Title: Estimating Human Shape and Pose from a Single Image
1Estimating Human Shape and Pose from a Single
Image
- Peng Guan
- Alex Weiss Alexandru Balan Michael J.
Black - Brown University
- Department of Computer Science
ICCV 2009
2Body shape and pose from 1 image?
3Introduction
- What others do
- Estimating 3D human pose in uncalibrated
monocular imagery - Use silhouette in multi-camera setting to recover
3D body shape - Most work assumes the existence of a known
background to extract foreground silhouette - In previous body models, height is correlated
with other shape variations
- What we do
- Estimating both 3D shape and pose in uncalibrated
monocular imagery - Use additional monocular cues including smooth
shading - Use GrabCut to produce foreground region
- Make height variation concentrated along one
shape basis vector, which allows height
constrained fitting
4Previous Work
- 3D pose and shape estimation from multiple,
calibrated, cameras
Balan, A., Sigal, L., Black, M. J., Davis, J.,
Haussecker, H, Detailed human shape and pose
from images, Proc. IEEE Conf. on Computer Vision
and Pattern Recognition, CVPR, Minneapolis, June
2007
5SCAPE Body Model
D. Anguelov, P. Srinivasan, D. Koller, S. Thrun,
J. Rodgers, and J. Davis. SCAPE Shape completion
and animation of people. SIGGRAPH, 24(3)408416,
2005.
Pose Training Set
6Body shape/pose from 1 image Problems
- High dimensional body model (shape and pose)
initialization problem. - Background unknown
- Single, monocular image
- poorly constrained
- Shape/Pose ambiguities
- Silhouette insufficient
7Previous Work (CJ Taylor 2000, Lee Chen 1985)
- 3D pose estimation using orthographic camera
assumption
C. J. Taylor, Reconstruction of Articulated
Objects from Point Correspondences in a Single
Uncalibrated Image, Computer Vision and Image
Understanding, Vol 80, No 10, Pgs 349-363,
October 2000
8C.J.Taylor Model
9Solution 1 Pose Initialization
Better
Shape initialized to mean body shape.
10Solution 2 Segmentation
C. Rother, V. Kolmogorov, and A. Blake.
GrabCut Interactive foreground extraction
using iterated graph cuts. SIGGRAPH,
23(3)309314, 2004.
11Problem Pose/Shape ambiguities
Body shape and pose fitted to a single camera view
12Solution 3 Height Preserving Shape Space
13Shape space without height preserving
14Problem Silhouette not sufficient
15Solution 4 Edge Cues
16Problem Shape not well constrained
17Solution 5 Parametric Shape from Shading
M. de la Gorce, N. Paragios and David Fleet.
Model-Based Hand Tracking with Texture, Shading
and Self-occlusions. IEEE Conference in Computer
Vision and Pattern Recognition (CVPR), Anchorage
2008.
18Shading/Overall Cost function
Shading cost function
Overall cost function
19Experiment Lab Images
20Experiment Lab Images
21Quantitative Comparison
22Experiment Internet Images
23Experiment Paintings
24(No Transcript)
25Conclusions
- Contributions
- Solution to a new problem Human pose and shape
estimation from a single image - Parametric shape from shading for estimating
human shape from complex images and paintings - Attribute-constrained body model
- Limitations
- Single point light assumption and simplified
model of surface reflection - User assistance for pose initialization
- Minimal clothing for shading
26Acknowledgement
- Financial support NSF IIS-0812364 and the RI
Economic Development Corp. - Peng Guan, Alexander Weiss, Alexandru Balan,
Michael Black, Estimating Human Shape and Pose
from a Single Image, Int. Conf. on Computer
Vision, ICCV, Kyoto, Japan, Sept. 2009 - Alexander Weiss GrabCut 3D pose initialization
- Alexandru Balan Height preserving shape space
- David Hirshberg Projection of model edge
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