Probabilistic index maps for modeling natural signals
Nebojsa Jojic, Yaron Caspi, Manuel Reyes-Gomez

TL;DR
This paper introduces probabilistic index maps, a novel signal representation that captures structural variability by modeling local measurements as probability distributions over discrete indices, improving robustness in vision and speech tasks.
Contribution
It proposes a new probabilistic index map framework that enhances modeling of natural signals by capturing local measurement variability with estimated probability distributions.
Findings
Improves invariance to non-structural changes in signals.
Reduces computational costs for modeling complex signals.
Demonstrates benefits in vision and speech applications.
Abstract
One of the major problems in modeling natural signals is that signals with very similar structure may locally have completely different measurements, e.g., images taken under different illumination conditions, or the speech signal captured in different environments. While there have been many successful attempts to address these problems in application-specific settings, we believe that underlying a large set of problems in signal representation is a representational deficiency of intensity-derived local measurements that are the basis of most efficient models. We argue that interesting structure in signals is better captured when the signal is de- fined as a matrix whose entries are discrete indices to a separate palette of possible measurements. In order to model the variability in signal structure, we define a signal class not by a single index map, but by a probability distribution…
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Taxonomy
TopicsBlind Source Separation Techniques · Advanced Data Compression Techniques · Neural Networks and Applications
