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Does deep learning always outperform simple linear regression in optical imaging?

Shuming Jiao, Yang Gao, Jun Feng, Ting Lei, Xiaocong Yuan

2020Optics Express64 citationsDOIOpen Access PDF

Abstract

Deep learning has been extensively applied in many optical imaging problems in recent years. Despite the success, the limitations and drawbacks of deep learning in optical imaging have been seldom investigated. In this work, we show that conventional linear-regression-based methods can outperform the previously proposed deep learning approaches for two black-box optical imaging problems in some extent. Deep learning demonstrates its weakness especially when the number of training samples is small. The advantages and disadvantages of linear-regression-based methods and deep learning are analyzed and compared. Since many optical systems are essentially linear, a deep learning network containing many nonlinearity functions sometimes may not be the most suitable option.

Topics & Concepts

Deep learningArtificial intelligenceComputer scienceMachine learningArtificial neural networkOptical imagingPattern recognition (psychology)Deep neural networksSimple (philosophy)Convolutional neural networkAlgorithmRegressionMedical imagingOptical computingNeural Networks and Reservoir ComputingRandom lasers and scattering mediaAdaptive optics and wavefront sensing