Publication | Closed Access
ROQ: A Noise-Aware Quantization Scheme Towards Robust Optical Neural Networks with Low-bit Controls
32
Citations
17
References
2020
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningLow-bit ControlsOptical ComputingQuantum ComputingSparse Neural NetworkEmbedded Machine LearningOptical CommunicationOptical SystemsOptical NetworkingOptical Neural NetworksPhotonicsComputer EngineeringDeep LearningNeural Architecture SearchSignal ProcessingQuantization (Signal Processing)Model CompressionDeep Learning AccelerationNoise RobustnessOptical Logic Gate
Optical neural networks (ONNs) demonstrate orders-of-magnitude higher speed in deep learning acceleration than their electronic counterparts. However, limited control precision and device variations induce accuracy degradation in practical ONN implementations. To tackle this issue, we propose a quantization scheme that adapts a full-precision ONN to low-resolution voltage controls. Moreover, we propose a protective regularization technique that dynamically penalizes quantized weights based on their estimated noise-robustness, leading to an improvement in noise robustness. Experimental results show that the proposed scheme effectively adapts ONNs to limited-precision controls and device variations. The resultant four-layer ONN demonstrates higher inference accuracy with lower variances than baseline methods under various control precisions and device noises.
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