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train_nerf.py
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train_nerf.py
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import argparse
import glob
import os
import time
import numpy as np
import torch
import torchvision
import yaml
from torch.utils.tensorboard import SummaryWriter
from tqdm import tqdm, trange
from nerf import (CfgNode, get_embedding_function, get_ray_bundle, img2mse,
load_blender_data, load_llff_data, meshgrid_xy, models,
mse2psnr, run_one_iter_of_nerf)
def main():
parser = argparse.ArgumentParser()
parser.add_argument(
"--config", type=str, required=True, help="Path to (.yml) config file."
)
parser.add_argument(
"--load-checkpoint",
type=str,
default="",
help="Path to load saved checkpoint from.",
)
configargs = parser.parse_args()
# Read config file.
cfg = None
with open(configargs.config, "r") as f:
cfg_dict = yaml.load(f, Loader=yaml.FullLoader)
cfg = CfgNode(cfg_dict)
# # (Optional:) enable this to track autograd issues when debugging
# torch.autograd.set_detect_anomaly(True)
# If a pre-cached dataset is available, skip the dataloader.
USE_CACHED_DATASET = False
train_paths, validation_paths = None, None
images, poses, render_poses, hwf, i_split = None, None, None, None, None
H, W, focal, i_train, i_val, i_test = None, None, None, None, None, None
if hasattr(cfg.dataset, "cachedir") and os.path.exists(cfg.dataset.cachedir):
train_paths = glob.glob(os.path.join(cfg.dataset.cachedir, "train", "*.data"))
validation_paths = glob.glob(
os.path.join(cfg.dataset.cachedir, "val", "*.data")
)
USE_CACHED_DATASET = True
else:
# Load dataset
images, poses, render_poses, hwf = None, None, None, None
if cfg.dataset.type.lower() == "blender":
images, poses, render_poses, hwf, i_split = load_blender_data(
cfg.dataset.basedir,
half_res=cfg.dataset.half_res,
testskip=cfg.dataset.testskip,
)
i_train, i_val, i_test = i_split
H, W, focal = hwf
H, W = int(H), int(W)
hwf = [H, W, focal]
if cfg.nerf.train.white_background:
images = images[..., :3] * images[..., -1:] + (1.0 - images[..., -1:])
elif cfg.dataset.type.lower() == "llff":
images, poses, bds, render_poses, i_test = load_llff_data(
cfg.dataset.basedir, factor=cfg.dataset.downsample_factor
)
hwf = poses[0, :3, -1]
poses = poses[:, :3, :4]
if not isinstance(i_test, list):
i_test = [i_test]
if cfg.dataset.llffhold > 0:
i_test = np.arange(images.shape[0])[:: cfg.dataset.llffhold]
i_val = i_test
i_train = np.array(
[
i
for i in np.arange(images.shape[0])
if (i not in i_test and i not in i_val)
]
)
H, W, focal = hwf
H, W = int(H), int(W)
hwf = [H, W, focal]
images = torch.from_numpy(images)
poses = torch.from_numpy(poses)
# Seed experiment for repeatability
seed = cfg.experiment.randomseed
np.random.seed(seed)
torch.manual_seed(seed)
# Device on which to run.
if torch.cuda.is_available():
device = "cuda"
else:
device = "cpu"
encode_position_fn = get_embedding_function(
num_encoding_functions=cfg.models.coarse.num_encoding_fn_xyz,
include_input=cfg.models.coarse.include_input_xyz,
log_sampling=cfg.models.coarse.log_sampling_xyz,
)
encode_direction_fn = None
if cfg.models.coarse.use_viewdirs:
encode_direction_fn = get_embedding_function(
num_encoding_functions=cfg.models.coarse.num_encoding_fn_dir,
include_input=cfg.models.coarse.include_input_dir,
log_sampling=cfg.models.coarse.log_sampling_dir,
)
