Developing trustworthy intelligent vision systems for high-stakes domains, e.g., remote sensing and medical diagnosis, demands broad robustness without costly retraining. We propose Visual Reasoning Agent (VRA), a training-free, agentic reasoning framework that wraps off-the-shelf vision-language models and pure vision systems in a Think--Critique--Act loop. While VRA incurs significant additional test-time computation, it achieves up to 40\% absolute accuracy gains on challenging visual reasoning benchmarks. Future work will optimize query routing and early stopping to reduce inference overhead while preserving reliability in vision tasks.
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Agentic Reasoning for Robust Vision Systems via Increased Test-Time Compute731.37 kBDownloadView