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3 months ago

MotionMixer: MLP-based 3D Human Body Pose Forecasting

Arij Bouazizi Adrian Holzbock Ulrich Kressel Klaus Dietmayer Vasileios Belagiannis

MotionMixer: MLP-based 3D Human Body Pose Forecasting

Abstract

In this work, we present MotionMixer, an efficient 3D human body pose forecasting model based solely on multi-layer perceptrons (MLPs). MotionMixer learns the spatial-temporal 3D body pose dependencies by sequentially mixing both modalities. Given a stacked sequence of 3D body poses, a spatial-MLP extracts fine grained spatial dependencies of the body joints. The interaction of the body joints over time is then modelled by a temporal MLP. The spatial-temporal mixed features are finally aggregated and decoded to obtain the future motion. To calibrate the influence of each time step in the pose sequence, we make use of squeeze-and-excitation (SE) blocks. We evaluate our approach on Human3.6M, AMASS, and 3DPW datasets using the standard evaluation protocols. For all evaluations, we demonstrate state-of-the-art performance, while having a model with a smaller number of parameters. Our code is available at: https://github.com/MotionMLP/MotionMixer

Code Repositories

motionmlp/motionmixer
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
human-pose-forecasting-on-human36mMotionMixer
Average MPJPE (mm) @ 1000 ms: 111.0
Average MPJPE (mm) @ 400ms: 59.3
MAR, walking, 1,000ms: 0.73
MAR, walking, 400ms: 0.58

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