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3 months ago

A Probabilistic Attention Model with Occlusion-aware Texture Regression for 3D Hand Reconstruction from a Single RGB Image

Zheheng Jiang Hossein Rahmani Sue Black Bryan M. Williams

A Probabilistic Attention Model with Occlusion-aware Texture Regression for 3D Hand Reconstruction from a Single RGB Image

Abstract

Recently, deep learning based approaches have shown promising results in 3D hand reconstruction from a single RGB image. These approaches can be roughly divided into model-based approaches, which are heavily dependent on the model's parameter space, and model-free approaches, which require large numbers of 3D ground truths to reduce depth ambiguity and struggle in weakly-supervised scenarios. To overcome these issues, we propose a novel probabilistic model to achieve the robustness of model-based approaches and reduced dependence on the model's parameter space of model-free approaches. The proposed probabilistic model incorporates a model-based network as a prior-net to estimate the prior probability distribution of joints and vertices. An Attention-based Mesh Vertices Uncertainty Regression (AMVUR) model is proposed to capture dependencies among vertices and the correlation between joints and mesh vertices to improve their feature representation. We further propose a learning based occlusion-aware Hand Texture Regression model to achieve high-fidelity texture reconstruction. We demonstrate the flexibility of the proposed probabilistic model to be trained in both supervised and weakly-supervised scenarios. The experimental results demonstrate our probabilistic model's state-of-the-art accuracy in 3D hand and texture reconstruction from a single image in both training schemes, including in the presence of severe occlusions.

Code Repositories

Benchmarks

BenchmarkMethodologyMetrics
3d-hand-pose-estimation-on-freihandAMVUR
PA-F@15mm: 0.987
PA-F@5mm: 0.767
PA-MPJPE: 6.2
PA-MPVPE: 6.1
3d-hand-pose-estimation-on-ho-3dAMVUR
AUC_J: 0.835
AUC_V: 0.836
F@15mm: 0.965
F@5mm: 0.608
PA-MPJPE (mm): 8.3
PA-MPVPE: 8.2
3d-hand-pose-estimation-on-ho-3d-v3AMVUR
AUC_J: 0.826
AUC_V: 0.834
F@15mm: 0.964
F@5mm: 0.593
PA-MPJPE: 8.7
PA-MPVPE: 8.3

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A Probabilistic Attention Model with Occlusion-aware Texture Regression for 3D Hand Reconstruction from a Single RGB Image | Papers | HyperAI