GenMotion: Data-driven Motion Generators for Real-time Animation Synthesis
Abstract
With the recent success of deep learning algorithms, many researchers have focused on generative models for human motion animation. However, the research community lacks a platform for training and benchmarking various algorithms, and the animation industry needs a toolkit for implementing advanced motion synthesizing techniques. To facilitate the study of deep motion synthesis methods for skeleton-based human animation and their potential applications in practical animation making, we introduce : a library that provides unified pipelines for data loading, model training, and animation sampling with various deep learning algorithms. Besides, by combining Python coding in the animation software \ can assist animators in creating real-time 3D character animation. Source code is available at https://github.com/realvcla/GenMotion/.
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