Abstract: This paper presents a novel algorithm aiming at analysis and identification of faces viewed from different poses and illumination conditions. Face analysis from a single image is performed by recovering the shape and textures parameters of a 3D Morphable Model in an analysis-by-synthesis fashion. The shape parameters are computed from a shape error estimated by optical flow and the texture parameters are obtained from a texture error. The algorithm uses linear equations to recover the shape and texture parameters irrespective of pose and lighting conditions of the face image. Identification experiments are reported on more than 5000 images from the publicly available CMU-PIE face image database which includes faces viewed from 13 different poses and under 22 different illuminations. Extensive identification results are available for future comparison with novel algorithms.
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Sponsor: |
DARPA - HumanID at a distance program European Research Office of the US Army |
Grant: | N68171-01-C-9000 |
Copyright: | Springer-Verlag |
BibTeX | @conference{RomBlaVet02, author = "Sami Romdhani and Volker Blanz and Thomas Vetter", title = "Face Identification by Fitting a 3D Morphable Model using Linear Shape and Texture Error Functions", booktitle = "Computer Vision -- ECCV'02", address = "Copenhagen, Denmark", volume = "4", pages = "3--19", year = 2002 } |
Identification Results Files | ||||||||||||||||||||||||||||||||||||
To enable a fair comparison of the identification
performances obtained by LiST with other algorithms, we
provide detailed identification results. The identification
experiments reported here were performed on two portions of
the
CMU-PIE face image database: 1. on the pose
variation with ambient light portion (884 images) and
2. on the combined pose and illumination variation
(4488 images).
Pose Variation: This portion of the database contains 13 images for all 68 individual viewed from different poses. One identification experiments was performed by choosing one pose for the gallery set and the other poses for the probe set. Hence the gallery set contains a single image per individual. 13 identification experiments were carried out by choosing different poses for the gallery set. There is one identification result file per experiment. See the detailed description of the file format, but briefly, the files contain one line per probe image. Each line begins by the tag of the probe individual and its pose number. Then follows a series of pairs of gallery individual tag and their distance from the probe. The list of gallery tag is ordered by their closeness to the probe.
Pose & Illumination Variation: This portion of the database holds 66 images for all 68 individual viewed from 3 poses and illuminated from 22 directions. We made 3 experiments. The gallery sets contained one image per individual. The 3 gallery sets hold each a different pose. All the image of the gallery set were illuminated from direction number 12. There is one identification result file per experiment. See the detailed description of the file format, but briefly, the files contain one line per probe image. Each line begins by the tag of the probe individual its pose number and the flash light number. Then follows a series of pairs of gallery individual tag and their distance from the probe. The list of gallery tag is ordered by their closeness to the probe.
Description of the Identification Result File: An Identification Result File stores the results of an identification experiment. There is one line per probe image. Each line has two parts. The first part pertain to the probe image, the second part lists the gallery images along with their distance from the probe image. The list of gallery image is ordered by their closeness to the probe. The probe part varies depending on the type of experiment:
<id number>, <distance>, ..., <id number>, <distance>We chose the Comma Separated Values (CSV) file format because it is a human readable format and supported by a large range of software including Matlab, MS Excel, Gnumeric, Star Office and any spreadsheet tool. Each Identification Result File contains a header of 11 lines describing briefly its content. Download all 16 experiments as a compressed file (.tar.gz) [5.0M] |
Other papers reporting results on the PIE face image database |
From our group:
Face Identification across different Poses and Illuminations
with a 3D Morphable Model From CMU:
Eigen Light-Fields and Face Recognition across Pose
Quo Vadis Face Recognition ?
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