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17 - 21 May 2010  At Monte Verita, Locarno, Switzerland IR Fringe Projection  for  3D Face Recognition Giuseppe Schirripa Spagnolo, Lorenzo Cozzella, Carla Simonetti Dipartimento Ingegneria Elettronica, Università di Roma Tre, Italy  e-mail: cozzella@ uniroma3.it  -  schirrip@uniroma3.it
Overview ,[object Object]
SET-UP
Phase Unwrapping and inconsistent region
3D dataset allignement
Conclusion,[object Object]
  Surveillance operations (for instance in check point),[object Object]
Face recognition systems are the least intrusive from a biometric sampling point of view, requiring no contact, nor even the awareness of the subject.
The biometric works, or at least works in theory, with legacy photograph data-bases, videotape, or other image sources
Face recognition can, at least in theory, be used for screening of unwanted individuals in a crowd, in real time.
It is a fairly good biometric identifier for small scale verification applications.,[object Object]
Face currently is a poor biometric for use in a pure identification protocol
An obvious circumvention method is disguise
There is some criminal association with face identifiers since this biometric has long been used by law enforcement agencies,[object Object]
Imaging ,[object Object]
Video sequence
Infrared & near infrared(facial thermogram)
Facial Recognition ,[object Object]
Facial Detection
Facial Recognition
Typical Facial Recognition technology automates the recognition of faces using one of two 2 modeling approaches:
Face appearance
2D Eigen faces
3D Morphable Model
Face geometry
3D Expression Invariant Recognition,[object Object]
2D images contain limited information
3D Representation of face is less susceptible to isometric deformations (expression changes).
3D approach overcomes problem of large facial orientation changes,[object Object]
The system In this work, the 3D model of the face is achieved by projecting near infrared light modulated by a sinusoidal fringe pattern on the face.
... continue   The system In this work, the 3D model of the face is achieved by projecting near infrared light modulated by a sinusoidal fringe pattern on the face.
... continue   The system Structured light is obtained by the interference of the two fields diffracted by a saw-tooth phase grating. The fringe patterns, distorted by the surface roughness, are captured by a high-resolution image camera.
... continue   The system The fringe patterns, captured by the image camera, are processed with the aid of the Fourier transform analysis and a procedure of unwrapped phase-map able to minimize and to fill holes generate by shadows and facial hair (like beard, mustache).
Phase Unwrapping
Example of reconstruction Reconstructed surface Original surface Curves extracted
... continue   The system The method is experimentally simple, has a low-cost set-up, requires only single image as input, is easy to be integrated in systems of control and access. The system can work in real time (necessity of an only acquisition) and projecting non visible light (no  damages to the retina). The system can be easily hidden so that it is difficult to discover.
Face Capture System  SET-UP Set up details can be found in: G. Schirripa Spagnolo, D. Ambrosini, "Diffractive optical element-based profilometer for surface inspection", Optical Engineering 40, pp. 44-52 (2001)
Face Capture System - SET-UP

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Cozzella presentation ICAPMMOMI 2010

  • 1. 17 - 21 May 2010 At Monte Verita, Locarno, Switzerland IR Fringe Projection for 3D Face Recognition Giuseppe Schirripa Spagnolo, Lorenzo Cozzella, Carla Simonetti Dipartimento Ingegneria Elettronica, Università di Roma Tre, Italy e-mail: cozzella@ uniroma3.it - schirrip@uniroma3.it
  • 2.
  • 4. Phase Unwrapping and inconsistent region
  • 6.
  • 7.
  • 8. Face recognition systems are the least intrusive from a biometric sampling point of view, requiring no contact, nor even the awareness of the subject.
  • 9. The biometric works, or at least works in theory, with legacy photograph data-bases, videotape, or other image sources
  • 10. Face recognition can, at least in theory, be used for screening of unwanted individuals in a crowd, in real time.
  • 11.
  • 12. Face currently is a poor biometric for use in a pure identification protocol
  • 13. An obvious circumvention method is disguise
  • 14.
  • 15.
  • 17. Infrared & near infrared(facial thermogram)
  • 18.
  • 21. Typical Facial Recognition technology automates the recognition of faces using one of two 2 modeling approaches:
  • 26.
  • 27. 2D images contain limited information
  • 28. 3D Representation of face is less susceptible to isometric deformations (expression changes).
  • 29.
  • 30. The system In this work, the 3D model of the face is achieved by projecting near infrared light modulated by a sinusoidal fringe pattern on the face.
  • 31. ... continue The system In this work, the 3D model of the face is achieved by projecting near infrared light modulated by a sinusoidal fringe pattern on the face.
  • 32. ... continue The system Structured light is obtained by the interference of the two fields diffracted by a saw-tooth phase grating. The fringe patterns, distorted by the surface roughness, are captured by a high-resolution image camera.
  • 33. ... continue The system The fringe patterns, captured by the image camera, are processed with the aid of the Fourier transform analysis and a procedure of unwrapped phase-map able to minimize and to fill holes generate by shadows and facial hair (like beard, mustache).
  • 35. Example of reconstruction Reconstructed surface Original surface Curves extracted
  • 36. ... continue The system The method is experimentally simple, has a low-cost set-up, requires only single image as input, is easy to be integrated in systems of control and access. The system can work in real time (necessity of an only acquisition) and projecting non visible light (no damages to the retina). The system can be easily hidden so that it is difficult to discover.
  • 37. Face Capture System SET-UP Set up details can be found in: G. Schirripa Spagnolo, D. Ambrosini, "Diffractive optical element-based profilometer for surface inspection", Optical Engineering 40, pp. 44-52 (2001)
  • 41. Phase Unwrapping and inconsistent region The case of an image containing regions without phase information
  • 42.
  • 43. an initial approximate estimation of the phase data in the region (pixels) of inconsistent data is performed by “standard weighted least-squares algorithm”. At the inconsistent zones is assigned zero weight.
  • 44.
  • 45. Rewrapped phase 20 15 Real unwrapped phase 10 Initial wrapped phase 5 0 -5 -10 -15 Esteemed unwrapped phase -20 -25 0 10 20 30 40 50 60 70 80 90 100
  • 46. Inconsistent data Reconstructed region withbinarymask Procedure that allows to reconstruct the congruence
  • 47.
  • 48. a rewrapping procedure (plus congruence procedure) is used to obtain wrapped phase map without initial inconsistencies;
  • 49.
  • 50. Interpolation of phase data in regions of inconsistent To reduce the problem of regions of inconsistence, another approach consists to acquire (at the same time with more cameras) more images and subsequently to performed data fusion to produce a unique detailed 3D model.
  • 51. Interpolation of phase data in regions of inconsistent Align two partially-overlapping meshesgiven initial guessfor relative transform
  • 52.
  • 53. The algorithm is very simple and is commonly used in real‐time. It iteratively estimates the transformation (translation, rotation) between two raw scans.
  • 54.
  • 55. Estimate the parameters using a mean square cost function.
  • 56. Transform the points using the estimated parameters.
  • 57.
  • 58.
  • 59. 36 Extraction of feature points 23 74
  • 60.
  • 61. Therefore, a new phase unwrapping procedure is realized to minimize and to fill holes generate by shadows and facial hair.
  • 62. The device, in the current configuration, is able to scan human faces in a short time and the face control can be make in "invisible" way.
  • 63.