VRA is a training-free agentic framework that orchestrates off-the-shelf LVLMs with a reasoning model via iterative verification and refinement, raising accuracy on remote sensing VQA from 52.8% to 78.8% and delivering up to 40.67% gains on hard question types.
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Visual Reasoning Agent: Robust Vision Systems in Remote Sensing via Inference-Time Scaling
VRA is a training-free agentic framework that orchestrates off-the-shelf LVLMs with a reasoning model via iterative verification and refinement, raising accuracy on remote sensing VQA from 52.8% to 78.8% and delivering up to 40.67% gains on hard question types.