Visual Prompt Discovery via Semantic Exploration
arXiv cs.CV / 3/18/2026
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Key Points
- The paper proposes SEVEX, an automated semantic exploration framework for discovering task-specific visual prompts to improve LVLM perception and reduce reliance on manual trial-and-error.
- SEVEX tackles the challenges of lengthy low-level code and a vast, unstructured search space by using an abstract idea space, a novelty-guided selection algorithm, and a semantic feedback-driven ideation process to efficiently explore prompts with minimal human input.
- Evaluations on the BlindTest and BLINK benchmarks show that SEVEX improves task accuracy, inference efficiency, exploration efficiency, and stability, and it uncovers sophisticated and counter-intuitive visual strategies beyond conventional tool usage.
- The work introduces a new paradigm for enhancing LVLM perception through automated, task-wise visual prompting, with broad implications for LVLM tooling and research.
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