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H+O: Unified Egocentric Recognition of 3D Hand-Object Poses and Interactions

About

We present a unified framework for understanding 3D hand and object interactions in raw image sequences from egocentric RGB cameras. Given a single RGB image, our model jointly estimates the 3D hand and object poses, models their interactions, and recognizes the object and action classes with a single feed-forward pass through a neural network. We propose a single architecture that does not rely on external detection algorithms but rather is trained end-to-end on single images. We further merge and propagate information in the temporal domain to infer interactions between hand and object trajectories and recognize actions. The complete model takes as input a sequence of frames and outputs per-frame 3D hand and object pose predictions along with the estimates of object and action categories for the entire sequence. We demonstrate state-of-the-art performance of our algorithm even in comparison to the approaches that work on depth data and ground-truth annotations.

Bugra Tekin, Federica Bogo, Marc Pollefeys• 2019

Related benchmarks

TaskDatasetResultRank
Action RecognitionH2O (test)
Accuracy68.88
26
3D Hand Pose EstimationH2O
MPJPE Right38.86
14
3D Hand Pose EstimationH2O (test)
MEPE (Camera Space)38.86
8
3D Hand Pose EstimationH2O (same-domain)
MPJPE40.14
8
Hand Pose EstimationFPHAB (action split)
Hand Error (mm)15.8
6
Action RecognitionFPHA (test)
Accuracy0.8243
6
Interaction RecognitionH2O (val)
Accuracy80.49
6
Interaction RecognitionH2O (test)
Accuracy68.88
6
3D Hand-Object Pose EstimationH2O (test)
Object Error (mm)48.06
5
Action RecognitionFPHA (standard)
Accuracy82.43
5
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