A learning/recognition model (and instantiating program) is described which recursively combines the learning paradigms of conceptual clustering (Michalski, 1980) and learning-from-examples to resolve the ambiguities of real-world recognition. The model is based on neuropsychological and psychological evidence that the visual system is analytic, hierarchical, and composed of a parallel/serial dichotomy (many, see conclusions by Crick, 1984). Emulating the experimental evidence, parallel processes in the model decompose the image into components and cluster the constituents in much the same way as the image processing technique known as moment analysis (Alt, 1962). Serial, attentive mechanisms then reassemble the decompositions by investigat...
Visual recognition of objects is an impressively difficult problem that biological systems solve eff...
The motivation for this thesis was a very practical one, in that I was looking for a generic framewo...
This paper specifies the main features of Brain-like, Neuronal, and Connectionist models; argues for...
A learning/recognition model (and instantiating program) is described which recursively combines the...
AbstractA model of visual perception and recognition is described. The model contains: (i) a low-lev...
A key problem in learning representations of multiple objects from unlabeled images is that it is a ...
In this report we review a large body of literature describing how experience affects recognition. B...
Vision extracts useful information from images. Reconstructing the three-dimensional structure of ou...
Interpretations of images of the brain are starting to reveal the conceptual tasks in which the pers...
I present my work towards learning a better computer vision system that learns and generalizes objec...
The visual system groups image elements that belong to an object and segregates them from other obje...
Computer vision tasks are traditionally defined and eval-uated using semantic categories. However, i...
Visual recognition of semantically meaningful entities like objects, actions, and poses in images an...
One important task for the visual system is to group image elements that belong to an object and to ...
Our understanding of the mechanisms and neural substrates underlying visual recognition in humans ha...
Visual recognition of objects is an impressively difficult problem that biological systems solve eff...
The motivation for this thesis was a very practical one, in that I was looking for a generic framewo...
This paper specifies the main features of Brain-like, Neuronal, and Connectionist models; argues for...
A learning/recognition model (and instantiating program) is described which recursively combines the...
AbstractA model of visual perception and recognition is described. The model contains: (i) a low-lev...
A key problem in learning representations of multiple objects from unlabeled images is that it is a ...
In this report we review a large body of literature describing how experience affects recognition. B...
Vision extracts useful information from images. Reconstructing the three-dimensional structure of ou...
Interpretations of images of the brain are starting to reveal the conceptual tasks in which the pers...
I present my work towards learning a better computer vision system that learns and generalizes objec...
The visual system groups image elements that belong to an object and segregates them from other obje...
Computer vision tasks are traditionally defined and eval-uated using semantic categories. However, i...
Visual recognition of semantically meaningful entities like objects, actions, and poses in images an...
One important task for the visual system is to group image elements that belong to an object and to ...
Our understanding of the mechanisms and neural substrates underlying visual recognition in humans ha...
Visual recognition of objects is an impressively difficult problem that biological systems solve eff...
The motivation for this thesis was a very practical one, in that I was looking for a generic framewo...
This paper specifies the main features of Brain-like, Neuronal, and Connectionist models; argues for...