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An undercomplete autoencoder for denoising computational 3D sectional images

Publication Type : Conference Proceedings

Source : Imaging and Applied Optics Congress

Campus : Amaravati

School : School of Engineering

Year : 2022

Abstract : We developed a deep stacked undercomplete autoencoder (i.e., supervised) network to denoise the noisy 3D sectional images. Results demonstrate the feasibility of our proposed model in terms of peak-signal-to-noise ratio.

Cite this Research Publication : Vineela Chandra Dodda, Lakshmi Kuruguntla, Karthikeyan Elumalai, Inbarasan Muniraj, Sunil Chinnadurai, “An undercomplete autoencoder for denoising computational 3D sectional images”, Imaging and Applied Optics Congress, Canada, 2022.

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