Litcius/Paper detail

Three-Dimensional Point Cloud Applications, Datasets, and Compression Methodologies for Remote Sensing: A Meta-Survey

Emil Dumić, Luís A. da Silva Cruz

2025Sensors8 citationsDOIOpen Access PDF

Abstract

This meta-survey provides a comprehensive review of 3D point cloud (PC) applications in remote sensing (RS), essential datasets available for research and development purposes, and state-of-the-art point cloud compression methods. It offers a comprehensive exploration of the diverse applications of point clouds in remote sensing, including specialized tasks within the field, precision agriculture-focused applications, and broader general uses. Furthermore, datasets that are commonly used in remote-sensing-related research and development tasks are surveyed, including urban, outdoor, and indoor environment datasets; vehicle-related datasets; object datasets; agriculture-related datasets; and other more specialized datasets. Due to their importance in practical applications, this article also surveys point cloud compression technologies from widely used tree- and projection-based methods to more recent deep learning (DL)-based technologies. This study synthesizes insights from previous reviews and original research to identify emerging trends, challenges, and opportunities, serving as a valuable resource for advancing the use of point clouds in remote sensing.

Topics & Concepts

Point cloudComputer scienceCloud computingData scienceRemote sensingField (mathematics)Resource (disambiguation)Point (geometry)Remote sensing applicationEmerging technologiesData miningGeographyArtificial intelligencePure mathematicsMathematicsOperating systemGeometryComputer networkHyperspectral imagingRemote Sensing and LiDAR Applications3D Shape Modeling and Analysis3D Surveying and Cultural Heritage