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Synthesis of Compositional Animations from Textual Descriptions

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"How can we animate 3D-characters from a movie script or move robots by simply telling them what we would like them to do?" "How unstructured and complex can we make a sentence and still generate plausible movements from it?" These are questions that need to be answered in the long-run, as the field is still in its infancy. Inspired by these problems, we present a new technique for generating compositional actions, which handles complex input sentences. Our output is a 3D pose sequence depicting the actions in the input sentence. We propose a hierarchical two-stream sequential model to explore a finer joint-level mapping between natural language sentences and 3D pose sequences corresponding to the given motion. We learn two manifold representations of the motion -- one each for the upper body and the lower body movements. Our model can generate plausible pose sequences for short sentences describing single actions as well as long compositional sentences describing multiple sequential and superimposed actions. We evaluate our proposed model on the publicly available KIT Motion-Language Dataset containing 3D pose data with human-annotated sentences. Experimental results show that our model advances the state-of-the-art on text-based motion synthesis in objective evaluations by a margin of 50%. Qualitative evaluations based on a user study indicate that our synthesized motions are perceived to be the closest to the ground-truth motion captures for both short and compositional sentences.

Anindita Ghosh, Noshaba Cheema, Cennet Oguz, Christian Theobalt, Philipp Slusallek• 2021

Related benchmarks

TaskDatasetResultRank
Text-to-motion generationHumanML3D (test)
FID6.523
331
text-to-motion mappingKIT-ML (test)
R Precision (Top 3)0.531
275
text-to-motion mappingHumanML3D (test)
FID6.523
243
Text-conditional motion synthesisHumanML3D 12 (test)
R-Precision Top-130.1
15
Text-conditional motion synthesisHumanML3D 16 (test)
R-Precision Top-10.301
15
Text-to-motion generationKIT (test)
R-Precision Top-125.5
14
Text-to-Motion SynthesisKIT-ML
R Precision Top 125.5
10
Text-to-motionKIT Motion-Language 43 (test)
APE (Positional) - Root Joint1.291
4
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