. Learning to recognize visual objects from examples requires the ability to find meaningful patterns in spaces of very high dimensionality. We present a method for dimensionality reduction which effectively biases the learning system by combining multiple constraints via the use of class labels. The use of multiple class labels steers the resulting low-dimensional representation to become invariant to those directions of variation in the input space that are irrelevant to classification; this is done merely by making class labels independent of these directions. We also show that prior knowledge of the proper dimensionality of the target representation can be imposed by training a multi-layer bottleneck network. Computational experiments i...
In solving complex visual learning tasks, adopting multiple descriptors to more precisely characteri...
Humans are capable of learning a new fine-grained concept with very little supervision, e.g., few ex...
<p>Understanding how humans and machines recognize novel visual concepts from few examples remains a...
Learning to recognize visual objects from examples requires the ability to find meaningful patterns ...
Learning to recognize visual objects from examples requires the ability to find meaningful patterns ...
Psychophysical findings accumulated over the past several decades indicate that perceptual tasks suc...
Psychophysical ndings accumulated over the past several decades indicate that perceptual tasks such ...
The amount of electronic information as well as the size and dimensionality of data sets have increa...
We consider training classifiers for multiple tasks as a method for improving generalization and obt...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
Supervised learning techniques designed for the situation when the dimensionality exceeds the sample...
We introduce a new approach to the training of classifiers for performance on multiple tasks. The pr...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
In solving complex visual learning tasks, adopting multiple descriptors to more precisely characteri...
Humans are capable of learning a new fine-grained concept with very little supervision, e.g., few ex...
<p>Understanding how humans and machines recognize novel visual concepts from few examples remains a...
Learning to recognize visual objects from examples requires the ability to find meaningful patterns ...
Learning to recognize visual objects from examples requires the ability to find meaningful patterns ...
Psychophysical findings accumulated over the past several decades indicate that perceptual tasks suc...
Psychophysical ndings accumulated over the past several decades indicate that perceptual tasks such ...
The amount of electronic information as well as the size and dimensionality of data sets have increa...
We consider training classifiers for multiple tasks as a method for improving generalization and obt...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
Supervised learning techniques designed for the situation when the dimensionality exceeds the sample...
We introduce a new approach to the training of classifiers for performance on multiple tasks. The pr...
Dimensionality reduction is a compelling alternative for high-dimensional data visualization. This m...
There is a great interest in dimensionality reduction techniques for tackling the problem of high-di...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
In solving complex visual learning tasks, adopting multiple descriptors to more precisely characteri...
Humans are capable of learning a new fine-grained concept with very little supervision, e.g., few ex...
<p>Understanding how humans and machines recognize novel visual concepts from few examples remains a...