3D Point Cloud Clustering Tutorial with K-means and Python
If you are on the quest for a (Supervised) Deep Learning algorithm for semantic segmentation -- keywords alert -- you certainly have found yourself searching for some high-quality labels a high quantity of data points. In our 3D data world, the unlabelled nature of the 3D point clouds makes it particularly challenging to answer both criteria: without any good training set, it is hard to "train" any predictive model. Should we explore python tricks and add them to our quiver to quickly produce awesome 3D labeled point cloud datasets? Let us dive right in! Why unsupervised segmentation & clustering is the "bulk of AI"? Deep Learning (DL) through supervised systems is extremely useful. DL architectures have profoundly changed the technological landscape in the last years.
Apr-26-2022, 08:27:38 GMT