CVMar 20, 2025

REVAL: A Comprehension Evaluation on Reliability and Values of Large Vision-Language Models

arXiv:2503.16566v13 citationsh-index: 20Has Code
Originality Incremental advance
AI Analysis

This addresses the need for holistic evaluation of LVLMs for researchers and developers, though it is incremental as it builds on existing benchmarks by expanding scope.

The paper tackles the lack of comprehensive evaluation frameworks for Large Vision-Language Models (LVLMs) by introducing REVAL, a benchmark with over 144K samples to assess reliability and values, revealing that current models excel in perceptual tasks but have significant vulnerabilities in adversarial scenarios, privacy, and ethics.

The rapid evolution of Large Vision-Language Models (LVLMs) has highlighted the necessity for comprehensive evaluation frameworks that assess these models across diverse dimensions. While existing benchmarks focus on specific aspects such as perceptual abilities, cognitive capabilities, and safety against adversarial attacks, they often lack the breadth and depth required to provide a holistic understanding of LVLMs' strengths and limitations. To address this gap, we introduce REVAL, a comprehensive benchmark designed to evaluate the \textbf{RE}liability and \textbf{VAL}ue of LVLMs. REVAL encompasses over 144K image-text Visual Question Answering (VQA) samples, structured into two primary sections: Reliability, which assesses truthfulness (\eg, perceptual accuracy and hallucination tendencies) and robustness (\eg, resilience to adversarial attacks, typographic attacks, and image corruption), and Values, which evaluates ethical concerns (\eg, bias and moral understanding), safety issues (\eg, toxicity and jailbreak vulnerabilities), and privacy problems (\eg, privacy awareness and privacy leakage). We evaluate 26 models, including mainstream open-source LVLMs and prominent closed-source models like GPT-4o and Gemini-1.5-Pro. Our findings reveal that while current LVLMs excel in perceptual tasks and toxicity avoidance, they exhibit significant vulnerabilities in adversarial scenarios, privacy preservation, and ethical reasoning. These insights underscore critical areas for future improvements, guiding the development of more secure, reliable, and ethically aligned LVLMs. REVAL provides a robust framework for researchers to systematically assess and compare LVLMs, fostering advancements in the field.

Foundations

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