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A Survey on RGB-D Datasets

2022-01-15 05:35:19
Alexandre Lopes, Roberto Souza, Helio Pedrini

Abstract

RGB-D data is essential for solving many problems in computer vision. Hundreds of public RGB-D datasets containing various scenes, such as indoor, outdoor, aerial, driving, and medical, have been proposed. These datasets are useful for different applications and are fundamental for addressing classic computer vision tasks, such as monocular depth estimation. This paper reviewed and categorized image datasets that include depth information. We gathered 203 datasets that contain accessible data and grouped them into three categories: scene/objects, body, and medical. We also provided an overview of the different types of sensors, depth applications, and we examined trends and future directions of the usage and creation of datasets containing depth data, and how they can be applied to investigate the development of generalizable machine learning models in the monocular depth estimation field.

Abstract (translated)

URL

https://arxiv.org/abs/2201.05761

PDF

https://arxiv.org/pdf/2201.05761.pdf


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