Training phase : classification of the point cloud
Posted: Wed Oct 18, 2023 5:52 pm
As I understand, for the training phase of 3DMASC, we need a classified point cloud.
In his tutorial videos, M. Kharroubi (previous post: https://www.linkedin.com/pulse/automati ... bderrazzaq) uses a cloud already well classified, to train his classifier. This way, the classifier can know if the points predicted match the real points. In real life, we need a classifier especially because we need to classify a "raw data" point cloud.
Therefore, if we don't have a classified point cloud of our region of interest, can we proceed in the same way we did with the CANUPO plugin and select just a few bits of the point cloud, assigning those to vegetation or ground (let's say my goal is to remove vegetation)?
Thank you for the feedback,
Madeleine
In his tutorial videos, M. Kharroubi (previous post: https://www.linkedin.com/pulse/automati ... bderrazzaq) uses a cloud already well classified, to train his classifier. This way, the classifier can know if the points predicted match the real points. In real life, we need a classifier especially because we need to classify a "raw data" point cloud.
Therefore, if we don't have a classified point cloud of our region of interest, can we proceed in the same way we did with the CANUPO plugin and select just a few bits of the point cloud, assigning those to vegetation or ground (let's say my goal is to remove vegetation)?
Thank you for the feedback,
Madeleine