Multi Modal Large Language Model
Multi-modal large language models (MLLMs) integrate visual and textual information to perform complex tasks, aiming to bridge the gap between human-like understanding and machine intelligence. Current research emphasizes improving the consistency and fairness of MLLMs, exploring efficient fusion mechanisms (like early fusion and Mixture-of-Experts architectures), and developing benchmarks to evaluate their performance across diverse tasks, including medical image analysis and autonomous driving. This rapidly evolving field holds significant potential for advancing various applications, from healthcare diagnostics to robotics, by enabling more robust and reliable AI systems capable of handling real-world complexities.
Papers
ChartX & ChartVLM: A Versatile Benchmark and Foundation Model for Complicated Chart Reasoning
Renqiu Xia, Bo Zhang, Hancheng Ye, Xiangchao Yan, Qi Liu, Hongbin Zhou, Zijun Chen, Min Dou, Botian Shi, Junchi Yan, Yu Qiao
Model Tailor: Mitigating Catastrophic Forgetting in Multi-modal Large Language Models
Didi Zhu, Zhongyi Sun, Zexi Li, Tao Shen, Ke Yan, Shouhong Ding, Kun Kuang, Chao Wu
Multi-modal Preference Alignment Remedies Degradation of Visual Instruction Tuning on Language Models
Shengzhi Li, Rongyu Lin, Shichao Pei
RAG-Driver: Generalisable Driving Explanations with Retrieval-Augmented In-Context Learning in Multi-Modal Large Language Model
Jianhao Yuan, Shuyang Sun, Daniel Omeiza, Bo Zhao, Paul Newman, Lars Kunze, Matthew Gadd