Abstract
A vision-language model autonomously improves its question-generation capabilities through self-evolution, enhancing both question quality and answerer performance without external supervision.
Vision-language models (VLMs) are typically trained as passive answerers, while their ability to actively ask diverse, non-trivial, visual-centric and grounded questions remains underexplored. Existing visual questioners' performance is bottlenecked by the availability of high-quality training data or the cost of curating them. We show that a VLM can continuously improve itself as a visual questioner without any external supervision. We propose a self-evolving framework that uses a VLM itself as both a proposer and a filter to produce harder, more informative, and visual-centric questions, while maintaining their exploration diversity to avoid training collapse. These questions are then used to train the VLM in both questioner and answerer modes. To evaluate the questioner, we introduce an agentic protocol that assesses questions along perception, reasoning, and diversity dimensions. Experiments across various backbone VLMs show that our method substantially enhances the quality and substantially expands the difficulty boundary of autonomous question generation. Under the same budget, our self-supervision is more effective than training on the static source data. Moreover, the self-evolving questioner remains a competitive or even better answerer.
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🚀 Self-Evolving Visual Questioner (SeeQ)
Can Vision-Language Models autonomously improve their question-generating capabilities without human help? Yes.
- The Core Framework: A fully self-supervised loop where a VLM iteratively proposes visual questions from raw images, rewrites/filters them via a self-critique mechanism, and fine-tunes on its own refined QA data.
- Without External Supervision: Eliminates any dependency on human-curated annotations or expensive, proprietary teacher APIs.
- Agentic Evaluation Protocol: Introduces a novel evaluation suite that benchmarks questions based on actual capability—measuring visual search complexity, spatial grounding, contextual reasoning, and semantic diversity instead of relying on basic n-gram metrics.
- No Capability Trade-offs: Substantially upgrades visual question generation quality across multiple open-source VLM backbones while completely preserving the models' native visual answering performance.
- Outcomes: QG ↑82%, QA preserved on Vstar, CVbench, and RWQA.
🌐 Project, Code here: https://joliang17.github.io/SelfEvolvingVQG/
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