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LOGO On Person Authentication by Fusing Visual and Thermal Face Biometrics Presented by: Rubie F. Vi ñ as, 方如玉 Adviser: Dr. Shih-Chung Chen, 陳世中.

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Presentation on theme: "LOGO On Person Authentication by Fusing Visual and Thermal Face Biometrics Presented by: Rubie F. Vi ñ as, 方如玉 Adviser: Dr. Shih-Chung Chen, 陳世中."— Presentation transcript:

1 LOGO On Person Authentication by Fusing Visual and Thermal Face Biometrics Presented by: Rubie F. Vi ñ as, 方如玉 Adviser: Dr. Shih-Chung Chen, 陳世中

2 www.themegallery.com Company Logo Outline I.Abstract II.Introduction III.Method Overview IV.Empirical Evaluation V.Conclusion

3 www.themegallery.com Company Logo I.Abstract  Recognition Algorithms  Use data obtained by imaging faces in the thermal spectrum are promising in achieving invariance to extreme illumination changes that are often present in practice.  Paper  Analyze Performance –Recently: Proposed face recognition algorithm » Combination: Visual and Thermal modalities by “Decision Level Fusion”.  Examine: Effects of the proposed data preprocessing in each domain. Contribution to improved recognition of different types of features Importance of prescription glasses detection –Recognition Vs. Verification »1-to-N matching »1-to-1 matching  Discuss: Significance of the results –Identify a number of limitations of the current state-of-the-art face recognition algorithm. –Propose promising directions for future research.

4 www.themegallery.com Company Logo II.Introduction  Optical Imager  Sensor used in face biometric systems. Why? –Availability –Low-cost  Function Captures the light reflectance of the face surface in the visible spectrum. Visible Spectrum  Problem Ambient Light

5 www.themegallery.com Company Logo II.Introduction (cont.)  Advantages of Thermal Spectrum Vs. Visible Spectrum  Invariance  Ambient Illumination changes Thermal Infrared Sensor –Measures heat energy radiation »Emitted by the face Appearance-based face recognition algorithms –Applied to thermal IR imaging –Consistent Performance »Under various lighting conditions and facial expressions. Visual Spectrum Thermal Spectrum

6 www.themegallery.com Company Logo III.Method Overview System Overview 1. Data Preprocessing and Registration 2. Glasses Detection 3. Fusion

7 www.themegallery.com Company Logo

8 www.themegallery.com Company Logo III.Method Overview (cont.)  Set-up Matching (Feature Fusion)  Similarity Score Two images using only a single modality (visual or thermal) Constant-Weighted Summation: –Where: »p v  visual score »p t  thermal score »p m  mouth score »p e  eyes score »p h  holistic score »w m  mouth weighing constant Visual Spectrum  0.0Thermal Spectrum  0.1 »w e =1-w h -w m  eyes weighing constant »w h  holistic weighing constant Visual Spectrum  0.7Thermal Spectrum  0.8 Note:Choice of values are recommendations from the Arandjelovic System

9 www.themegallery.com Company Logo III.Method Overview (cont.)  Set-up Matching (Modality Fusion)  Similarity Score Visual and Thermal data Joint Similarity  Where: p f  Fusion score w v =w v (p v )  Visual weighing function w t  Thermal weighing function

10 www.themegallery.com Company Logo III.Method Overview (cont.)  Visual Weighing Function Estimation w v =w v (p v ) i.Estimate –Probability that w v is the optimal weighting given –Iterative Algorithm –Unknown Image vs. Offline Gallery ii.Compute w(p v ) –Maximum Posteriori iii.Make an analytic fit –Obtain marginal Distribution

11 www.themegallery.com Company Logo III.Method Overview (cont.)  Prescription Glasses  Thermal Image exact opposite of the Visual Image Thermal Spectrum –Dark patches  Practical Importance US (year 2000) ~ 96 million people (34% total population) – Wear prescription glasses  System Appearance Distortion that glasses cause in thermal imagery –Help recognize by detecting their presence. –Subject »Not wearing glasses  use all parameters »Wearing Glasses  w e =0 (thermal image)

