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Discovering Relationships between Object Categories via Universal Canonical Maps

About

We tackle the problem of learning the geometry of multiple categories of deformable objects jointly. Recent work has shown that it is possible to learn a unified dense pose predictor for several categories of related objects. However, training such models requires to initialize inter-category correspondences by hand. This is suboptimal and the resulting models fail to maintain correct correspondences as individual categories are learned. In this paper, we show that improved correspondences can be learned automatically as a natural byproduct of learning category-specific dense pose predictors. To do this, we express correspondences between different categories and between images and categories using a unified embedding. Then, we use the latter to enforce two constraints: symmetric inter-category cycle consistency and a new asymmetric image-to-category cycle consistency. Without any manual annotations for the inter-category correspondences, we obtain state-of-the-art alignment results, outperforming dedicated methods for matching 3D shapes. Moreover, the new model is also better at the task of dense pose prediction than prior work.

Natalia Neverova, Artsiom Sanakoyeu, Patrick Labatut, David Novotny, Andrea Vedaldi• 2021

Related benchmarks

TaskDatasetResultRank
Keypoint TransferPASCAL VOC within training animal categories 1.0 (test)
PCK Transfer (Horse)59.2
9
Dense Pose PredictionDensePose-LVIS v0.5 (test)
AP35.1
2
Dense Pose PredictionDensePose-LVIS v1.0 (test)
AP37.4
2
Inter-class Mesh AlignmentDensePose-LVIS v1.0 (test)
GErr20.7
2
Inter-class Mesh AlignmentDensePose-LVIS v0.5 (test)
GErr28
2
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