We consider data that are images containing views of multiple objects. Our task is to learn about each of the objects present in the images. This task can be approached as a factorial learning problem, where each image must be explained by instantiating a model for each of the objects present with the correct instantiation parameters. A major problem with learning a factorial model is that as the number of objects increases, there is a combinatorial explosion of the number of configurations that need to be considered. We develop a method to extract object models sequentially from the data by making use of a robust statistical method, thus avoiding the combinatorial explosion, and present results showing successful extraction of objects from...
Learning visual models of object categories notoriously requires thousands of training examples; thi...
Robust object recognition requires computational mechanisms that compensate for variability in the a...
We attack the problem of general object recognition by learning probabilistic, nonlinear object clas...
We consider data which are images containing views of multiple objects. Our task is to learn about e...
Developing computer vision algorithms able to learn from unsegmented images containing multiple obje...
Institute for Adaptive and Neural ComputationDeveloping computer vision algorithms able to learn fr...
We propose a method to learn heterogeneous models of object classes for visual recognition. The tra...
We present a method of recognizing three-dimensional objects in intensity images of cluttered scene...
This dissertation addresses the task of detecting instances of object categories in photographs. We ...
We introduce a novel algorithm for factorial learning, motivated by segmentation problems in computa...
Many collections of data exhibit a common underlying structure: they consist of a number of parts or...
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 trai...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...
Learning visual models of object categories notoriously requires thousands of training examples; thi...
Robust object recognition requires computational mechanisms that compensate for variability in the a...
We attack the problem of general object recognition by learning probabilistic, nonlinear object clas...
We consider data which are images containing views of multiple objects. Our task is to learn about e...
Developing computer vision algorithms able to learn from unsegmented images containing multiple obje...
Institute for Adaptive and Neural ComputationDeveloping computer vision algorithms able to learn fr...
We propose a method to learn heterogeneous models of object classes for visual recognition. The tra...
We present a method of recognizing three-dimensional objects in intensity images of cluttered scene...
This dissertation addresses the task of detecting instances of object categories in photographs. We ...
We introduce a novel algorithm for factorial learning, motivated by segmentation problems in computa...
Many collections of data exhibit a common underlying structure: they consist of a number of parts or...
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 trai...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...
Learning visual models of object categories notoriously requires thousands of training examples; thi...
Robust object recognition requires computational mechanisms that compensate for variability in the a...
We attack the problem of general object recognition by learning probabilistic, nonlinear object clas...