Resource data
Learning-Based Approach to Real Time Tracking and Analysis of Faces
Kumar, Vinay P. Poggio, Tomaso
Location:
AIM-1672
CBCL-179
http://hdl.handle.net/1721.1/7172
This paper describes a trainable system capable of tracking faces and facialsfeatures like eyes and nostrils and estimating basic mouth features such as sdegrees of openness and smile in real time. In developing this system, we have addressed the twin issues of image representation and algorithms for learning. We have used the invariance properties of image representations based on Haar wavelets to robustly capture various facial features. Similarly, unlike previous approaches this system is entirely trained using examples and does not rely on a priori (hand-crafted) models of facial features based on optical flow or facial musculature. The system works in several stages that begin with face detection, followed by localization of facial features and estimation of mouth parameters. Each of these stages is formulated as a problem in supervised learning from examples. We apply the new and robust technique of support vector machines (SVM) for classification in the stage of skin segmentation, face detection and eye detection. Estimation of mouth parameters is modeled as a regression from a sparse subset of coefficients (basis functions) of an overcomplete dictionary of Haar wavelets.
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Detalles del recurso
|
Learning-Based Approach to Real Time Tracking and Analysis of Faces
|
| Id. |
26498 |
| Idioma |
inglés (Estados Unidos)
|
| Titulo |
Learning-Based Approach to Real Time Tracking and Analysis of Faces |
| Autor(es) |
Kumar, Vinay P. Poggio, Tomaso |
| Location |
AIM-1672
CBCL-179
http://hdl.handle.net/1721.1/7172
|
| Versión |
1.0 |
| Estado |
Final
|
| Descripción |
This paper describes a trainable system capable of tracking faces and facialsfeatures like eyes and nostrils and estimating basic mouth features such as sdegrees of openness and smile in real time. In developing this system, we have addressed the twin issues of image representation and algorithms for learning. We have used the invariance properties of image representations based on Haar wavelets to robustly capture various facial features. Similarly, unlike previous approaches this system is entirely trained using examples and does not rely on a priori (hand-crafted) models of facial features based on optical flow or facial musculature. The system works in several stages that begin with face detection, followed by localization of facial features and estimation of mouth parameters. Each of these stages is formulated as a problem in supervised learning from examples. We apply the new and robust technique of support vector machines (SVM) for classification in the stage of skin segmentation, face detection and eye detection. Estimation of mouth parameters is modeled as a regression from a sparse subset of coefficients (basis functions) of an overcomplete dictionary of Haar wavelets. |
| Tipo |
11 p. 2942036 bytes 601056 bytes application/postscript application/pdf |
| Palabras clave |
AI |
| Tipo de Interactividad |
Expositivo
|
| Nivel de Interactividad |
muy bajo
|
| Audiencia |
Estudiante
Profesor
Autor
|
| Estructura |
Atomic |
| Coste |
no
|
| Copyright |
sí
|
| Formatos |
11 p. 2942036 bytes 601056 bytes application/postscript application/pdf |
| Requerimientos técnicos |
Browser: Any |
| Relación |
[References] AIM-1672
[References] CBCL-179
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| Fecha de contribución |
07-may-2008 |
| Contacto |
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