Bilevel Online Adaptation for Out-of-Domain Human Mesh Reconstruction

2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, CVPR 2021(2021)

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摘要
This paper considers a new problem of adapting a pretrained model of human mesh reconstruction to out-of-domain streaming videos. However, most previous methods based on the parametric SMPL model [36] underperform in new domains with unexpected, domain-specific attributes, such as camera parameters, lengths of bones, backgrounds, and occlusions. Our general idea is to dynamically fine-tune the source model on test video streams with additional temporal constraints, such that it can mitigate the domain gaps without over-fitting the 2D information of individual test frames. A subsequent challenge is how to avoid conflicts between the 2D and temporal constraints. We propose to tackle this problem using a new training algorithm named Bilevel Online Adaptation (BOA), which divides the optimization process of overall multi-objective into two steps of weight probe and weight update in a training iteration. We demonstrate that BOA leads to state-of-the-art results on two human mesh reconstruction benchmarks 1 .
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关键词
Bilevel Online Adaptation,out-of-domain human mesh reconstruction,pretrained model,out-of-domain streaming videos,parametric SMPL model,unexpected domain-specific attributes,camera parameters,source model,test video streams,additional temporal constraints,domain gaps,individual test frames,human mesh reconstruction benchmarks
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