LGITMLJun 16, 2020

Focus of Attention Improves Information Transfer in Visual Features

arXiv:2006.09229v111 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of processing visual streams in an online setting for applications like computer vision, though it appears incremental as it builds on existing information maximization principles.

The paper tackles unsupervised learning from continuous visual streams by introducing a focus of attention model based on second-order differential equations, which improves information transfer from input to visual features, showing increased information transfer over focused areas and sometimes whole frames compared to uniform distributions.

Unsupervised learning from continuous visual streams is a challenging problem that cannot be naturally and efficiently managed in the classic batch-mode setting of computation. The information stream must be carefully processed accordingly to an appropriate spatio-temporal distribution of the visual data, while most approaches of learning commonly assume uniform probability density. In this paper we focus on unsupervised learning for transferring visual information in a truly online setting by using a computational model that is inspired to the principle of least action in physics. The maximization of the mutual information is carried out by a temporal process which yields online estimation of the entropy terms. The model, which is based on second-order differential equations, maximizes the information transfer from the input to a discrete space of symbols related to the visual features of the input, whose computation is supported by hidden neurons. In order to better structure the input probability distribution, we use a human-like focus of attention model that, coherently with the information maximization model, is also based on second-order differential equations. We provide experimental results to support the theory by showing that the spatio-temporal filtering induced by the focus of attention allows the system to globally transfer more information from the input stream over the focused areas and, in some contexts, over the whole frames with respect to the unfiltered case that yields uniform probability distributions.

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