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3 months ago

Motion Inbetweening via Deep $Δ$-Interpolator

Boris N. Oreshkin Antonios Valkanas Félix G. Harvey Louis-Simon Ménard Florent Bocquelet Mark J. Coates

Motion Inbetweening via Deep $Δ$-Interpolator

Abstract

We show that the task of synthesizing human motion conditioned on a set of key frames can be solved more accurately and effectively if a deep learning based interpolator operates in the delta mode using the spherical linear interpolator as a baseline. We empirically demonstrate the strength of our approach on publicly available datasets achieving state-of-the-art performance. We further generalize these results by showing that the $Δ$-regime is viable with respect to the reference of the last known frame (also known as the zero-velocity model). This supports the more general conclusion that operating in the reference frame local to input frames is more accurate and robust than in the global (world) reference frame advocated in previous work. Our code is publicly available at https://github.com/boreshkinai/delta-interpolator.

Code Repositories

Benchmarks

BenchmarkMethodologyMetrics
motion-synthesis-on-lafan1$Delta$-interpolator
L2P@15: 0.47
L2P@30: 1.00
L2P@5: 0.13
L2Q@15: 0.32
L2Q@30: 0.57
L2Q@5: 0.11
NPSS@15: 0.0217
NPSS@30: 0.1217
NPSS@5: 0.0014

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Motion Inbetweening via Deep $Δ$-Interpolator | Papers | HyperAI