Audio Driven
Audio-driven research focuses on understanding and generating audio signals, often in conjunction with other modalities like text and video. Current efforts concentrate on developing robust models for tasks such as audio-visual representation learning, talking head synthesis (using diffusion models and autoencoders), and audio-to-text/text-to-audio generation (leveraging large language models and neural codecs). These advancements have significant implications for various fields, including film-making, virtual reality, assistive technologies, and multimedia forensics, by enabling more realistic and interactive audio-visual experiences and improving analysis of audio-visual data.
Papers
Unsupervised Welding Defect Detection Using Audio And Video
Georg Stemmer, Jose A. Lopez, Juan A. Del Hoyo Ontiveros, Arvind Raju, Tara Thimmanaik, Sovan Biswas
CyberHost: Taming Audio-driven Avatar Diffusion Model with Region Codebook Attention
Gaojie Lin, Jianwen Jiang, Chao Liang, Tianyun Zhong, Jiaqi Yang, Yanbo Zheng