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Signal estimation and filtering from quantized observations via adaptive stochastic resonance

Fei Li, Fabing Duan, François Chapeau‐Blondeau, Derek Abbott

2021Physical review. E22 citationsDOIOpen Access PDF

Abstract

Using a gradient-based algorithm, we investigate signal estimation and filtering in a large-scale summing network of single-bit quantizers. Besides adjusting weights, the proposed learning algorithm also adaptively updates the level of added noise components that are intentionally injected into quantizers. Experimental results show that minimization of the mean-squared error requires a nonzero optimal level of the added noise. The process adaptively achieves in this way a form of stochastic resonance or noise-aided signal processing. This adaptive optimization method of the level of added noise extends the application of adaptive stochastic resonance to some complex nonlinear signal processing tasks.

Topics & Concepts

Stochastic resonanceNoise (video)Computer scienceAdaptive filterSIGNAL (programming language)AlgorithmSignal processingNonlinear systemMinificationArtificial intelligencePhysicsDigital signal processingImage (mathematics)Quantum mechanicsProgramming languageComputer hardwarestochastic dynamics and bifurcationNeural dynamics and brain functionProbabilistic and Robust Engineering Design
Signal estimation and filtering from quantized observations via adaptive stochastic resonance | Litcius