TL;DR
This paper introduces a robust adversarial recurrent neural network-based method for generating high-quality 3D motion transitions from sparse keyframes, improving animation workflows.
Contribution
It proposes two novel additive embedding modifiers to enhance transition robustness and length variability, along with new benchmarks and a motion capture dataset for evaluation.
Findings
Effective transition generation with high quality
Robustness to target distortions demonstrated
Generalization to longer time horizons achieved
Abstract
In this work we present a novel, robust transition generation technique that can serve as a new tool for 3D animators, based on adversarial recurrent neural networks. The system synthesizes high-quality motions that use temporally-sparse keyframes as animation constraints. This is reminiscent of the job of in-betweening in traditional animation pipelines, in which an animator draws motion frames between provided keyframes. We first show that a state-of-the-art motion prediction model cannot be easily converted into a robust transition generator when only adding conditioning information about future keyframes. To solve this problem, we then propose two novel additive embedding modifiers that are applied at each timestep to latent representations encoded inside the network's architecture. One modifier is a time-to-arrival embedding that allows variations of the transition length with a…
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