Faces in natural images are often occluded by a variety of objects. We propose a fully automated, probabilistic and occlusion-aware 3D morphable face model adaptation framework following an analysis-by-synthesis setup. The key idea is to segment the image into regions explained by separate models. Our framework includes a 3D morphable face model, a prototype-based beard model and a simple model for occlusions and background regions. The segmentation and all the model parameters have to be inferred from the single target image. Face model adaptation and segmentation are solved jointly using an expectation–maximization-like procedure. During the E-step, we update the segmentation and in the M-step the face model parameters are updated. For face model adaptation we apply a stochastic sampling strategy based on the Metropolis–Hastings algorithm. For segmentation, we apply loopy belief propagation for inference in a Markov random field. Illumination estimation is critical for occlusion handling. Our combined segmentation and model adaptation needs a proper initialization of the illumination parameters. We propose a RANSAC-based robust illumination estimation technique. By applying this method to a large face image database we obtain a first empirical distribution of real-world illumination conditions. The obtained empirical distribution is made publicly available and can be used as prior in probabilistic frameworks, for regularization or to synthesize data for deep learning methods.
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Scalismo—a scalable image analysis and shape modelling software framework available as open source under https://github.com/unibas-gravis/scalismo.
Scalismo-faces—famework for shape modeling and model-based image analysis available as Open Source under https://github.com/unibas-gravis/scalismo-faces.
Tutorials on our Probabilistic Morphable Model framework http://gravis.dmi.unibas.ch/PMM/.
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Funding was provided by Schweizerischer Nationalfonds zur Förderung der Wissenschaftlichen Forschung (Grant No. SNF153297).
Communicated by Edwin Hancock, Richard Wilson, Will Smith, Adrian Bors and Nick Pears.
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Egger, B., Schönborn, S., Schneider, A. et al. Occlusion-Aware 3D Morphable Models and an Illumination Prior for Face Image Analysis. Int J Comput Vis 126, 1269–1287 (2018). https://doi.org/10.1007/s11263-018-1064-8
- Face image analysis
- Markov chain Monte Carlo
- Morphable model
- Generative models
- Occlusion-aware model fitting
- Inverse rendering
- Robust illumination estimation
- Illumination prior