Text Modality
Text modality research explores how textual information can be effectively integrated with other data modalities (e.g., images, audio, video) to improve the performance and capabilities of AI models. Current research focuses on developing multimodal models using transformer architectures and diffusion models, often incorporating techniques like prompt tuning and meta-learning to enhance controllability and generalization. This work is significant because it enables more sophisticated AI systems capable of understanding and generating complex information across various data types, with applications ranging from improved medical diagnosis to more realistic virtual environments.
Papers
Text Embedding is Not All You Need: Attention Control for Text-to-Image Semantic Alignment with Text Self-Attention Maps
Jeeyung Kim, Erfan Esmaeili, Qiang Qiu
Looking Beyond Text: Reducing Language bias in Large Vision-Language Models via Multimodal Dual-Attention and Soft-Image Guidance
Haozhe Zhao, Shuzheng Si, Liang Chen, Yichi Zhang, Maosong Sun, Mingjia Zhang, Baobao Chang