THREE-DIMENSIONAL POINT CLOUD APPLICATIONS, DATASETS, AND COMPRESSION METHODOLOGIES FOR REMOTE SENSING: A META-SURVEY

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

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

Blog Article

This meta-survey provides a comprehensive review of 3D point cloud (PC) applications in remote sensing jerome brown jersey (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 moondrop quarks 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.

Report this page