Title: Face tracking for interaction -review and work
1Face tracking for interaction-review and work
- Changbo Hu
- Advisor Matthew Turk
- Department of Computer Science, University of
California, Santa Barbara
2Outline
- Review
- What is the aim of face tracking?
- How did people do it?
- What we are going to go?
- Current Works
- Mean-shift skin tracking
- Mean-shift elliptical head tracking
- Face tracking and imitation
3Face in interaction
- What we expect computer?
- To perceive the above information
- To response properly
4Applications
- Authentication
- Human recognition
- Internet
- Human-computer interface
- Facial animation
- Talking agent
- Model-based video coding
5The role of tracking
- Two meaning
- When face detected, keep up its motion
- Tracking is easier in some sense
- Some Tasks request you
- To know its pose
- To improve performance for recognition of face
and expression - Synthesis and animation
6What facts cause face variation?
1. Pose (model the relative view to camera ) 2.
Deformation(model the face expression and
talking) 3. Intensity change (model the
illumination and sensor)
7What is face tracking?
- To find all the variation factors
- Problem formulation
translation
deformation
Intensity sensor
rotation
projection
8How people did it?
9ctned
10To look into some details
Gang Xu, ICPR98
Black, CVPR 95
11To look into some details
Blake, ICCV98
Bilinear combination of motion and expression
Cassia CVPR99
12To look into some details
Pentland, Computer Graphics, 96
DT, PAMI 93
13To look into some details
Pentland ICCV workgroup 99
14To look into some details
GorkTurk ICCV01
15What will we do?
- Task
- Personalized full tracking and animation of
face - Start point 2d face location
- Selecting face model
- Modeling expression
- Modeling illumination
- Animation
16What conditions we have?
- Personalized face is specific
- to model shape
- to model expression
- to have stable feature points
- to sample lighting effect
- Statistical learning
- PCA, ASM,AAM
- muscle vector, human metric for expression
- Learn feature point location
17Start point--current work
- Mean shift tracking of skin color
- Mean shift tracking of elliptical head
- 2 step face tracking and expression imitation
18Selecting face model
Face modeling itself is a large topic, related in
graphics, talking face, etc. What model should we
choose , must considering 1. The model can
account for 3d motion 2. The model is easy to
adjust to individual
From Reference 29
19Face model data capture
- to determine head geometry
- method
- two calibrated front and frofile images
- 10 feature ponits--four eye corners, two
nostrils, the bottom of the upper front teeth,
the chin, the base of ears
20Face model locate features
- to locate the facial features with high precision
in three steps - to find a coarse outline of the head and
estimation of main features - to analyze the important areas in more detail
- zooms in on specific points and measure with high
accuracy.
21Face model locate features
22Face model Location of main features
- texture segmentation
- using luminance image
- bandpass filter and adaptive threshold
- morphological operation
- connected component analysis
- extracting the center of mass, width, and height
of each blob
23Face model Location of main features
- color segmentation
- background color /skin,hair color
- extraction the similar feature as the texture
- evaluating combination of features
- to train a 2-d head model (size)
- to score blobs to select candidates
- to check each eye candidate for good combination
- to evaluate whole head
24Face model Measuring facial features
- to find the exact dimension
- area around the mouth and the eye
- using HSI color space
- threshold for each color cluster(predefined)
- recalibrating the color thresholds dynamcally
- remarkable accurate, not robust enough
- 2 pixels, standard deviation
25Face model Measuring facial feature
the colors of teeth, lips and the inner,dark part
of the mouth is prelearned
26Face model High accuracy feature points
- Correlation analysis
- a group of kernel
- kernel chosen by width and height
- scan in the image for the best correlation
- 20X20 in 100X100, conjugate gradient descent
approach - 0.5 pixel standard deviation
27Face model High accuracy from correlation
28Face model Pose estimation
- using 6 corners, 3d known from the model
- iteration equation (to find i,j and Z0)
- lowpass filtering on their trajectories
29Modeling expression
- Like AAM, create pose free apperance patches
30Modeling illumination
- 3D linear space , assuming Labersion surface,
without shadowing
- Considering shadowing and distrotion, can
increase the basis to around 10
- Using only one subject, we can learn the linear
space by eperiment
31Animation
- Synthesis animation
- Performance driven sketch animation
32End
Questions and comments?
