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test_models.py
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test_models.py
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#
#
# 0=================================0
# | Kernel Point Convolutions |
# 0=================================0
#
#
# ----------------------------------------------------------------------------------------------------------------------
#
# Callable script to start a training on ModelNet40 dataset
#
# ----------------------------------------------------------------------------------------------------------------------
#
# Hugues THOMAS - 06/03/2020
#
# ----------------------------------------------------------------------------------------------------------------------
#
# Imports and global variables
# \**********************************/
#
# Common libs
import signal
import os
import numpy as np
import sys
import torch
# Dataset
from datasets.ModelNet40 import *
from datasets.S3DIS import *
from datasets.SensatUrban import *
from datasets.SemanticKitti import *
from datasets.Toronto3D import *
from torch.utils.data import DataLoader
from utils.config import Config
from utils.tester import ModelTester
from models.architectures import KPCNN, KPFCNN
# ----------------------------------------------------------------------------------------------------------------------
#
# Main Call
# \***************/
#
def model_choice(chosen_log):
###########################
# Call the test initializer
###########################
# Automatically retrieve the last trained model
if chosen_log in ['last_ModelNet40', 'last_ShapeNetPart', 'last_S3DIS', 'last_sensaturban']:
# Dataset name
test_dataset = '_'.join(chosen_log.split('_')[1:])
# List all training logs
logs = np.sort([os.path.join('results', f) for f in os.listdir('results') if f.startswith('Log')])
# Find the last log of asked dataset
for log in logs[::-1]:
log_config = Config()
log_config.load(log)
if log_config.dataset.startswith(test_dataset):
chosen_log = log
break
if chosen_log in ['last_ModelNet40', 'last_ShapeNetPart', 'last_S3DIS', 'last_SensatUrban']:
raise ValueError('No log of the dataset "' + test_dataset + '" found')
# Check if log exists
if not os.path.exists(chosen_log):
raise ValueError('The given log does not exists: ' + chosen_log)
return chosen_log
# ----------------------------------------------------------------------------------------------------------------------
#
# Main Call
# \***************/
#
if __name__ == '__main__':
###############################
# Choose the model to visualize
###############################
# Here you can choose which model you want to test with the variable test_model. Here are the possible values :
#
# > 'last_XXX': Automatically retrieve the last trained model on dataset XXX
# > '(old_)results/Log_YYYY-MM-DD_HH-MM-SS': Directly provide the path of a trained model
chosen_log = 'results/Log_2024-05-14_21-04-36'
# Choose the index of the checkpoint to load OR None if you want to load the current checkpoint
chkp_idx = -1
# Choose to test on validation or test split
on_val = True
# Deal with 'last_XXXXXX' choices
chosen_log = model_choice(chosen_log)
############################
# Initialize the environment
############################
# Set which gpu is going to be used
GPU_ID = '0'
# Set GPU visible device
os.environ['CUDA_VISIBLE_DEVICES'] = GPU_ID
###############
# Previous chkp
###############
# Find all checkpoints in the chosen training folder
chkp_path = os.path.join(chosen_log, 'checkpoints')
chkps = [f for f in os.listdir(chkp_path) if f[:4] == 'chkp']
# Find which snapshot to restore
if chkp_idx is None:
chosen_chkp = 'current_chkp.tar'
else:
chosen_chkp = np.sort(chkps)[chkp_idx]
chosen_chkp = os.path.join(chosen_log, 'checkpoints', chosen_chkp)
# Initialize configuration class
config = Config()
config.load(chosen_log)
##################################
# Change model parameters for test
##################################
# Change parameters for the test here. For example, you can stop augmenting the input data.
#config.augment_noise = 0.0001
#config.augment_symmetries = False
#config.batch_num = 3
#config.in_radius = 4
config.validation_size = 200
config.input_threads = 10
##############
# Prepare Data
##############
print()
print('Data Preparation')
print('****************')
if on_val:
set = 'validation'
else:
set = 'test'
# Initiate dataset
if config.dataset == 'ModelNet40':
test_dataset = ModelNet40Dataset(config, train=False)
test_sampler = ModelNet40Sampler(test_dataset)
collate_fn = ModelNet40Collate
elif config.dataset == 'S3DIS':
test_dataset = S3DISDataset(config, set='validation', use_potentials=True)
test_sampler = S3DISSampler(test_dataset)
collate_fn = S3DISCollate
elif config.dataset == 'SensatUrban':
test_dataset = SensatUrbanDataset(config, set='validation', use_potentials=True)
test_sampler = SensatUrbanSampler(test_dataset)
collate_fn = SensatUrbanCollate
elif config.dataset == 'Toronto3D':
test_dataset = Toronto3DDataset(config, set='test', use_potentials=True)
test_sampler = Toronto3DSampler(test_dataset)
collate_fn = Toronto3DCollate
elif config.dataset == 'SemanticKitti':
test_dataset = SemanticKittiDataset(config, set=set, balance_classes=False)
test_sampler = SemanticKittiSampler(test_dataset)
collate_fn = SemanticKittiCollate
else:
raise ValueError('Unsupported dataset : ' + config.dataset)
# Data loader
test_loader = DataLoader(test_dataset,
batch_size=1,
sampler=test_sampler,
collate_fn=collate_fn,
num_workers=config.input_threads,
pin_memory=True)
# Calibrate samplers
test_sampler.calibration(test_loader, verbose=True)
print('\nModel Preparation')
print('*****************')
# Define network model
t1 = time.time()
if config.dataset_task == 'classification':
net = KPCNN(config)
elif config.dataset_task in ['cloud_segmentation', 'slam_segmentation']:
net = KPFCNN(config, test_dataset.label_values, test_dataset.ignored_labels)
else:
raise ValueError('Unsupported dataset_task for testing: ' + config.dataset_task)
# Define a visualizer class
tester = ModelTester(net, chkp_path=chosen_chkp)
print('Done in {:.1f}s\n'.format(time.time() - t1))
print('\nStart test')
print('**********\n')
# Training
if config.dataset_task == 'classification':
tester.classification_test(net, test_loader, config)
elif config.dataset_task == 'cloud_segmentation':
tester.cloud_segmentation_test(net, test_loader, config)
elif config.dataset_task == 'slam_segmentation':
tester.slam_segmentation_test(net, test_loader, config)
else:
raise ValueError('Unsupported dataset_task for testing: ' + config.dataset_task)