ERROR-CORRECTIVE OPTICAL NEURAL NETWORKS MODELED BY PERSISTENT SPECTRAL HOLE-BURNING

Citation
O. Ollikainen et al., ERROR-CORRECTIVE OPTICAL NEURAL NETWORKS MODELED BY PERSISTENT SPECTRAL HOLE-BURNING, Optical and quantum electronics, 25(9), 1993, pp. 190000569-190000585
Citations number
34
Categorie Soggetti
Optics,"Engineering, Eletrical & Electronic
ISSN journal
03068919
Volume
25
Issue
9
Year of publication
1993
Pages
190000569 - 190000585
Database
ISI
SICI code
0306-8919(1993)25:9<190000569:EONNMB>2.0.ZU;2-4
Abstract
We show that materials with the ability to form persistent spectral ho les under illumination have frequency as an additional optically paral lel accessible degree of freedom that may be incorporated into associa tive memory. This opens new possibilities for increasing the number of interconnections in optical models of neural networks. In our first e xample, a 144-element autoassociative memory matrix is constructed on two 12-bit vectors and has two dimensions (x and frequency omega). The probe vector at the memory input carries two erroneous bits (out of 1 2 bits) and is one-dimensional (spatial coordinate x); the memory out put - with the error bits corrected-is one-dimensional in frequency om ega. The second example uses memory input that is two-dimensional (ima ge in coordinates x, y); the memory matrix is four-dimensional (x, y, omega, t), where t (time coordinate) is given by the temporal delay of photochemically accumulated stimulated photon echo signal; memory out put is two-dimensional (omega and t) and corrects two bits out of the 1 2-bit vector. In the third example, quadratic autoassociative memory is coded in three dimensions (coordinates x, y, omega) and materializ es 32 x 32 x 32 = 32 768 optical interconnections; the probe vector is given as a 32 x 32 spatial matrix (coordinates x, y); the output is o ne-dimensional, consists of 32 bits along the frequency axis, and corr ects four erroneous bits.