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Perceptually motivated loss functions for computer generated holographic displays

Fan Yang, Andrew Kadis, Ralf Mouthaan, Benjamin Wetherfield, Andrzej Kaczorowski, Timothy D. Wilkinson

2022Scientific Reports15 citationsDOIOpen Access PDF

Abstract

Understanding and improving the perceived quality of reconstructed images is key to developing computer-generated holography algorithms for high-fidelity holographic displays. However, current algorithms are typically optimized using mean squared error, which is widely criticized for its poor correlation with perceptual quality. In our work, we present a comprehensive analysis of employing contemporary image quality metrics (IQM) as loss functions in the hologram optimization process. Extensive objective and subjective assessment of experimentally reconstructed images reveal the relative performance of IQM losses for hologram optimization. Our results reveal that the perceived image quality improves considerably when the appropriate IQM loss function is used, highlighting the value of developing perceptually-motivated loss functions for hologram optimization.

Topics & Concepts

HolographyComputer scienceImage qualityHigh fidelityFidelityPerceptionProcess (computing)Artificial intelligenceMean squared errorImage (mathematics)Quality (philosophy)Function (biology)Key (lock)Computer visionOpticsStatisticsMathematicsTelecommunicationsPhysicsEvolutionary biologyAcousticsQuantum mechanicsComputer securityOperating systemNeuroscienceBiologyAdvanced Optical Imaging TechnologiesImage and Video Quality AssessmentDigital Holography and Microscopy
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