Publication | Open Access
Complex-valued universal linear transformations and image encryption using spatially incoherent diffractive networks
19
Citations
33
References
2024
Year
Convolutional Neural NetworkEngineeringMachine LearningComputational IlluminationOptical ComputingImage AnalysisDifferentiable RenderingComputational ImagingOptical SystemsPhotonicsComputer EngineeringCoherent LightComputer ScienceDeep LearningOptical Image RecognitionIncoherent Diffractive NetworksComputer VisionCryptographyOptical ProcessorImage TransmissionImage EncryptionDiffractive Optic
As an optical processor, a diffractive deep neural network (D2NN) utilizes engineered diffractive surfaces designed through machine learning to perform all-optical information processing, completing its tasks at the speed of light propagation through thin optical layers. With sufficient degrees of freedom, D2NNs can perform arbitrary complex-valued linear transformations using spatially coherent light. Similarly, D2NNs can also perform arbitrary linear intensity transformations with spatially incoherent illumination; however, under spatially incoherent light, these transformations are nonnegative, acting on diffraction-limited optical intensity patterns at the input field of view. Here, we expand the use of spatially incoherent D2NNs to complex-valued information processing for executing arbitrary complex-valued linear transformations using spatially incoherent light. Through simulations, we show that as the number of optimized diffractive features increases beyond a threshold dictated by the multiplication of the input and output space-bandwidth products, a spatially incoherent diffractive visual processor can approximate any complex-valued linear transformation and be used for all-optical image encryption using incoherent illumination. The findings are important for the all-optical processing of information under natural light using various forms of diffractive surface-based optical processors.
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