Learning visual models of object categories notoriously requires thousands of training examples; this is due to the diversity and richness of object appearance which requires models containing hundreds of parameters. We present a method for learning object categories from just a few images (1 ~ 5). It is based on incorporating "generic" knowledge which may be obtained from previously learnt models of unrelated categories. We operate in a variational Bayesian framework: object categories are represented by probabilistic models, and "prior" knowledge is represented as a probability density function on the parameters of these models. The "posterior" model for an object category is obtained by updating the prior in the light of one or more obse...
Visual object localization and categorization is still a big challenge for current research and gets...
Visual object localization and categorization is still a big challenge for current research and gets...
We investigate a method for learning object categories in a weakly supervised manner. Given a set of...
Learning visual models of object categories notoriously requires thousands of training examples; thi...
Learning visual models of object categories notoriously requires hundreds or thousands of training e...
Learning visual models of object categories notoriously requires hundreds or thousands of training e...
Current computational approaches to learning visual object categories require thousands of training ...
We propose a method to learn heterogeneous models of object classes for visual recognition. The tra...
We propose a method to learn heterogeneous models of object classes for visual recognition. The tra...
We propose a method to learn heterogeneous models of object classes for visual recognition. The trai...
We propose a method to learn heterogeneous models of object classes for visual recognition. The trai...
i-.; 1 This research project aims to use machine learning techniques to improve the performance of t...
We attack the problem of general object recognition by learning probabilistic, nonlinear object clas...
We develop a hierarchical Bayesian model that learns to learn categories from single training exampl...
In this paper we report on an approach to learning object models for use in recognition and reconstr...
Visual object localization and categorization is still a big challenge for current research and gets...
Visual object localization and categorization is still a big challenge for current research and gets...
We investigate a method for learning object categories in a weakly supervised manner. Given a set of...
Learning visual models of object categories notoriously requires thousands of training examples; thi...
Learning visual models of object categories notoriously requires hundreds or thousands of training e...
Learning visual models of object categories notoriously requires hundreds or thousands of training e...
Current computational approaches to learning visual object categories require thousands of training ...
We propose a method to learn heterogeneous models of object classes for visual recognition. The tra...
We propose a method to learn heterogeneous models of object classes for visual recognition. The tra...
We propose a method to learn heterogeneous models of object classes for visual recognition. The trai...
We propose a method to learn heterogeneous models of object classes for visual recognition. The trai...
i-.; 1 This research project aims to use machine learning techniques to improve the performance of t...
We attack the problem of general object recognition by learning probabilistic, nonlinear object clas...
We develop a hierarchical Bayesian model that learns to learn categories from single training exampl...
In this paper we report on an approach to learning object models for use in recognition and reconstr...
Visual object localization and categorization is still a big challenge for current research and gets...
Visual object localization and categorization is still a big challenge for current research and gets...
We investigate a method for learning object categories in a weakly supervised manner. Given a set of...