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
Faces that Speak: Jointly Synthesising Talking Face and Speech from Text
Youngjoon Jang, Ji-Hoon Kim, Junseok Ahn, Doyeop Kwak, Hong-Sun Yang, Yoon-Cheol Ju, Il-Hwan Kim, Byeong-Yeol Kim, Joon Son Chung
A Robust Autoencoder Ensemble-Based Approach for Anomaly Detection in Text
Jeremie Pantin, Christophe Marsala
Lumina-T2X: Transforming Text into Any Modality, Resolution, and Duration via Flow-based Large Diffusion Transformers
Peng Gao, Le Zhuo, Dongyang Liu, Ruoyi Du, Xu Luo, Longtian Qiu, Yuhang Zhang, Chen Lin, Rongjie Huang, Shijie Geng, Renrui Zhang, Junlin Xi, Wenqi Shao, Zhengkai Jiang, Tianshuo Yang, Weicai Ye, He Tong, Jingwen He, Yu Qiao, Hongsheng Li
Detecting Statements in Text: A Domain-Agnostic Few-Shot Solution
Sandrine Chausson, Björn Ross
Unveiling Thoughts: A Review of Advancements in EEG Brain Signal Decoding into Text
Saydul Akbar Murad, Nick Rahimi
Text Quality-Based Pruning for Efficient Training of Language Models
Vasu Sharma, Karthik Padthe, Newsha Ardalani, Kushal Tirumala, Russell Howes, Hu Xu, Po-Yao Huang, Shang-Wen Li, Armen Aghajanyan, Gargi Ghosh, Luke Zettlemoyer