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gen_samples_forID.py
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gen_samples_forID.py
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''' Generate images and shapes using pretrained network pickle.
Code adapted from following paper
"Efficient Geometry-aware 3D Generative Adversarial Networks."
See LICENSES/LICENSE_EG3D for original license.
'''
import os
import re
from typing import List, Optional, Tuple, Union
import click
import dnnlib
import numpy as np
import PIL.Image
import torch
from tqdm import tqdm
import mrcfile
import legacy
from camera_utils import LookAtPoseSampler, FOV_to_intrinsics
from torch_utils import misc
from training.triplane import TriPlaneGenerator
#----------------------------------------------------------------------------
def parse_range(s: Union[str, List]) -> List[int]:
'''Parse a comma separated list of numbers or ranges and return a list of ints.
Example: '1,2,5-10' returns [1, 2, 5, 6, 7]
'''
if isinstance(s, list): return s
ranges = []
range_re = re.compile(r'^(\d+)-(\d+)$')
for p in s.split(','):
m = range_re.match(p)
if m:
ranges.extend(range(int(m.group(1)), int(m.group(2))+1))
else:
ranges.append(int(p))
return ranges
#----------------------------------------------------------------------------
def parse_vec2(s: Union[str, Tuple[float, float]]) -> Tuple[float, float]:
'''Parse a floating point 2-vector of syntax 'a,b'.
Example:
'0,1' returns (0,1)
'''
if isinstance(s, tuple): return s
parts = s.split(',')
if len(parts) == 2:
return (float(parts[0]), float(parts[1]))
raise ValueError(f'cannot parse 2-vector {s}')
#----------------------------------------------------------------------------
def make_transform(translate: Tuple[float,float], angle: float):
m = np.eye(3)
s = np.sin(angle/360.0*np.pi*2)
c = np.cos(angle/360.0*np.pi*2)
m[0][0] = c
m[0][1] = s
m[0][2] = translate[0]
m[1][0] = -s
m[1][1] = c
m[1][2] = translate[1]
return m
#----------------------------------------------------------------------------
def create_samples(N=256, voxel_origin=[0, 0, 0], cube_length=2.0):
# NOTE: the voxel_origin is actually the (bottom, left, down) corner, not the middle
voxel_origin = np.array(voxel_origin) - cube_length/2
voxel_size = cube_length / (N - 1)
overall_index = torch.arange(0, N ** 3, 1, out=torch.LongTensor())
samples = torch.zeros(N ** 3, 3)
# transform first 3 columns
# to be the x, y, z index
samples[:, 2] = overall_index % N
samples[:, 1] = (overall_index.float() / N) % N
samples[:, 0] = ((overall_index.float() / N) / N) % N
# transform first 3 columns
# to be the x, y, z coordinate
samples[:, 0] = (samples[:, 0] * voxel_size) + voxel_origin[2]
samples[:, 1] = (samples[:, 1] * voxel_size) + voxel_origin[1]
samples[:, 2] = (samples[:, 2] * voxel_size) + voxel_origin[0]
num_samples = N ** 3
return samples.unsqueeze(0), voxel_origin, voxel_size
#----------------------------------------------------------------------------
@click.command()
@click.option('--network', 'network_pkl', help='Network pickle filename', required=True)
@click.option('--seeds', type=parse_range, help='List of random seeds (e.g., \'0,1,4-6\')', required=True)
@click.option('--trunc', 'truncation_psi', type=float, help='Truncation psi', default=0.7, show_default=True)
@click.option('--trunc-cutoff', 'truncation_cutoff', type=int, help='Truncation cutoff', default=14, show_default=True)
@click.option('--class', 'class_idx', type=int, help='Class label (unconditional if not specified)')
@click.option('--outdir', help='Where to save the output images', type=str, required=True, metavar='DIR')
@click.option('--shapes', help='Export shapes as .mrc files viewable in ChimeraX', type=bool, required=False, metavar='BOOL', default=False, show_default=True)
@click.option('--shape-res', help='', type=int, required=False, metavar='int', default=512, show_default=True)
@click.option('--fov-deg', help='Field of View of camera in degrees', type=int, required=False, metavar='float', default=18.837, show_default=True)
@click.option('--shape-format', help='Shape Format', type=click.Choice(['.mrc', '.ply']), default='.mrc')
@click.option('--reload_modules', help='Overload persistent modules?', type=bool, required=False, metavar='BOOL', default=False, show_default=True)
@click.option('--pose_cond', type=int, help='pose_cond angle', default=90, show_default=True)
def generate_images(
network_pkl: str,
seeds: List[int],
truncation_psi: float,
truncation_cutoff: int,
outdir: str,
shapes: bool,
shape_res: int,
fov_deg: float,
shape_format: str,
class_idx: Optional[int],
reload_modules: bool,
pose_cond: int,
):
"""Generate images using pretrained network pickle.
Examples:
\b
# Generate an image using pre-trained FFHQ model.
python gen_samples.py --outdir=output --trunc=0.7 --seeds=0-5 --shapes=True\\
--network=ffhq-rebalanced-128.pkl
"""
print('Loading networks from "%s"...' % network_pkl)
device = torch.device('cuda:7')
with dnnlib.util.open_url(network_pkl) as f:
G = legacy.load_network_pkl(f)['G_ema'].to(device) # type: ignore
# Specify reload_modules=True if you want code modifications to take effect; otherwise uses pickled code
if reload_modules:
print("Reloading Modules!")