33Mean shift color tracking
- An implementation to show power of skin
- Feature is probability of skin hue
- Mean-shift search
- Choose a search window size.
- Choose the initial location of the search window.
- Compute the mean location in the search window.
- Center the search window at the mean location
computed in Step3. - Repeat Steps 3 and 4 until convergence
34ctned
- Find the zeroth moment M00
- Find the first moment for x and y, M10, M01
- Then the mean search window location (the
centroid) is (xc, yc) - (xc M10/ M00, yc M01/ M00 )
- Get features from the blob
- Length, weighth, rotation
35ctned
back
36Meanshift elliptical head tracking
- Based on shape and adaptive color the
- head is shaped as an ellipse and the heads
appearance is represented by adaptive color. - First mean shift to track the color blob
- Second Maximizing the normalized gradient around
the - boundary of the elliptical head.
37Why adaptive color
The heads hue vary during tracking, esp. in
different views or big rotation, such as
In order to handle this problem, we modify the
heads color continuously during tracking using
tracking result.
hT the initial color representation hR the
tracking result color in the current frame hN
the heads color for tracking in the next frame
38Relocate elliptical head
- Maximizing the normalized Gradient
- Assuming the elliptical heads state
- gi is the intensity gradient at perimeter pixel i
of the ellipse - Nh is the number of pixels on the perimeter of
the ellipse.
39Benefits
- Compared with Bradskis paper and Stanford
elliptical head paper, our approach has the
benefits - Robust (fusion of color and gradient cue,
adaptive to color changing) - Fast (do not need to search, meanshift iterate
fast)
40Demo
back
41Real time face pose tracking expression
imitation (still on)
- A modification to Active apperance model
- The most obvious drawback of AAM?
- slow, because it can not apply PCA projection
directly - Explictly compute the rigid motion by a rigid of
feature points - Learning the PCA space for nonrigid shape and
appearance
42Two step face tracking
Formulation Rigid features x1, nonrigid
features x2 Ta(x1)-gtz1, the same T a (x2)-gtz2
Deal with unprecise of rigid points by
synthesized feedback In the synthyzied Z2,
relocate rigid feature x1 and compute new
T Iteration untill covergence
43Pose free expression
Pose T
New face with pose and expression
44Animation
One implementaion using a hand drawing
corresponding modes, for example
back
45Reference
- H. li , PAMI93 H. li, P. Rovainen, and R.
Forcheimer, 3-D motion estimation in model based
facial image codingPAMI, 6,1993 - DT, PAMI 93 D. Terzopulos and K. Water,
Analysis and synthesis of facial image sequences
using physical and anatomical models. PAMI, 6,
1993 - Black, CVPR 95 M Black, Yacoob, Tracking and
recognizing rigid and non-rigid facial motion
using local parametric model of image motion,
CVPR95 - Essa ICCV95 I. Essa and A. Pentland. Facial
expression recognition using a dynamic model and
motion energy. InProc. 5th Int.Conf. on Computer
Vision, pages 360367, 1995. - Darell CVPR96 Trevor Darrell, Baback Moghaddam
Alex pentland, Active face tracking and pose
estimation in an Interactive room, CVPR96, - Pentland, Computer Graphics, 96 Urfan Essa,
Sumit Basu, T Darrel, Pentland, Modeling,
tracking and interactive animation of faces and
heads// using input from video, Proceedings
