Sixth International Conference on Computer Vision (IEEE Cat. No.98CH36271)
DOI: 10.1109/iccv.1998.710737
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Learning to identify and track faces in image sequences

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Cited by 36 publications
(32 citation statements)
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“…Methods for detecting the eyes include the use of gradient flow fields [37], color-based techniques for detection of the eye sclera [5], horizontal gradient maps of a skin-colored region [48,51], and pupil detection using infrared or other special lighting [2,31,40,54]. References [1,7,13,17,18,21,38,40,50] explain various face and head tracking techniques previously employed. Temporal differencing is often used to segment moving regions of interest from a stable background [15,16].…”
Section: Introductionmentioning
confidence: 99%
“…Methods for detecting the eyes include the use of gradient flow fields [37], color-based techniques for detection of the eye sclera [5], horizontal gradient maps of a skin-colored region [48,51], and pupil detection using infrared or other special lighting [2,31,40,54]. References [1,7,13,17,18,21,38,40,50] explain various face and head tracking techniques previously employed. Temporal differencing is often used to segment moving regions of interest from a stable background [15,16].…”
Section: Introductionmentioning
confidence: 99%
“…For example, the appearance of a long-nosed person varies with pose change in a different way to the appearance of a short-nosed person. Edwards et al [4] showed that this second order effect appeared as a linear correlation between the identity and non-identity parameters during tracking. Given enough measurements (greater than the number of parameters) from a sequence, multivariate linear regression allows the identity parameters, d to be explained as a constant 'corrected' identity dC plus some confounding information caused by the variation in non-identity parameters:…”
Section: Tracking Schemementioning
confidence: 99%
“…This provides the basis for a principled method of integrating evidence of identity over a sequence. A further enhancement [4,13,14] exploits the knowledge that identity must be fixed over a sequence, leading to a tracking and identification scheme based on independent Kalman Filtering of the identity and non-identity components of a video sequence.…”
Section: Introductionmentioning
confidence: 99%
“…After training phase of this method with 40 images, it is able to locate 35 faces in 40 test images. The ASM approach has also been extended with two Kalman filters to estimate the shape-free intensity parameters and to track faces in image sequences [13].…”
Section: Researches Using This Approachmentioning
confidence: 99%
“…This does not present a problem for authentication applications with the constraint that a human face must be in an upright position. However, in order to be widely applicable to photo albums [13] and automatic video management systems [14], eye detection methods must be able to detect human eyes even in rotated faces.…”
Section: Support Vector Machinesmentioning
confidence: 99%