AMIGO: Agentic Multi-Image Grounding Oracle Benchmark
AI 摘要
AMIGO是一个多图像推理基准,用于评估智能体在视觉推理和交互方面的能力。
主要贡献
- 提出了AMIGO基准,用于评估agent在多图像环境下的grounding能力
- 设计了长时程交互协议,强调不确定性下的问题选择和约束跟踪
- 支持可控的oracle噪声,用于测试模型的鲁棒性和验证行为
方法论
构建一个模拟环境,智能体通过提问(是/否/不确定)来识别隐藏的目标图像,并采用严格的协议来评估智能体的性能。
原文摘要
Agentic vision-language models increasingly act through extended interactions, but most evaluations still focus on single-image, single-turn correctness. We introduce AMIGO (Agentic Multi-Image Grounding Oracle Benchmark), a long-horizon benchmark for hidden-target identification over galleries of visually similar images. In AMIGO, the oracle privately selects a target image, and the model must recover it by asking a sequence of attribute-focused Yes/No/Unsure questions under a strict protocol that penalizes invalid actions with Skip. This setting stresses (i) question selection under uncertainty, (ii) consistent constraint tracking across turns, and (iii) fine-grained discrimination as evidence accumulates. AMIGO also supports controlled oracle imperfections to probe robustness and verification behavior under inconsistent feedback. We instantiate AMIGO with Guess My Preferred Dress task and report metrics covering both outcomes and interaction quality, including identification success, evidence verification, efficiency, protocol compliance, noise tolerance, and trajectory-level diagnostics.