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A Self-Supervised Deep Model for Focal Stacking

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Abstract

We propose to train a self-supervised autoencoder to extract image features and fuse focal stack images. Numerical experiments show the proposed method achieves better fusion performance, compared to traditional fusion method using Laplacian operator.

© 2022 The Author(s)

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