Implicit field supervision for robust non-rigid shape matching
Establishing a correspondence between two non-rigidly deforming shapes is one of the most fundamental problems in visual computing. Existing methods often show weak resilience when presented with challenges innate to real-world data such as noise, outliers, self-occlusion etc. On the other hand, aut...
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Zusammenfassung: | Establishing a correspondence between two non-rigidly deforming shapes is one
of the most fundamental problems in visual computing. Existing methods often
show weak resilience when presented with challenges innate to real-world data
such as noise, outliers, self-occlusion etc. On the other hand, auto-decoders
have demonstrated strong expressive power in learning geometrically meaningful
latent embeddings. However, their use in \emph{shape analysis} has been
limited. In this paper, we introduce an approach based on an auto-decoder
framework, that learns a continuous shape-wise deformation field over a fixed
template. By supervising the deformation field for points on-surface and
regularising for points off-surface through a novel \emph{Signed Distance
Regularisation} (SDR), we learn an alignment between the template and shape
\emph{volumes}. Trained on clean water-tight meshes, \emph{without} any
data-augmentation, we demonstrate compelling performance on compromised data
and real-world scans. |
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DOI: | 10.48550/arxiv.2203.07694 |