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A Detailed Look at Scale and Translation Invariance in a Hierarchical Neural Model of Visual Object Recognition
Schneider, Robert
Riesenhuber, Maximilian
Location: AIM-2002-011
CBCL-218
http://hdl.handle.net/1721.1/7178

The HMAX model has recently been proposed by Riesenhuber & Poggio as a hierarchical model of position- and size-invariant object recognition in visual cortex. It has also turned out to model successfully a number of other properties of the ventral visual stream (the visual pathway thought to be crucial for object recognition in cortex), and particularly of (view-tuned) neurons in macaque inferotemporal cortex, the brain area at the top of the ventral stream. The original modeling study only used ``paperclip'' stimuli, as in the corresponding physiology experiment, and did not explore systematically how model units' invariance properties depended on model parameters. In this study, we aimed at a deeper understanding of the inner workings of HMAX and its performance for various parameter settings and ``natural'' stimulus classes. We examined HMAX responses for different stimulus sizes and positions systematically and found a dependence of model units' responses on stimulus position for which a quantitative description is offered. Interestingly, we find that scale invariance properties of hierarchical neural models are not independent of stimulus class, as opposed to translation invariance, even though both are affine transformations within the image plane.

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A Detailed Look at Scale and Translation Invariance in a Hierarchical Neural Model of Visual Object Recognition
Id. 26504
Idioma inglés (Estados Unidos)
Titulo A Detailed Look at Scale and Translation Invariance in a Hierarchical Neural Model of Visual Object Recognition
Autor(es) Schneider, Robert
Riesenhuber, Maximilian
Location AIM-2002-011
CBCL-218
http://hdl.handle.net/1721.1/7178
Versión 1.0
Estado Final
Descripción The HMAX model has recently been proposed by Riesenhuber & Poggio as a hierarchical model of position- and size-invariant object recognition in visual cortex. It has also turned out to model successfully a number of other properties of the ventral visual stream (the visual pathway thought to be crucial for object recognition in cortex), and particularly of (view-tuned) neurons in macaque inferotemporal cortex, the brain area at the top of the ventral stream. The original modeling study only used ``paperclip'' stimuli, as in the corresponding physiology experiment, and did not explore systematically how model units' invariance properties depended on model parameters. In this study, we aimed at a deeper understanding of the inner workings of HMAX and its performance for various parameter settings and ``natural'' stimulus classes. We examined HMAX responses for different stimulus sizes and positions systematically and found a dependence of model units' responses on stimulus position for which a quantitative description is offered. Interestingly, we find that scale invariance properties of hierarchical neural models are not independent of stimulus class, as opposed to translation invariance, even though both are affine transformations within the image plane.
Tipo 12 p.
2137337 bytes
1062341 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
Formatos 12 p.
2137337 bytes
1062341 bytes
application/postscript
application/pdf
Requerimientos técnicos Browser: Any
Relación [References] AIM-2002-011
[References] CBCL-218
Fecha de contribución 07-may-2008
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