n>Our method demonstrates substantial improvement in aligning model behavior with human specifications.
- Score: 49.96265491629163
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In high-stakes domains, small task-specific vision models are crucial due to their low computational requirements and the availability of numerous methods to explain their results. However, these explanations often reveal that the models do not align well with human domain knowledge, relying instead on spurious correlations. This might result in brittle behavior once deployed in the real-world. To address this issue, we introduce a novel and efficient method for aligning small task-specific vision models with human domain knowledge by leveraging the generalization capabilities of a Large Vision Language Model (LVLM). Our LVLM-Aided Visual Alignment (LVLM-VA) method provides a bidirectional interface that translates model behavior into natural language and maps human class-level specifications to image-level critiques, enabling effective interaction between domain experts and the model. Our method demonstrates substantial improvement in aligning model behavior with human specifications, as validated on both synthetic and real-world datasets. We show that it effectively reduces the model's dependence on spurious features and on group-specific biases, without requiring fine-grained feedback.
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