Motion Generation
Motion generation research focuses on creating realistic and controllable movement sequences from various inputs, such as text, audio, or video, primarily aiming to improve the realism, efficiency, and controllability of generated motions. Current research heavily utilizes diffusion models, transformers, and variational autoencoders, often incorporating techniques like latent space manipulation, attention mechanisms, and reinforcement learning to achieve fine-grained control and handle diverse modalities. This field is significant for its applications in animation, robotics, virtual reality, and autonomous driving, offering the potential to create more immersive and interactive experiences and improve human-robot collaboration.
Papers
July 17, 2022
June 9, 2022
May 17, 2022
May 5, 2022
March 25, 2022
March 20, 2022
March 16, 2022