advances in face biometrics: towards uncontrolled...
TRANSCRIPT
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Advances in Face Biometrics:
Towards Uncontrolled Scenarios
Prof. Julian Fierrez
http://atvs.ii.uam.es/fierrez/ (Based on the PhD Thesis by Ester Gonzalez-Sosa)
Escuela Politécnica Superior
UNIVERSIDAD AUTONOMA DE MADRID
April 2017
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Face Recognition Scenarios
• From controlled scenarios …..
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Face Recognition Scenarios
• To uncontrolled scenarios
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Face Recognition Scenarios
• To uncontrolled scenarios
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Outline
1. Case Study: ICB-RW 2016
2. Hand-crafted Approach
3. Deep Learning Approach
4. Experimental Results
5. Discussion
6. Conclusions
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Case Study: ICB-RW 2016
• Realistic surveillance scenarios: challenging variability sources
E. Gonzalez-Sosa, R. Vera-Rodriguez, J. Fierrez, and J. Ortega-Garcia, “Exploring Facial Regions in Unconstrained Scenarios: Experience on ICB-RW”, IEEE Intelligent Systems, 2018. (To appear)
BLUR ILLUMINATION OCCLUSION POSE
EXPRESSION POSE &
OCCLUSION
DISTANCE &
OCCLUSIONOCCLUSION
• 2016 International Competition of Face Recognition in the Wild (ICB-RW)
J Neves, H Proença, “ICB-RW 2016: International Challenge on Biometric Recognition in the Wild”, Proc. Intl Conf. on Biometrics, 2016.
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Case Study: ICB-RW 2016
– QUIS CAMPI dataset
– Pan-Tilt-Zoom (PTZ) cameras: up to 50 meters
– 90 subjects
– Training each subject: 3 mug-shot images (1 frontal), 5 PTZ images
– Testing 5 PTZ images (separate from training)
– Closed-set identification
– Performance as Cumulative Match Curves (CMC)
Unconstrained conditions
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Case Study: ICB-RW 2016
Training images from 90 subjects
Test image Who is this subject?
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Score
Identification Mode (Closed Set)
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Hand-crafted Approach
FACE DETECTION: X. Zhu, D. Ramanan, "Face Detection, Pose Estimation, and Landmark Localization in the Wild", Proc. CVPR, 2012.FACE FRONTALIZATION: Hassner et al., “Effective Face Frontalization in Unconstrained Images”, Proc. CVPR, 2015.HISTROGRAM EQ: Struct et al., “Photometric normalization techniques for illuminance variance”, Advances in Face Image Analysis: Techniques and Technologies, IGI Global, May 2010.
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Deep Learning Approach
Features directly learnt from data
Convolutional Neural Networks (CNN):
• A) Feature Extraction: features from a particular layer followed by a
classification stage (SVM, SoftMax, distance-based, etc.)
• B) Fine-Tuning : re-train the last layers of CNN for the target task. (Transfer Learning / Domain Adaptation / ...)
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Deep Learning Approach
Pre-trained model: VGG-FACE
Inspired from VGG-Very-Deep-16 CNN network
39 layers
16 convolutional layers
135 M parameters learnt
Trained with 2.6 million faces to classify 2622 classes
O. M. Parkhi, A. Vedaldi, A. Zisserman, “Deep Face Recognition”, Proc. British Machine Vision Conference, 2015.
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Deep Learning Approach
Pre-trained model: VGG-FACE
Inspired from VGG-Very-Deep-16 CNN network
39 layers
16 convolutional layers
135 M parameters learnt
Trained with 2.6 million faces to classify 2622 classes
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Experimental Results
Proposed Systems
Deep
Learning
Hand-crafted
Feature Extractor
Fine Tuning
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Experimental Results
A posteriori
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Discussion: Examples
Genuine ranked-1
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Discussion: Examples
Genuine ranked-2
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Occlusion assessment:
Occlusion included in Training Occlusion not included in Training
Discussion: Examples
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Conclusions
Deep Learning for ICB-RW – Pros:
• Generally performs better than hand-crafted approaches
• Good generalization capability
• Pre-trained DL to extract features (compared to fine-tuning)
Deep Learning for ICB-RW – Cons:
• Generalization is still limited
Room for improvement (e.g., training-testing mismatch)