Published on 23 October 2020
A Multispectral Light Field Dataset for Light Field Deep Learning
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Deep learning undoubtedly has had a huge impact on the computer vision community in recent years. In light field imaging, machine learning-based applications have significantly outperformed their conventional counterparts. Furthermore, multi- and hyperspectral light fields have shown promising results in light field-related applications such as disparity or shape estimation. Yet, a multispectral light field data-set, enabling data-driven approaches, is missing. Therefore, we propose a new synthetic multispectral light field dataset with depth and disparity ground truth. The dataset consists of a training, validation and test dataset, containing light fields of randomly generated scenes, as well as a challenge dataset rendered from hand-crafted scenes enabling detailed performance assessment.
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Publication Details
Subfield
Instrumentation
Field
Physics and Astronomy
Domain
Physical Sciences
Confidence Score
47%
Source
Scholar Data Model