Publication | Closed Access
DeepPhase
119
Citations
41
References
2022
Year
EngineeringMachine LearningHuman Pose EstimationNon-linear PeriodicityCharacter Motion SynthesisKinesiologyData ScienceMotion CapturePattern RecognitionBody MovementsRobot LearningHealth SciencesDanceMotion SynthesisDeep LearningComputer VisionHuman MovementActivity RecognitionMotion Analysis
Learning the spatial-temporal structure of body movements is a fundamental problem for character motion synthesis. In this work, we propose a novel neural network architecture called the Periodic Autoencoder that can learn periodic features from large unstructured motion datasets in an unsupervised manner. The character movements are decomposed into multiple latent channels that capture the non-linear periodicity of different body segments while progressing forward in time. Our method extracts a multi-dimensional phase space from full-body motion data, which effectively clusters animations and produces a manifold in which computed feature distances provide a better similarity measure than in the original motion space to achieve better temporal and spatial alignment. We demonstrate that the learned periodic embedding can significantly help to improve neural motion synthesis in a number of tasks, including diverse locomotion skills, style-based movements, dance motion synthesis from music, synthesis of dribbling motions in football, and motion query for matching poses within large animation databases.
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