Resource data
A Biological Model of Object Recognition with Feature Learning
Louie, Jennifer
Location:
AITR-2003-009
CBCL-227
http://hdl.handle.net/1721.1/5571
Previous biological models of object recognition in cortex have been evaluated using idealized scenes and have hard-coded features, such as the HMAX model by Riesenhuber and Poggio [10]. Because HMAX uses the same set of features for all object classes, it does not perform well in the task of detecting a target object in clutter. This thesis presents a new model that integrates learning of object-specific features with the HMAX. The new model performs better than the standard HMAX and comparably to a computer vision system on face detection. Results from experimenting with unsupervised learning of features and the use of a biologically-plausible classifier are presented.
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Detalles del recurso
|
A Biological Model of Object Recognition with Feature Learning
|
| Id. |
25092 |
| Idioma |
inglés (Estados Unidos)
|
| Titulo |
A Biological Model of Object Recognition with Feature Learning |
| Autor(es) |
Louie, Jennifer |
| Location |
AITR-2003-009
CBCL-227
http://hdl.handle.net/1721.1/5571
|
| Versión |
1.0 |
| Estado |
Final
|
| Descripción |
Previous biological models of object recognition in cortex have been evaluated using idealized scenes and have hard-coded features, such as the HMAX model by Riesenhuber and Poggio [10]. Because HMAX uses the same set of features for all object classes, it does not perform well in the task of detecting a target object in clutter. This thesis presents a new model that integrates learning of object-specific features with the HMAX. The new model performs better than the standard HMAX and comparably to a computer vision system on face detection. Results from experimenting with unsupervised learning of features and the use of a biologically-plausible classifier are presented. |
| Tipo |
4307593 bytes 5073756 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 |
4307593 bytes 5073756 bytes application/postscript application/pdf |
| Requerimientos técnicos |
Browser: Any |
| Relación |
[References] AITR-2003-009
[References] CBCL-227
|
| Fecha de contribución |
07-may-2008 |
| Contacto |
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