Neural Body Fitting: Unifying Deep Learning and Model-Based Human Pose and Shape Estimation

17 Aug 2018  ยท  Mohamed Omran, Christoph Lassner, Gerard Pons-Moll, Peter V. Gehler, Bernt Schiele ยท

Direct prediction of 3D body pose and shape remains a challenge even for highly parameterized deep learning models. Mapping from the 2D image space to the prediction space is difficult: perspective ambiguities make the loss function noisy and training data is scarce. In this paper, we propose a novel approach (Neural Body Fitting (NBF)). It integrates a statistical body model within a CNN, leveraging reliable bottom-up semantic body part segmentation and robust top-down body model constraints. NBF is fully differentiable and can be trained using 2D and 3D annotations. In detailed experiments, we analyze how the components of our model affect performance, especially the use of part segmentations as an explicit intermediate representation, and present a robust, efficiently trainable framework for 3D human pose estimation from 2D images with competitive results on standard benchmarks. Code will be made available at http://github.com/mohomran/neural_body_fitting

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Results from the Paper


 Ranked #1 on Monocular 3D Human Pose Estimation on Human3.6M (Use Video Sequence metric)

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
3D Human Pose Estimation Human3.6M Neural Body Fitting (NBF) PA-MPJPE 59.9 # 104
Monocular 3D Human Pose Estimation Human3.6M Neural Body Fitting (NBF) Use Video Sequence No # 1
Frames Needed 1 # 1
Need Ground Truth 2D Pose No # 1
Monocular 3D Human Pose Estimation Human3.6M Neural Body Fitting (NBF) PA-MPJPE 59.9 # 5
3D Human Pose Estimation HumanEva-I Ours Mean Reconstruction Error (mm) 64 # 26

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