An octree cells occupancy geometric dimensionality descriptor for massive on-server point cloud visualisation and classification
Remi Cura, Julien Perret, Nicolas Paparoditis

TL;DR
This paper introduces a new geometric descriptor based on octree occupancy variation to analyze local dimensionality in point clouds, enhancing classification and visualization of massive lidar datasets.
Contribution
The work proposes a novel octree-based local dimensionality descriptor that improves semantic classification and visualization of large point clouds.
Findings
Effective in classifying point cloud data
Outperforms existing dimensionality descriptors
Demonstrates efficiency on large datasets
Abstract
Lidar datasets are becoming more and more common. They are appreciated for their precise 3D nature, and have a wide range of applications, such as surface reconstruction, object detection, visualisation, etc. For all this applications, having additional semantic information per point has potential of increasing the quality and the efficiency of the application. In the last decade the use of Machine Learning and more specifically classification methods have proved to be successful to create this semantic information. In this paradigm, the goal is to classify points into a set of given classes (for instance tree, building, ground, other). Some of these methods use descriptors (also called feature) of a point to learn and predict its class. Designing the descriptors is then the heart of these methods. Descriptors can be based on points geometry and attributes, use contextual information,…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Advanced Optical Sensing Technologies · 3D Surveying and Cultural Heritage
