Dynamic Surface Function Networks for Clothed Human Bodies
We present a novel method for temporal coherent reconstruction and tracking of clothed humans. Given a monocular RGB-D sequence, we learn a person-specific body model which is based on a dynamic surface function network. To this end, we explicitly model the surface of the person using a multi-layer...
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Zusammenfassung: | We present a novel method for temporal coherent reconstruction and tracking
of clothed humans. Given a monocular RGB-D sequence, we learn a person-specific
body model which is based on a dynamic surface function network. To this end,
we explicitly model the surface of the person using a multi-layer perceptron
(MLP) which is embedded into the canonical space of the SMPL body model. With
classical forward rendering, the represented surface can be rasterized using
the topology of a template mesh. For each surface point of the template mesh,
the MLP is evaluated to predict the actual surface location. To handle
pose-dependent deformations, the MLP is conditioned on the SMPL pose
parameters. We show that this surface representation as well as the pose
parameters can be learned in a self-supervised fashion using the principle of
analysis-by-synthesis and differentiable rasterization. As a result, we are
able to reconstruct a temporally coherent mesh sequence from the input data.
The underlying surface representation can be used to synthesize new animations
of the reconstructed person including pose-dependent deformations. |
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DOI: | 10.48550/arxiv.2104.03978 |