In this paper, we describe a simple approach to learning models of visual object categories from images gathered from Internet image search engines. The images for a given keyword are typically highly variable, with a large fraction being unrelated to the query term, and thus pose a challenging environment from which to learn. By training our models directly from Internet images, we remove the need to laboriously compile training data sets, required by most other recognition approaches-this opens up the possibility of learning object category models “on-the-fly.” We describe two simple approaches, derived from the probabilistic latent semantic analysis (pLSA) technique for text document analysis, that can be used to automatically learn obje...
Several branches of computer vision heavily rely (but we could even say depend) on the availability ...
In the object recognition community, much effort has been spent on devising expressive object repres...
We propose an unsupervised method that, given a word, automatically selects non-abstract senses of t...
In this paper, we describe a simple approach to learning models of visual object categories from ima...
Current approaches to object category recognition require datasets of training images to be manuall...
The Internet has become the largest repository for numerous resources, a big portion of which are i...
We extend the constellation model to include heterogeneous parts which may represent either the appe...
This thesis tackles the problem of large-scale visual search for categories within large collections...
A well-built dataset is a necessary starting point for ad-vanced computer vision research. It plays ...
Most current image categorization methods require large collections of man-ually annotated training ...
This thesis is concerned with the modeling, representing and learning of visual categories for the p...
In this paper, we propose an autonomous learning scheme to automatically build visual semantic conce...
The web has the potential to serve as an excellent source of example imagery for visual concepts. I...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
Several branches of computer vision heavily rely (but we could even say depend) on the availability ...
Several branches of computer vision heavily rely (but we could even say depend) on the availability ...
In the object recognition community, much effort has been spent on devising expressive object repres...
We propose an unsupervised method that, given a word, automatically selects non-abstract senses of t...
In this paper, we describe a simple approach to learning models of visual object categories from ima...
Current approaches to object category recognition require datasets of training images to be manuall...
The Internet has become the largest repository for numerous resources, a big portion of which are i...
We extend the constellation model to include heterogeneous parts which may represent either the appe...
This thesis tackles the problem of large-scale visual search for categories within large collections...
A well-built dataset is a necessary starting point for ad-vanced computer vision research. It plays ...
Most current image categorization methods require large collections of man-ually annotated training ...
This thesis is concerned with the modeling, representing and learning of visual categories for the p...
In this paper, we propose an autonomous learning scheme to automatically build visual semantic conce...
The web has the potential to serve as an excellent source of example imagery for visual concepts. I...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
Several branches of computer vision heavily rely (but we could even say depend) on the availability ...
Several branches of computer vision heavily rely (but we could even say depend) on the availability ...
In the object recognition community, much effort has been spent on devising expressive object repres...
We propose an unsupervised method that, given a word, automatically selects non-abstract senses of t...