Guardado en:
Detalles Bibliográficos
Autores principales: Agrawal, Vasu, Akinyemi, Akinniyi, Alvero, Kathryn, Behrooz, Morteza, Buffalini, Julia, Carlucci, Fabio Maria, Chen, Joy, Chen, Junming, Chen, Zhang, Cheng, Shiyang, Chowdary, Praveen, Chuang, Joe, D'Avirro, Antony, Daly, Jon, Dong, Ning, Duppenthaler, Mark, Gao, Cynthia, Girard, Jeff, Gleize, Martin, Gomez, Sahir, Gong, Hongyu, Govindarajan, Srivathsan, Han, Brandon, He, Sen, Hernandez, Denise, Hristov, Yordan, Huang, Rongjie, Inaguma, Hirofumi, Jain, Somya, Janardhan, Raj, Jia, Qingyao, Klaiber, Christopher, Kovachev, Dejan, Kumar, Moneish, Li, Hang, Li, Yilei, Litvin, Pavel, Liu, Wei, Ma, Guangyao, Ma, Jing, Ma, Martin, Ma, Xutai, Mantovani, Lucas, Miglani, Sagar, Mohan, Sreyas, Morency, Louis-Philippe, Ng, Evonne, Ng, Kam-Woh, Nguyen, Tu Anh, Oberai, Amia, Peloquin, Benjamin, Pino, Juan, Popovic, Jovan, Poursaeed, Omid, Prada, Fabian, Rakotoarison, Alice, Ranjan, Rakesh, Richard, Alexander, Ropers, Christophe, Saleem, Safiyyah, Sharma, Vasu, Shcherbyna, Alex, Shen, Jia, Shen, Jie, Stathopoulos, Anastasis, Sun, Anna, Tomasello, Paden, Tran, Tuan, Turkatenko, Arina, Wan, Bo, Wang, Chao, Wang, Jeff, Williamson, Mary, Wood, Carleigh, Xiang, Tao, Yang, Yilin, Yao, Julien, Zhang, Chen, Zhang, Jiemin, Zhang, Xinyue, Zheng, Jason, Zhyzheria, Pavlo, Zikes, Jan, Zollhoefer, Michael
Formato: Preprint
Publicado: 2025
Materias:
Acceso en línea:https://arxiv.org/abs/2506.22554
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
Tabla de Contenidos:
  • Human communication involves a complex interplay of verbal and nonverbal signals, essential for conveying meaning and achieving interpersonal goals. To develop socially intelligent AI technologies, it is crucial to develop models that can both comprehend and generate dyadic behavioral dynamics. To this end, we introduce the Seamless Interaction Dataset, a large-scale collection of over 4,000 hours of face-to-face interaction footage from over 4,000 participants in diverse contexts. This dataset enables the development of AI technologies that understand dyadic embodied dynamics, unlocking breakthroughs in virtual agents, telepresence experiences, and multimodal content analysis tools. We also develop a suite of models that utilize the dataset to generate dyadic motion gestures and facial expressions aligned with human speech. These models can take as input both the speech and visual behavior of their interlocutors. We present a variant with speech from an LLM model and integrations with 2D and 3D rendering methods, bringing us closer to interactive virtual agents. Additionally, we describe controllable variants of our motion models that can adapt emotional responses and expressivity levels, as well as generating more semantically-relevant gestures. Finally, we discuss methods for assessing the quality of these dyadic motion models, which are demonstrating the potential for more intuitive and responsive human-AI interactions.