Claims
- 1. An optical neural network for finding at least one minimum of a system energy function comprising
- means for forming an array of saturable optical amplifiers into an optical neuron array having inputs and outputs,
- means for forming an adaptive and bipolar global optical interconnect for multiplying the outputs of said optical neuron array by an interconnect matrix and for optically interconnecting the result to the inputs of said array to form a recurrent, resonant network,
- optical input means for receiving an input signal and for structuring the interconnect matrix from an inputted training set, and
- means for supplying gain to achieve convergent, resonant operation of said network so that operation of said optical neural network finds system energy function minima.
- 2. An optical neural network of claim 1 wherein:
- said optical interconnect means includes holographic interconnect means for interconnecting said optical neurons.
- 3. An optical neural network of claim 1 wherein:
- said optical input means comprises an optical beamsplitter.
- 4. An optical neural network of claim 1 wherein:
- said interconnect means includes adaptive interconnect means for adaptively interconnecting said optical neurons.
- 5. An optical neural network of claim 1 wherein:
- said interconnect means includes photorefractive interconnect means for interconnecting said optical neurons in a photorefractive material.
- 6. An optical neural network of claim 5 wherein:
- said interconnect means includes first and second photorefractive crystals independently located in said resonator.
- 7. An optical neural network of claim 1 wherein:
- said interconnect means includes volume hologram means for forming at least one volume hologram in said resonator.
- 8. An optical neural network of claim 1 wherein:
- said gain means includes means for supplying both linear and nonlinear gain in said network.
- 9. An optical neural network of claim 8 wherein:
- said nonlinear gain means includes at least one photorefractive crystal and means for supplying a coherent pump beam to said crystal.
- 10. An optical neural network of claim 9 wherein:
- said pump beam intersects one of said photorefractive crystals at an angle so as to effectively only intersect one neural volume within said crystal.
- 11. An optical neural network of claim 9 wherein:
- said gain means includes two photorefractive crystals each having a means for supplying a coherent pump beam to the respective crystals and where the coherent pump beams intersect the respective crystals at different effective angles.
- 12. An optical neural network of claim 8 wherein:
- said nonlinear gain means includes means for supplying a coherent pump beam which only intersects one neural volume in said network.
- 13. An optical neural network of claim 1 wherein:
- said interconnect means includes Fourier-space and object-space hologram means for holographically interconnecting optical neurons in said network.
- 14. An optical neural network of claim 12 further including:
- means for generating a common reference beam for said Fourier-space and said object-space hologram means.
- 15. An optical neural network of claim 1 further including:
- phase encoding means operatively associated in said network with said neuron interconnect means for supplying a phase-encoded optical signal to said neuron interconnect means.
- 16. An optical neural network which comprises:
- a ring resonator including a saturable amplifier, first and second volume holograms, and a linear amplifier,
- said saturable amplifier in association with a spatially patterned input signal beam forming a two-dimensional optical neuron array,
- said first and second volume holograms forming an adaptive and bipolar global network interconnect, and
- said linear amplifier for supplying gain for resonant convergent operation of said network.
- 17. An optical neural network of claim 16 wherein:
- said first hologram comprises a Fourier-space hologram, and
- said second hologram comprises an object-space hologram.
- 18. An optical neural network of claim 16 further including:
- a phase encoder operatively associated in said network with said first and second holograms for supplying a phase-encoded optical signal to said first hologram.
- 19. An optical neural network of claim 16 wherein:
- said linear amplifier and said saturable amplifier each comprise two-beam photorefractive optical amplifiers.
- 20. An optical neural network of claim 16 wherein:
- said linear amplifier and said saturable amplifier each comprise a photorefractive barium titanate crystal, and
- said first and second holograms each comprise a photorefractive lithium niobate crystal.
- 21. The optical neural network as in claim 16 further including means for inputting a stimulus pattern into said resonator with a tilt incorporated into the phase front of said stimulus pattern.
CROSS-REFERENCE TO RELATED APPLICATION
Cross reference is made to our pending application Ser. No. 07/220,769, filed July 18, 1988, abandoned entitled Continuous-Time Optical Neural Network and Process, of which this application in a continuation.
CONTRACTUAL ORIGIN OF THE INVENTION
The United States Government has rights in this invention pursuant to Contract No. P.O. BX-1324 #5170-00-215 between the U.S. Air Force and Northrop Corporation.
US Referenced Citations (4)
Continuations (1)
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Number |
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220769 |
Jul 1988 |
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