Multimodal Data
Multimodal data analysis focuses on integrating information from diverse sources like text, images, audio, and sensor data to achieve a more comprehensive understanding than any single modality allows. Current research emphasizes developing effective fusion techniques, often employing transformer-based architectures, variational autoencoders, or large language models to combine and interpret these heterogeneous data types for tasks ranging from sentiment analysis and medical image interpretation to financial forecasting and summarization. This field is significant because it enables more robust and accurate models across numerous applications, improving decision-making in areas like healthcare, finance, and environmental monitoring.
Papers
AU Dataset for Visuo-Haptic Object Recognition for Robots
Lasse Emil R. Bonner, Daniel Daugaard Buhl, Kristian Kristensen, Nicolás Navarro-Guerrero
Multimodal Image Synthesis and Editing: The Generative AI Era
Fangneng Zhan, Yingchen Yu, Rongliang Wu, Jiahui Zhang, Shijian Lu, Lingjie Liu, Adam Kortylewski, Christian Theobalt, Eric Xing