TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/3D Multi-bodies: Fitting Sets of Plausible 3D Human Models...

3D Multi-bodies: Fitting Sets of Plausible 3D Human Models to Ambiguous Image Data

Benjamin Biggs, Sébastien Ehrhadt, Hanbyul Joo, Benjamin Graham, Andrea Vedaldi, David Novotny

2020-11-02NeurIPS 2020 12Multi-Hypotheses 3D Human Pose Estimation3D Reconstruction
PaperPDF

Abstract

We consider the problem of obtaining dense 3D reconstructions of humans from single and partially occluded views. In such cases, the visual evidence is usually insufficient to identify a 3D reconstruction uniquely, so we aim at recovering several plausible reconstructions compatible with the input data. We suggest that ambiguities can be modelled more effectively by parametrizing the possible body shapes and poses via a suitable 3D model, such as SMPL for humans. We propose to learn a multi-hypothesis neural network regressor using a best-of-M loss, where each of the M hypotheses is constrained to lie on a manifold of plausible human poses by means of a generative model. We show that our method outperforms alternative approaches in ambiguous pose recovery on standard benchmarks for 3D humans, and in heavily occluded versions of these benchmarks.

Results

TaskDatasetMetricValueModel
3D Human Pose EstimationAH36MBest-Hypothesis MPJPE (n = 25)903D Multi-bodies
3D Human Pose EstimationAH36MBest-Hypothesis PMPJPE (n = 25)64.23D Multi-bodies
3D Human Pose EstimationAH36MH36M PMPJPE (n = 1)41.63D Multi-bodies
3D Human Pose EstimationAH36MH36M PMPJPE (n = 25)42.23D Multi-bodies
3D Human Pose EstimationAH36MMost-Likely Hypothesis PMPJPE (n = 1)67.83D Multi-bodies
3D Human Pose EstimationAH36MBest-Hypothesis MPJPE (n = 25)109.7SMPL-CVAE
3D Human Pose EstimationAH36MBest-Hypothesis PMPJPE (n = 25)75.1SMPL-CVAE
3D Human Pose EstimationAH36MH36M PMPJPE (n = 1)46.7SMPL-CVAE
3D Human Pose EstimationAH36MH36M PMPJPE (n = 25)46.2SMPL-CVAE
3D Human Pose EstimationAH36MMost-Likely Hypothesis PMPJPE (n = 1)76.5SMPL-CVAE
Pose EstimationAH36MBest-Hypothesis MPJPE (n = 25)903D Multi-bodies
Pose EstimationAH36MBest-Hypothesis PMPJPE (n = 25)64.23D Multi-bodies
Pose EstimationAH36MH36M PMPJPE (n = 1)41.63D Multi-bodies
Pose EstimationAH36MH36M PMPJPE (n = 25)42.23D Multi-bodies
Pose EstimationAH36MMost-Likely Hypothesis PMPJPE (n = 1)67.83D Multi-bodies
Pose EstimationAH36MBest-Hypothesis MPJPE (n = 25)109.7SMPL-CVAE
Pose EstimationAH36MBest-Hypothesis PMPJPE (n = 25)75.1SMPL-CVAE
Pose EstimationAH36MH36M PMPJPE (n = 1)46.7SMPL-CVAE
Pose EstimationAH36MH36M PMPJPE (n = 25)46.2SMPL-CVAE
Pose EstimationAH36MMost-Likely Hypothesis PMPJPE (n = 1)76.5SMPL-CVAE
3DAH36MBest-Hypothesis MPJPE (n = 25)903D Multi-bodies
3DAH36MBest-Hypothesis PMPJPE (n = 25)64.23D Multi-bodies
3DAH36MH36M PMPJPE (n = 1)41.63D Multi-bodies
3DAH36MH36M PMPJPE (n = 25)42.23D Multi-bodies
3DAH36MMost-Likely Hypothesis PMPJPE (n = 1)67.83D Multi-bodies
3DAH36MBest-Hypothesis MPJPE (n = 25)109.7SMPL-CVAE
3DAH36MBest-Hypothesis PMPJPE (n = 25)75.1SMPL-CVAE
3DAH36MH36M PMPJPE (n = 1)46.7SMPL-CVAE
3DAH36MH36M PMPJPE (n = 25)46.2SMPL-CVAE
3DAH36MMost-Likely Hypothesis PMPJPE (n = 1)76.5SMPL-CVAE
1 Image, 2*2 StitchiAH36MBest-Hypothesis MPJPE (n = 25)903D Multi-bodies
1 Image, 2*2 StitchiAH36MBest-Hypothesis PMPJPE (n = 25)64.23D Multi-bodies
1 Image, 2*2 StitchiAH36MH36M PMPJPE (n = 1)41.63D Multi-bodies
1 Image, 2*2 StitchiAH36MH36M PMPJPE (n = 25)42.23D Multi-bodies
1 Image, 2*2 StitchiAH36MMost-Likely Hypothesis PMPJPE (n = 1)67.83D Multi-bodies
1 Image, 2*2 StitchiAH36MBest-Hypothesis MPJPE (n = 25)109.7SMPL-CVAE
1 Image, 2*2 StitchiAH36MBest-Hypothesis PMPJPE (n = 25)75.1SMPL-CVAE
1 Image, 2*2 StitchiAH36MH36M PMPJPE (n = 1)46.7SMPL-CVAE
1 Image, 2*2 StitchiAH36MH36M PMPJPE (n = 25)46.2SMPL-CVAE
1 Image, 2*2 StitchiAH36MMost-Likely Hypothesis PMPJPE (n = 1)76.5SMPL-CVAE

Related Papers

AutoPartGen: Autogressive 3D Part Generation and Discovery2025-07-17SpatialTrackerV2: 3D Point Tracking Made Easy2025-07-16BRUM: Robust 3D Vehicle Reconstruction from 360 Sparse Images2025-07-16Towards Depth Foundation Model: Recent Trends in Vision-Based Depth Estimation2025-07-15Binomial Self-Compensation: Mechanism and Suppression of Motion Error in Phase-Shifting Profilometry2025-07-14An Efficient Approach for Muscle Segmentation and 3D Reconstruction Using Keypoint Tracking in MRI Scan2025-07-11Review of Feed-forward 3D Reconstruction: From DUSt3R to VGGT2025-07-11DreamGrasp: Zero-Shot 3D Multi-Object Reconstruction from Partial-View Images for Robotic Manipulation2025-07-08