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generate.py
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generate.py
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import torch
import os
import shutil
import argparse
from tqdm import tqdm
import time
from collections import defaultdict
import pandas as pd
from src import config
from src.checkpoints import CheckpointIO
from src.utils.io import export_pointcloud
from src.utils.visualize import visualize_data
from src.utils.voxels import VoxelGrid
parser = argparse.ArgumentParser(
description='Extract meshes from occupancy process.'
)
parser.add_argument('config', type=str, help='Path to config file.')
parser.add_argument('--no-cuda', action='store_true', help='Do not use cuda.')
args = parser.parse_args()
cfg = config.load_config(args.config, 'configs/default.yaml')
is_cuda = (torch.cuda.is_available() and not args.no_cuda)
device = torch.device("cuda" if is_cuda else "cpu")
out_dir = cfg['training']['out_dir']
generation_dir = os.path.join(out_dir, cfg['generation']['generation_dir'])
out_time_file = os.path.join(generation_dir, 'time_generation_full.pkl')
out_time_file_class = os.path.join(generation_dir, 'time_generation.pkl')
input_type = cfg['data']['input_type']
vis_n_outputs = cfg['generation']['vis_n_outputs']
if vis_n_outputs is None:
vis_n_outputs = -1
# Dataset
dataset = config.get_dataset('test', cfg, return_idx=True)
# Model
model = config.get_model(cfg, device=device, dataset=dataset)
checkpoint_io = CheckpointIO(out_dir, model=model)
checkpoint_io.load(cfg['test']['model_file'])
# Generator
generator = config.get_generator(model, cfg, device=device)
# Determine what to generate
generate_mesh = cfg['generation']['generate_mesh']
generate_pointcloud = cfg['generation']['generate_pointcloud']
if generate_mesh and not hasattr(generator, 'generate_mesh'):
generate_mesh = False
print('Warning: generator does not support mesh generation.')
if generate_pointcloud and not hasattr(generator, 'generate_pointcloud'):
generate_pointcloud = False
print('Warning: generator does not support pointcloud generation.')
# Loader
test_loader = torch.utils.data.DataLoader(
dataset, batch_size=1, num_workers=0, shuffle=False)
# Statistics
time_dicts = []
# Generate
model.eval()
# Count how many models already created
model_counter = defaultdict(int)
for it, data in enumerate(tqdm(test_loader)):
# Output folders
mesh_dir = os.path.join(generation_dir, 'meshes')
pointcloud_dir = os.path.join(generation_dir, 'pointcloud')
in_dir = os.path.join(generation_dir, 'input')
generation_vis_dir = os.path.join(generation_dir, 'vis')
# Get index etc.
idx = data['idx'].item()
try:
model_dict = dataset.get_model_dict(idx)
except AttributeError:
model_dict = {'model': str(idx), 'category': 'n/a'}
modelname = model_dict['model']
category_id = model_dict.get('category', 'n/a')
try:
category_name = dataset.metadata[category_id].get('name', 'n/a')
except AttributeError:
category_name = 'n/a'
if category_id != 'n/a':
mesh_dir = os.path.join(mesh_dir, str(category_id))
pointcloud_dir = os.path.join(pointcloud_dir, str(category_id))
in_dir = os.path.join(in_dir, str(category_id))
folder_name = str(category_id)
if category_name != 'n/a':
folder_name = str(folder_name) + '_' + category_name.split(',')[0]
generation_vis_dir = os.path.join(generation_vis_dir, folder_name)
# Create directories if necessary
if vis_n_outputs >= 0 and not os.path.exists(generation_vis_dir):
os.makedirs(generation_vis_dir)
if generate_mesh and not os.path.exists(mesh_dir):
os.makedirs(mesh_dir)
if generate_pointcloud and not os.path.exists(pointcloud_dir):
os.makedirs(pointcloud_dir)
if not os.path.exists(in_dir):
os.makedirs(in_dir)
# Timing dict
time_dict = {
'idx': idx,
'class id': category_id,
'class name': category_name,
'modelname': modelname,
}
time_dicts.append(time_dict)
# Generate outputs
out_file_dict = {}
# Also copy ground truth
if cfg['generation']['copy_groundtruth']:
modelpath = os.path.join(
dataset.dataset_folder, category_id, modelname,
cfg['data']['watertight_file'])
out_file_dict['gt'] = modelpath
if generate_mesh:
t0 = time.time()
if cfg['generation']['sliding_window']:
if it == 0:
print('Process scenes in a sliding-window manner')
out = generator.generate_mesh_sliding(data)
else:
out = generator.generate_mesh(data)
time_dict['mesh'] = time.time() - t0
# Get statistics
try:
mesh, stats_dict = out
except TypeError:
mesh, stats_dict = out, {}
time_dict.update(stats_dict)
# Write output
mesh_out_file = os.path.join(mesh_dir, '%s.off' % modelname)
mesh.export(mesh_out_file)
out_file_dict['mesh'] = mesh_out_file
if generate_pointcloud:
t0 = time.time()
pointcloud = generator.generate_pointcloud(data)
time_dict['pcl'] = time.time() - t0
pointcloud_out_file = os.path.join(
pointcloud_dir, '%s.ply' % modelname)
export_pointcloud(pointcloud, pointcloud_out_file)
out_file_dict['pointcloud'] = pointcloud_out_file
if cfg['generation']['copy_input']:
# Save inputs
if input_type == 'voxels':
inputs_path = os.path.join(in_dir, '%s.off' % modelname)
inputs = data['inputs'].squeeze(0).cpu()
voxel_mesh = VoxelGrid(inputs).to_mesh()
voxel_mesh.export(inputs_path)
out_file_dict['in'] = inputs_path
elif input_type == 'pointcloud_crop':
inputs_path = os.path.join(in_dir, '%s.ply' % modelname)
inputs = data['inputs'].squeeze(0).cpu().numpy()
export_pointcloud(inputs, inputs_path, False)
out_file_dict['in'] = inputs_path
elif input_type == 'pointcloud' or 'partial_pointcloud':
inputs_path = os.path.join(in_dir, '%s.ply' % modelname)
inputs = data['inputs'].squeeze(0).cpu().numpy()
export_pointcloud(inputs, inputs_path, False)
out_file_dict['in'] = inputs_path
# Copy to visualization directory for first vis_n_output samples
c_it = model_counter[category_id]
if c_it < vis_n_outputs:
# Save output files
img_name = '%02d.off' % c_it
for k, filepath in out_file_dict.items():
ext = os.path.splitext(filepath)[1]
out_file = os.path.join(generation_vis_dir, '%02d_%s%s'
% (c_it, k, ext))
shutil.copyfile(filepath, out_file)
model_counter[category_id] += 1
# Create pandas dataframe and save
time_df = pd.DataFrame(time_dicts)
time_df.set_index(['idx'], inplace=True)
time_df.to_pickle(out_time_file)
# Create pickle files with main statistics
time_df_class = time_df.groupby(by=['class name']).mean()
time_df_class.to_pickle(out_time_file_class)
# Print results
time_df_class.loc['mean'] = time_df_class.mean()
print('Timings [s]:')
print(time_df_class)