MVAnimate:利用多视角优化增强角色动画 / MVAnimate: Enhancing Character Animation with Multi-View Optimization
1️⃣ 一句话总结
这篇论文提出了一种名为MVAnimate的新框架,它通过整合2D和3D的多视角先验信息,有效提升了角色动画视频的生成质量,解决了现有方法输出质量低和训练数据不足的问题。
The demand for realistic and versatile character animation has surged, driven by its wide-ranging applications in various domains. However, the animation generation algorithms modeling human pose with 2D or 3D structures all face various problems, including low-quality output content and training data deficiency, preventing the related algorithms from generating high-quality animation videos. Therefore, we introduce MVAnimate, a novel framework that synthesizes both 2D and 3D information of dynamic figures based on multi-view prior information, to enhance the generated video quality. Our approach leverages multi-view prior information to produce temporally consistent and spatially coherent animation outputs, demonstrating improvements over existing animation methods. Our MVAnimate also optimizes the multi-view videos of the target character, enhancing the video quality from different views. Experimental results on diverse datasets highlight the robustness of our method in handling various motion patterns and appearances.
MVAnimate:利用多视角优化增强角色动画 / MVAnimate: Enhancing Character Animation with Multi-View Optimization
这篇论文提出了一种名为MVAnimate的新框架,它通过整合2D和3D的多视角先验信息,有效提升了角色动画视频的生成质量,解决了现有方法输出质量低和训练数据不足的问题。
源自 arXiv: 2602.08753