Search
Menu
Teledyne DALSA - Linea HS2 11/24 LB

Ozcan Group Improves Inference Accuracy for All-Optical Diffractive Neural Networks

Facebook X LinkedIn Email
LOS ANGELES, Aug. 13, 2019 — In new research, scientists from the lab of professor Aydogan Ozcan at UCLA have demonstrated distinct improvements to the inference and generalization performance of diffractive optical neural networks. The researchers demonstrated a differential detection scheme where each class is assigned to a separate pair of photodetectors, behind a diffractive optical network. The class inference is made by maximizing the normalized signal difference between the photodetector pairs. Using this scheme, which involved 10 photodetector pairs behind five diffractive layers with a total of 0.2...Read full article

Related content from Photonics Media



    Articles


    Products


    Photonics Handbook Articles


    White Papers


    Webinars


    Photonics Dictionary Terms


    Media


    Photonics Buyers' Guide Categories


    Companies
    Published: August 2019
    Glossary
    computational imaging
    Computational imaging refers to the use of computational techniques, algorithms, and hardware to enhance or enable imaging capabilities beyond what traditional optical systems can achieve. It involves the integration of digital processing with imaging systems to improve image quality, extract additional information from captured data, or enable novel imaging functionalities. Principles: Computational imaging combines optics, digital signal processing, and algorithms to manipulate and...
    Research & TechnologyeducationAmericasUCLAImagingLight SourcesOpticsSensors & Detectorscamerasneural networksroboticssmart camerasautomotiveautonomous vehiclescomputational imagingdiffractive optical neural networksdefenseAydogan Ozcan

    We use cookies to improve user experience and analyze our website traffic as stated in our Privacy Policy. By using this website, you agree to the use of cookies unless you have disabled them.