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Learning joint reconstruction of hands and manipulated objects

About

Estimating hand-object manipulations is essential for interpreting and imitating human actions. Previous work has made significant progress towards reconstruction of hand poses and object shapes in isolation. Yet, reconstructing hands and objects during manipulation is a more challenging task due to significant occlusions of both the hand and object. While presenting challenges, manipulations may also simplify the problem since the physics of contact restricts the space of valid hand-object configurations. For example, during manipulation, the hand and object should be in contact but not interpenetrate. In this work, we regularize the joint reconstruction of hands and objects with manipulation constraints. We present an end-to-end learnable model that exploits a novel contact loss that favors physically plausible hand-object constellations. Our approach improves grasp quality metrics over baselines, using RGB images as input. To train and evaluate the model, we also propose a new large-scale synthetic dataset, ObMan, with hand-object manipulations. We demonstrate the transferability of ObMan-trained models to real data.

Yana Hasson, G\"ul Varol, Dimitrios Tzionas, Igor Kalevatykh, Michael J. Black, Ivan Laptev, Cordelia Schmid• 2019

Related benchmarks

TaskDatasetResultRank
3D Hand ReconstructionFreiHAND (test)
F@15mm90.8
154
Hand Pose EstimationHO-3D (test)
Joint Error (mm)3.18
53
Hand Mesh ReconstructionHO3D v2 (test)
F@50.464
44
Absolute 3D hand pose estimationFreiHAND (test)
CS-MJE85.2
30
Hand ReconstructionInterHand 2.6M (test)
MPJPE14.21
29
3D Hand ReconstructionFreiHAND
PA MPVPE1.33
25
3D Hand Pose EstimationHO-3D v2
PA-MPJPE (mm)11
25
Hand-Object Pose EstimationHO3D v2 (test)
STMJE11
20
3D Hand-Object InteractionHO3D v2 (test)
PA-MPJPE11
20
3D Hand-Object ReconstructionHO3D v2
MPJPE1.1
16
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