2023
DOI: 10.3390/jimaging10010007
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Fast Data Generation for Training Deep-Learning 3D Reconstruction Approaches for Camera Arrays

Théo Barrios,
Stéphanie Prévost,
Céline Loscos

Abstract: In the last decade, many neural network algorithms have been proposed to solve depth reconstruction. Our focus is on reconstruction from images captured by multi-camera arrays which are a grid of vertically and horizontally aligned cameras that are uniformly spaced. Training these networks using supervised learning requires data with ground truth. Existing datasets are simulating specific configurations. For example, they represent a fixed-size camera array or a fixed space between cameras. When the distance b… Show more

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