Efficiently Integrate Large Language Models with Visual Perception: A Survey from the Training Paradigm Perspective
Xiaorui Ma, Haoran Xie, S. Joe Qin

TL;DR
This survey reviews 34 vision-language large models, focusing on training paradigms and parameter efficiency, highlighting recent developments, and providing a comprehensive taxonomy and experimental insights for integrating vision with large language models.
Contribution
It categorizes and analyzes training paradigms for vision-language models, emphasizing parameter efficiency and offering a detailed taxonomy and experimental comparison.
Findings
Three training paradigms identified and compared.
Parameter-efficient methods show promising results.
Direct Adaptation paradigm's effectiveness is empirically validated.
Abstract
The integration of vision-language modalities has been a significant focus in multimodal learning, traditionally relying on Vision-Language Pretrained Models. However, with the advent of Large Language Models (LLMs), there has been a notable shift towards incorporating LLMs with vision modalities. Following this, the training paradigms for incorporating vision modalities into LLMs have evolved. Initially, the approach was to integrate the modalities through pretraining the modality integrator, named Single-stage Tuning. It has since branched out into methods focusing on performance enhancement, denoted as Two-stage Tuning, and those prioritizing parameter efficiency, referred to as Direct Adaptation. However, existing surveys primarily address the latest Vision Large Language Models (VLLMs) with Two-stage Tuning, leaving a gap in understanding the evolution of training paradigms and…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Topic Modeling · Domain Adaptation and Few-Shot Learning
MethodsFocus
