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Probabilistic Character Motion Synthesis using a Hierarchical Deep Latent Variable Model

Saeed Ghorbani, C. Wloka, Ali Etemad, Marcus A. Brubaker, Nikolaus F. Troje

2020Computer Graphics Forum24 citationsDOIOpen Access PDF

Abstract

Abstract We present a probabilistic framework to generate character animations based on weak control signals, such that the synthesized motions are realistic while retaining the stochastic nature of human movement. The proposed architecture, which is designed as a hierarchical recurrent model, maps each sub‐sequence of motions into a stochastic latent code using a variational autoencoder extended over the temporal domain. We also propose an objective function which respects the impact of each joint on the pose and compares the joint angles based on angular distance. We use two novel quantitative protocols and human qualitative assessment to demonstrate the ability of our model to generate convincing and diverse periodic and non‐periodic motion sequences without the need for strong control signals.

Topics & Concepts

Computer scienceCharacter (mathematics)Artificial intelligenceLatent variableLatent variable modelProbabilistic logicVariable (mathematics)Hierarchical database modelComputer graphics (images)Data miningMathematicsGeometryMathematical analysisHuman Motion and AnimationHuman Pose and Action RecognitionVideo Analysis and Summarization
Probabilistic Character Motion Synthesis using a Hierarchical Deep Latent Variable Model | Litcius