CVAISep 12, 2025

Towards Understanding Visual Grounding in Visual Language Models

arXiv:2509.10345v27 citationsh-index: 6
AI Analysis

It synthesizes existing knowledge on visual grounding for researchers in multimodal AI, but is incremental as a survey.

This survey paper reviews research on visual grounding in vision-language models, outlining its importance, core components, applications, and challenges, without presenting new experimental results.

Visual grounding refers to the ability of a model to identify a region within some visual input that matches a textual description. Consequently, a model equipped with visual grounding capabilities can target a wide range of applications in various domains, including referring expression comprehension, answering questions pertinent to fine-grained details in images or videos, caption visual context by explicitly referring to entities, as well as low and high-level control in simulated and real environments. In this survey paper, we review representative works across the key areas of research on modern general-purpose vision language models (VLMs). We first outline the importance of grounding in VLMs, then delineate the core components of the contemporary paradigm for developing grounded models, and examine their practical applications, including benchmarks and evaluation metrics for grounded multimodal generation. We also discuss the multifaceted interrelations among visual grounding, multimodal chain-of-thought, and reasoning in VLMs. Finally, we analyse the challenges inherent to visual grounding and suggest promising directions for future research.

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