Out-of-Domain Human Mesh Reconstruction via Dynamic Bilevel Online Adaptation

7 Nov 2021  ยท  Shanyan Guan, Jingwei Xu, Michelle Z. He, Yunbo Wang, Bingbing Ni, Xiaokang Yang ยท

We consider a new problem of adapting a human mesh reconstruction model to out-of-domain streaming videos, where performance of existing SMPL-based models are significantly affected by the distribution shift represented by different camera parameters, bone lengths, backgrounds, and occlusions. We tackle this problem through online adaptation, gradually correcting the model bias during testing. There are two main challenges: First, the lack of 3D annotations increases the training difficulty and results in 3D ambiguities. Second, non-stationary data distribution makes it difficult to strike a balance between fitting regular frames and hard samples with severe occlusions or dramatic changes. To this end, we propose the Dynamic Bilevel Online Adaptation algorithm (DynaBOA). It first introduces the temporal constraints to compensate for the unavailable 3D annotations, and leverages a bilevel optimization procedure to address the conflicts between multi-objectives. DynaBOA provides additional 3D guidance by co-training with similar source examples retrieved efficiently despite the distribution shift. Furthermore, it can adaptively adjust the number of optimization steps on individual frames to fully fit hard samples and avoid overfitting regular frames. DynaBOA achieves state-of-the-art results on three out-of-domain human mesh reconstruction benchmarks.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
3D Human Pose Estimation 3DPW DynaBOA (w/ 2D GT) PA-MPJPE 40.4 # 11
MPJPE 65.5 # 10
MPVPE 82 # 18
3D Human Pose Estimation MPI-INF-3DHP DynaBOA AUC 43.1 # 59
MPJPE 101.5 # 69
PA-MPJPE 66.1 # 20
PCK 79.5 # 63
3D Absolute Human Pose Estimation Surreal DynaBOA MPJPE 55.2 # 1
3D Human Pose Estimation Surreal DynaBOA PA-MPJPE 34 # 2
PVE 70.7 # 1

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