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ORCA: An Agentic Reasoning Framework for Hallucination and Adversarial Robustness in Vision-Language Models

About

Large Vision-Language Models (LVLMs) exhibit strong multimodal capabilities but remain vulnerable to hallucinations from intrinsic errors and adversarial attacks from external exploitations, limiting their reliability in real-world applications. We present ORCA, an agentic reasoning framework that improves the factual accuracy and adversarial robustness of pretrained LVLMs through inference-time structured inference reasoning with a suite of small vision models (less than 3B parameters). ORCA operates via an Observe-Reason-Critique-Act loop, querying multiple visual tools with evidential questions, validating cross-model inconsistencies, and refining predictions iteratively without access to model internals or retraining. ORCA also stores intermediate reasoning traces, which supports auditable decision-making. Though designed primarily to mitigate object-level hallucinations, ORCA also exhibits emergent adversarial robustness without requiring adversarial training or defense mechanisms. We evaluate ORCA across three settings: (1) clean images on hallucination benchmarks, (2) adversarially perturbed images without defense, and (3) adversarially perturbed images with defense applied. On the POPE hallucination benchmark, ORCA improves standalone LVLMs performance by +3.64% to +40.67% across different subsets. Under adversarial perturbations on POPE, ORCA achieves an average accuracy gain of +20.11% across LVLMs. When combined with defense techniques on adversarially perturbed AMBER images, ORCA further improves standalone LVLM performance, with gains ranging from +1.20% to +48.00% across metrics. These results demonstrate that ORCA offers a promising path toward building more reliable and robust multimodal systems.

Chung-En Johnny Yu, Brian Jalaian, Nathaniel D. Bastian• 2025

Related benchmarks

TaskDatasetResultRank
Object HallucinationPOPE Popular
F1 Score93.01
372
Object HallucinationPOPE (Random)
F1 Score84.44
324
Hallucination EvaluationAMBER
CHAIR18.8
222
Object Hallucination EvaluationPOPE (Random)
Accuracy88.67
152
Object Hallucination EvaluationPOPE Concurrence
Accuracy92.33
18
Hallucination EvaluationAMBER Generative Subset benign setting
CHAIR Score3.2
6
Hallucination EvaluationAMBER AttackVLM (adversarially perturbed)
CHAIR20.7
6
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