CVLGFeb 13, 2020

Chaotic Phase Synchronization and Desynchronization in an Oscillator Network for Object Selection

arXiv:2002.05493v154 citations
AI Analysis

This addresses the challenging task of object selection for computer vision and artificial visual systems, though it appears incremental as it builds on known chaotic synchronization mechanisms.

The paper tackled the problem of object selection in visual scenes by proposing an oscillator network model that uses chaotic phase synchronization to synchronize oscillators representing salient objects while desynchronizing background ones, enabling extraction of objects of interest, with computer simulations showing results similar to natural vision systems.

Object selection refers to the mechanism of extracting objects of interest while ignoring other objects and background in a given visual scene. It is a fundamental issue for many computer vision and image analysis techniques and it is still a challenging task to artificial visual systems. Chaotic phase synchronization takes place in cases involving almost identical dynamical systems and it means that the phase difference between the systems is kept bounded over the time, while their amplitudes remain chaotic and may be uncorrelated. Instead of complete synchronization, phase synchronization is believed to be a mechanism for neural integration in brain. In this paper, an object selection model is proposed. Oscillators in the network representing the salient object in a given scene are phase synchronized, while no phase synchronization occurs for background objects. In this way, the salient object can be extracted. In this model, a shift mechanism is also introduced to change attention from one object to another. Computer simulations show that the model produces some results similar to those observed in natural vision systems.

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