12 www.themegallery.com Company Logo IV.Empirical Evaluation  Old System to Evaluate  Dataset 02: IRIS Thermal/Visible Face Database Subset of the Object Tracking and Classification Beyond the Visible Spectrum (OTCBVS) database1 Available for download –http://www.cse.ohio-state.edu/OTCBVS-BENCH/http://www.cse.ohio-state.edu/OTCBVS-BENCH/ Contents –29 individuals »11 roughly matching poses *Visual and Thermal spectra and large illumination variations

13 www.themegallery.com Company Logo IV.Empirical Evaluation (cont.)  Algorithm  Trained Use all images – Single illumination – 3 Salient facial features could be detected  Result 7-8 Visual Images 6-7 Thermal Images

14 www.themegallery.com Company Logo IV.Empirical Evaluation (cont.)  After evaluation  Needs Performance improvement Solution –Band-pass and Self-Quotient Image Filters  Recognition Performance Use –Individual local features and fusion with holistic face appearance  Importance Prescription Glasses

15 www.themegallery.com Company Logo IV.Empirical Evaluation (cont.)  Algorithm Performance  Evaluate 1-to-N matching scenario –Test data »One of the people in the training set –Recognition »Associating it with the closest match 1-to-1 matching scenario (Verification) –To know if the person is the same –Performance was quantified »Looking at the true positive admittance rate »Threshold  1 admitted intruder in 100

16 www.themegallery.com Company Logo IV.Empirical Evaluation (cont.)  Results Summary of 1-to-N matching results Poor Performance Improved Performance (35%) Improved Performance (47%)

17 www.themegallery.com Company Logo IV.Empirical Evaluation (cont.)

18 www.themegallery.com Company Logo IV.Empirical Evaluation (cont.) Holistic representations Receiver-Operator Characteristics (ROC) Visual (blue) and thermal (red) spectra.

19 www.themegallery.com Company Logo IV.Empirical Evaluation (cont.)  Low recognition rate of Raw Thermal Imagery  Two main limitations of this modality Inherently lower discriminative power Occlusions caused by prescription glasses –Addition:Glasses Detection Module Little help Benefit *Steering away from misleadingly good matches between any two people wearing glasses Limitation * Discriminative region of the face is lost. Modest Improvement  Optimal band-pass filtering in thermal imagery

20 www.themegallery.com Company Logo IV.Empirical Evaluation (cont.) Isolated local features Receiver-Operator Characteristics (ROC) Visual (blue) and thermal (red) spectra

21 www.themegallery.com Company Logo IV.Empirical Evaluation (cont.) Glasses detection results Inter- and intra- class similarities

22 www.themegallery.com Company Logo V.Conclusion  Analyzed and Empirically evaluated  Recently proposed system Personal identification –Face biometrics from visual and thermal imagery  Results  Filters can be used Greatly improve recognition accuracy in both domains  Little improvement is seen Inclusion of local feature-based patches  Proposed Algorithm  Detection of glasses Very reliable across individuals and different imaging conditions  Fusion of visual and thermal imagery Very promising in practical applications Two Modes –Offer discriminative power in complementary ways

23 www.themegallery.com Company Logo V.Conclusion (cont.)  Verification Setup  Evaluated method 80% correct admittance rate (1% intruder admittance) –Problem »Much lower rate than that required in most practical applications *Making the system useful only in the pre-screening process  Much better performance was achieved in 1-to-N matching evaluation High correct identification rate of 97% was obtained –Using »Small number of training images  5-7 » Presence of large illumination changes

24 www.themegallery.com Company Logo V.Conclusion (cont.)  Recommendations  Further use of the thermal spectrum Segmenting out the glasses –Holistic appearance can still be used in matching »Challenge: Presence of extreme poses *Glasses merge with the background with more profile views  Different representation of local appearance Possibly offer further benefit with large pose changes

25 www.themegallery.com Company Logo THANK YOU!!!


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