G_new = TriPlaneGenerator(*G.init_args, **G.init_kwargs).eval().requires_grad_(False).to(device)
misc.copy_params_and_buffers(G, G_new, require_all=True)
G_new.neural_rendering_resolution = G.neural_rendering_resolution
G_new.rendering_kwargs = G.rendering_kwargs
G = G_new
network_pkl = os.path.basename(network_pkl)
outdir = os.path.join(outdir, os.path.splitext(network_pkl)[0] + '_' + str(pose_cond))
os.makedirs(outdir, exist_ok=True)
pose_cond_rad = pose_cond/180*np.pi
intrinsics = FOV_to_intrinsics(fov_deg, device=device)
# Generate images.
for seed_idx, seed in enumerate(seeds):
print('Generating image for seed %d (%d/%d) ...' % (seed, seed_idx, len(seeds)))
# cond camera settings
cam_pivot = torch.tensor([0, 0, 0], device=device)
cam_radius = G.rendering_kwargs.get('avg_camera_radius', 2.7)
conditioning_cam2world_pose = LookAtPoseSampler.sample(pose_cond_rad, np.pi/2, cam_pivot, radius=cam_radius, device=device)
conditioning_params = torch.cat([conditioning_cam2world_pose.reshape(-1, 16), intrinsics.reshape(-1, 9)], 1)
# z and w
z = torch.from_numpy(np.random.RandomState(seed).randn(1, G.z_dim)).to(device)
# z1 = torch.from_numpy(np.random.RandomState(44).randn(1, G.z_dim)).to(device)
# ws_list = []
# ws_list.append(G.mapping(torch.from_numpy(np.random.RandomState(0).randn(1, G.z_dim)).to(device), conditioning_params, truncation_psi=truncation_psi, truncation_cutoff=truncation_cutoff))
# ws_list.append(G.mapping(torch.from_numpy(np.random.RandomState(0).randn(1, G.z_dim)).to(device), conditioning_params, truncation_psi=truncation_psi, truncation_cutoff=truncation_cutoff))
# ws_list.append(G.mapping(z1, conditioning_params, truncation_psi=truncation_psi, truncation_cutoff=truncation_cutoff))
imgs = []
# for angle_y, angle_p in [(2.1, angle_p), (1.05, angle_p), (0, angle_p), (-1.05, angle_p), (-2.1, angle_p)]:
for idx in range(2):
# -45~45
angle_y = (-45 + 90*np.random.random())/180*np.pi
# -0.2~0.2
angle_p = (-0.2 + 0.4*np.random.random())/180*np.pi
# rand camera setting
cam2world_pose = LookAtPoseSampler.sample(np.pi/2 + angle_y, np.pi/2 + angle_p, cam_pivot, radius=cam_radius, device=device)
camera_params = torch.cat([cam2world_pose.reshape(-1, 16), intrinsics.reshape(-1, 9)], 1)
ws = G.mapping(z, conditioning_params, truncation_psi=truncation_psi, truncation_cutoff=truncation_cutoff)
# img = G.synthesis(ws, camera_params, ws_bcg = ws_list[idx])['image']
img = G.synthesis(ws, camera_params)['image']
img = (img.permute(0, 2, 3, 1) * 127.5 + 128).clamp(0, 255).to(torch.uint8)
# imgs.append(img)
PIL.Image.fromarray(img[0].cpu().numpy(), 'RGB').save(f'{outdir}/seed{seed:04d}_{idx}.png')
# img = torch.cat(imgs, dim=2)
# PIL.Image.fromarray(img[0].cpu().numpy(), 'RGB').save(f'{outdir}/seed{seed:04d}.png')
if shapes:
# extract a shape.mrc with marching cubes. You can view the .mrc file using ChimeraX from UCSF.
max_batch=1000000
samples, voxel_origin, voxel_size = create_samples(N=shape_res, voxel_origin=[0, 0, 0], cube_length=G.rendering_kwargs['box_warp'] * 1)#.reshape(1, -1, 3)
samples = samples.to(z.device)
sigmas = torch.zeros((samples.shape[0], samples.shape[1], 1), device=z.device)
transformed_ray_directions_expanded = torch.zeros((samples.shape[0], max_batch, 3), device=z.device)
transformed_ray_directions_expanded[..., -1] = -1
head = 0
with tqdm(total = samples.shape[1]) as pbar:
with torch.no_grad():
while head < samples.shape[1]:
torch.manual_seed(0)
sigma = G.sample(samples[:, head:head+max_batch], transformed_ray_directions_expanded[:, :samples.shape[1]-head], z, conditioning_params, truncation_psi=truncation_psi, truncation_cutoff=truncation_cutoff, noise_mode='const')['sigma']
sigmas[:, head:head+max_batch] = sigma
head += max_batch
pbar.update(max_batch)
sigmas = sigmas.reshape((shape_res, shape_res, shape_res)).cpu().numpy()
sigmas = np.flip(sigmas, 0)
# Trim the border of the extracted cube
pad = int(30 * shape_res / 256)
pad_value = -1000
sigmas[:pad] = pad_value
sigmas[-pad:] = pad_value
sigmas[:, :pad] = pad_value
sigmas[:, -pad:] = pad_value
sigmas[:, :, :pad] = pad_value
sigmas[:, :, -pad:] = pad_value
if shape_format == '.ply':
from shape_utils import convert_sdf_samples_to_ply
convert_sdf_samples_to_ply(np.transpose(sigmas, (2, 1, 0)), [0, 0, 0], 1, os.path.join(outdir, f'seed{seed:04d}.ply'), level=10)
elif shape_format == '.mrc': # output mrc
with mrcfile.new_mmap(os.path.join(outdir, f'seed{seed:04d}.mrc'), overwrite=True, shape=sigmas.shape, mrc_mode=2) as mrc:
mrc.data[:] = sigmas
#----------------------------------------------------------------------------
if __name__ == "__main__":
generate_images() # pylint: disable=no-value-for-parameter
#----------------------------------------------------------------------------