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Continuous Surface Embeddings

About

In this work, we focus on the task of learning and representing dense correspondences in deformable object categories. While this problem has been considered before, solutions so far have been rather ad-hoc for specific object types (i.e., humans), often with significant manual work involved. However, scaling the geometry understanding to all objects in nature requires more automated approaches that can also express correspondences between related, but geometrically different objects. To this end, we propose a new, learnable image-based representation of dense correspondences. Our model predicts, for each pixel in a 2D image, an embedding vector of the corresponding vertex in the object mesh, therefore establishing dense correspondences between image pixels and 3D object geometry. We demonstrate that the proposed approach performs on par or better than the state-of-the-art methods for dense pose estimation for humans, while being conceptually simpler. We also collect a new in-the-wild dataset of dense correspondences for animal classes and demonstrate that our framework scales naturally to the new deformable object categories.

Natalia Neverova, David Novotny, Vasil Khalidov, Marc Szafraniec, Patrick Labatut, Andrea Vedaldi• 2020

Related benchmarks

TaskDatasetResultRank
Dense Pose EstimationDensePose-COCO (minival)
AP68
12
Dense Human Pose EstimationDensePose-COCO (test)
AP68
9
2D Dense CorrespondenceSynthetic Dataset (test)
Accuracy (5px)44.52
4
2D Dense CorrespondenceDensePose-COCO (test)
Accuracy (5px)58.1
4
3D Dense CorrespondenceSynthetic Dataset (test)
AP72.8
4
Temporal ConsistencySynthetic Dataset 18,000 frames sequence
PCC (Interval 1)85.55
4
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