Improved performance of function geometry::PointCloud::RemoveRadiusOutliers, function geometry::ClusterDBSCAN and feature counting #6676
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Type
Motivation and Context
Performance improvements.
Checklist:
python util/check_style.py --apply
to apply Open3D code styleto my code.
updated accordingly.
results (e.g. screenshots or numbers) here.
Description
2.0 When clustering in PointCloud::ClusterDBSCAN, a set of visited points is created for each new cluster. Elements are added to this set based on the presence of a certain label. This set is subsequently used to add elements to the set of unvisited points. The same thing can be done much more efficiently based only on labels.
2.1 And there is also no need to represent the collection of unvisited points as an unordered set, given that the only difference is the additional protection against duplication when adding a new element.