CVAug 25, 2020

Dynamic Future Net: Diversified Human Motion Generation

arXiv:2009.05109v124 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of synthesizing realistic human motions for applications in computer graphics and vision, offering an incremental improvement over existing methods.

The paper tackles the challenge of generating diverse human motions by addressing short- and long-term stochasticity, resulting in a model that produces high-quality, varied motions with arbitrary duration from limited data.

Human motion modelling is crucial in many areas such as computer graphics, vision and virtual reality. Acquiring high-quality skeletal motions is difficult due to the need for specialized equipment and laborious manual post-posting, which necessitates maximizing the use of existing data to synthesize new data. However, it is a challenge due to the intrinsic motion stochasticity of human motion dynamics, manifested in the short and long terms. In the short term, there is strong randomness within a couple frames, e.g. one frame followed by multiple possible frames leading to different motion styles; while in the long term, there are non-deterministic action transitions. In this paper, we present Dynamic Future Net, a new deep learning model where we explicitly focuses on the aforementioned motion stochasticity by constructing a generative model with non-trivial modelling capacity in temporal stochasticity. Given limited amounts of data, our model can generate a large number of high-quality motions with arbitrary duration, and visually-convincing variations in both space and time. We evaluate our model on a wide range of motions and compare it with the state-of-the-art methods. Both qualitative and quantitative results show the superiority of our method, for its robustness, versatility and high-quality.

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