Semantic inference pt v2m2
- operators.ml3d.semantic_inference_pt_v2m2(client, data_in_path='in.laz', in_model_parameters_path='trained_model/model_ptv2m2', out_label_path='out.labels', out_probability_path='out.npy', class_names='1,2,3,4,5,6,7,8', feature_names='red,green,blue', point_names='X,Y,Z', label_name='classification', resolution=0.05, number_of_votes=5, instance_type='P2')
- PT v2m2 Inference
- semantic_inference_pt_v2m2( client,data_in_path=’in.laz’,in_model_parameters_path=’trained_model/model_ptv2m2’,out_label_path=’out.labels’,out_probability_path=’out.npy’,class_names=’1,2,3,4,5,6,7,8’,feature_names=’red,green,blue’,point_names=’X,Y,Z’,label_name=’classification’,resolution=0.05,number_of_votes=5,instance_type=’P2’ )
- Parameters:
data_in_path – path that contains the test data
in_model_parameters_path – path to model
out_label_path – path that contains the results
out_probability_path – path that contains the results
class_names – comma separated list of class names. Class 0 is always given and is used to denote unlabeled points.
feature_names – comma separated list of features that are provided
point_names – comma separated list of point identifiers in (las/laz)
label_name – label name for (las/laz)
resolution – resolution of the subsampled point cloud
number_of_votes – number of votes
instance_type – type of cloud instance used for processing