The attached technical report contains an extended version of this work.International audienceWe explore the theoretical foundations of a "twenty questions" approach to pattern recognition. The object of the analysis is the computational process itself rather than probability distributions (Bayesian inference) or decision boundaries (statistical learning). Our formulation is motivated by applications to scene interpretation in which there are a great many possible explanations for the data, one ("background") is statistically dominant, and it is imperative to restrict intensive computation to genuinely ambiguous regions. The focus here is then on pattern filtering: Given a large set $\mathcal{Y}$ of possible patterns or explanations, narrow...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
Hierarchical processing is pervasive in the brain, but its computational significance for learning u...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...
The attached technical report contains an extended version of this work.International audienceWe exp...
Sequential decision schemes for the purpose of both pattern classification and feature ordering are ...
We design several algorithms representing evaluation processes of different complexity, ranging from...
Abstract: The problem of observation space reordering is presented as a novel approach to pattern re...
We argue that when faced with big data sets, learning and inference algorithms should compute update...
We compare two strategies for training connectionist (as well as non-connectionist) models for stati...
The problem of observation space reordering is presented as a novel approach to pattern recognition ...
Includes bibliographical references (pages 61-62)A study of classification methods including the Bay...
In perception research, various models have been designed for the encoding of, for example, visual p...
The motivation for this thesis was a very practical one, in that I was looking for a generic framewo...
Statistically sound pattern discovery harnesses the rigour of statistical hypothesis testing to over...
A hierarchical classifier (cascade) is proposed for target detections. In building an optimal cascad...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
Hierarchical processing is pervasive in the brain, but its computational significance for learning u...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...
The attached technical report contains an extended version of this work.International audienceWe exp...
Sequential decision schemes for the purpose of both pattern classification and feature ordering are ...
We design several algorithms representing evaluation processes of different complexity, ranging from...
Abstract: The problem of observation space reordering is presented as a novel approach to pattern re...
We argue that when faced with big data sets, learning and inference algorithms should compute update...
We compare two strategies for training connectionist (as well as non-connectionist) models for stati...
The problem of observation space reordering is presented as a novel approach to pattern recognition ...
Includes bibliographical references (pages 61-62)A study of classification methods including the Bay...
In perception research, various models have been designed for the encoding of, for example, visual p...
The motivation for this thesis was a very practical one, in that I was looking for a generic framewo...
Statistically sound pattern discovery harnesses the rigour of statistical hypothesis testing to over...
A hierarchical classifier (cascade) is proposed for target detections. In building an optimal cascad...
Closely related to the concept of Machine Learning, Pattern Recognition is the assignment of an outp...
Hierarchical processing is pervasive in the brain, but its computational significance for learning u...
We describe a hierarchical probabilistic model for the detection and recognition of objects in clutt...