Computer Graphics, 1996 - L. Davis FG96 T. Horprasert, Y. Yacoob, and l.S
Davis, computing 3D head orientation from
monocular image sequence, FG96 - Yacoob, PAM96 Y. Yacoob and LS Davis,
computing spatio-temporal representations of
human faces, PAMI, 6, 1996 - Decarlo, CVPR 96 D. Decarlo and D . Metaxas,
the intergration of optical flow and deformable
models woth applications to human face shape and
motion estimation, CVPR 96
46- Nesi RTI96 P. Nesi and R. Magnol_. Tracking and
synthesizing facial motions with dynamic
contours. Real Time Imaging, 267-79, 1996. - Oliver CVPR97 Nuria Olivedr, Alex Pentland,
LAFTER Lips and Face real time tracker, CVPR97, - DT, CVPR97 P. Fieguth and D Terzopoulous,
Color-based tracking of heads and other mobile
objects at video frame rates CVPR97 - Pentland CVPR97 TS. Jebra and A Pentland,
Parameterized structure from motion for 3D
adaptive feedback tracking of faces CVPR97 - Cootes ECCV 98 T. Cootes, G Edwards, Active
appearance model, ECCV98, - Gang Xu, ICPR98Gang Xu and Takeo Sugimoto,
"Rits Eye A Software-Based System for Realtime
Face Detection and Tracking Using Pan-Tilt-Zoom
Controllable Camera", Proc. of 14th International
Conference on Pattern Recognition, pp.1194-1197,
1998 - Birtchfield CVPR98 Stan Birchfield, Elliptical
head tracking using Intensity Gradients and color
histograms, CVPR 98 - Hager PAMI98 G Hager, P Belhumeur, Efficient
Region Tracking With Parametric Models of
Geometry and Illumination (with P. Belhumeur),
IEEE Transactions on Pattern Analysis and Machine
Intelligence, 20(10), pp.1125-1139, 1998 - Shodl PUI98 Schödl, Haro, and Essa, Head
tracking using a textured polygonal model, PUI98.
- Blake ICCV98 B. Bascle, A. Blake, Separability
of pose and expression in facial tracking and
animation, ICCV98
47cnted
- Cassia CVPR99 La Cascia, M, Sclaroff, S., fast,
Reliable Head tracking under illumination, CVPR99 - Pentland ICCV workgroup 99 J. strom, T.
Jebara, S. Baru, A. Pentland, Real time tracking
and modeling of faces an EKF-based analysis by
synthesis approach, In International Conference
on Computer Vision Workshop on Modelling
People,Corfu, Greece, September 1999. - GorkTurk ICCV01 Salih Burak Gokturk, Jean-Yves
Bouguet, et. al, A data-driven model for
monocular face tracking, ICCV 2001 - Y Li ICCV01 Yongmin Li, Shaogang Gong and
Heather Liddell, Modeling face dynamically across
views and over time, ICCV, 2001 - Feris ICCV workgroup 01 Rogerio S Feris,
Roberto m. Cesar Jr, Efficient real-time face
tracking in wavelet subspace, ICCV Workshop, 2001 - Ahlberg RATFFG-RTS01 Jorgen Ahlberg, Using the
Active Appearance Algorithm for Face and Facial
Feature Tracking 2nd International Workshop on
Recognition, Analysis and Tracking of Faces and
Gestures in Realtime Systems (RATFFG-RTS), pp. 68
- 72, Vancouver, Canada, July 2001. - CC Chang IJCV02Chin-Chun Chang and Wen-hsinag
Tsai, Determination of head pose and facial
expression from a single perspective view by
successive scaled orthographic approximations,
IJCV,3,2002 - Dorin Comaniciu and Peter Meer. Real-time
tracking of non-rigid objects using Mean shift.
In the Proc.of the IEEE CVPR, 2000, pp 142-149. - G.R.Bradski. Real-Time Face and Object Tracking
as a Component of a Perceptual User Interface.
IEEE Workshop Application of Computer Vision.
1998, pp 214-219 - Eric Cosatto and Hans Peter Graf, Photo-realistic
talking-heads from image samples, IEEE trans. On
Multimedia, vol.2, No.3, September 2000