# Initialize a coarse-resolution model.
model_coarse = getattr(models, cfg.models.coarse.type)(
num_encoding_fn_xyz=cfg.models.coarse.num_encoding_fn_xyz,
num_encoding_fn_dir=cfg.models.coarse.num_encoding_fn_dir,
include_input_xyz=cfg.models.coarse.include_input_xyz,
include_input_dir=cfg.models.coarse.include_input_dir,
use_viewdirs=cfg.models.coarse.use_viewdirs,
)
model_coarse.to(device)
# If a fine-resolution model is specified, initialize it.
model_fine = None
if hasattr(cfg.models, "fine"):
model_fine = getattr(models, cfg.models.fine.type)(
num_encoding_fn_xyz=cfg.models.fine.num_encoding_fn_xyz,
num_encoding_fn_dir=cfg.models.fine.num_encoding_fn_dir,
include_input_xyz=cfg.models.fine.include_input_xyz,
include_input_dir=cfg.models.fine.include_input_dir,
use_viewdirs=cfg.models.fine.use_viewdirs,
)
model_fine.to(device)
# Initialize optimizer.
trainable_parameters = list(model_coarse.parameters())
if model_fine is not None:
trainable_parameters += list(model_fine.parameters())
optimizer = getattr(torch.optim, cfg.optimizer.type)(
trainable_parameters, lr=cfg.optimizer.lr
)
# Setup logging.
logdir = os.path.join(cfg.experiment.logdir, cfg.experiment.id)
os.makedirs(logdir, exist_ok=True)
writer = SummaryWriter(logdir)
# Write out config parameters.
with open(os.path.join(logdir, "config.yml"), "w") as f:
f.write(cfg.dump()) # cfg, f, default_flow_style=False)
# By default, start at iteration 0 (unless a checkpoint is specified).
start_iter = 0
# Load an existing checkpoint, if a path is specified.
if os.path.exists(configargs.load_checkpoint):
checkpoint = torch.load(configargs.load_checkpoint)
model_coarse.load_state_dict(checkpoint["model_coarse_state_dict"])
if checkpoint["model_fine_state_dict"]:
model_fine.load_state_dict(checkpoint["model_fine_state_dict"])
optimizer.load_state_dict(checkpoint["optimizer_state_dict"])
start_iter = checkpoint["iter"]
# # TODO: Prepare raybatch tensor if batching random rays
for i in trange(start_iter, cfg.experiment.train_iters):
model_coarse.train()
if model_fine:
model_coarse.train()
rgb_coarse, rgb_fine = None, None
target_ray_values = None
if USE_CACHED_DATASET:
datafile = np.random.choice(train_paths)
cache_dict = torch.load(datafile)
ray_bundle = cache_dict["ray_bundle"].to(device)
ray_origins, ray_directions = (
ray_bundle[0].reshape((-1, 3)),
ray_bundle[1].reshape((-1, 3)),
)
target_ray_values = cache_dict["target"][..., :3].reshape((-1, 3))
select_inds = np.random.choice(
ray_origins.shape[0],
size=(cfg.nerf.train.num_random_rays),
replace=False,
)
ray_origins, ray_directions = (
ray_origins[select_inds],
ray_directions[select_inds],
)
target_ray_values = target_ray_values[select_inds].to(device)
# ray_bundle = torch.stack([ray_origins, ray_directions], dim=0).to(device)
rgb_coarse, _, _, rgb_fine, _, _ = run_one_iter_of_nerf(
cache_dict["height"],
cache_dict["width"],
cache_dict["focal_length"],
model_coarse,
model_fine,
ray_origins,
ray_directions,
cfg,
mode="train",
encode_position_fn=encode_position_fn,
encode_direction_fn=encode_direction_fn,
)
else:
img_idx = np.random.choice(i_train)
img_target = images[img_idx].to(device)
pose_target = poses[img_idx, :3, :4].to(device)
ray_origins, ray_directions = get_ray_bundle(H, W, focal, pose_target)
coords = torch.stack(
meshgrid_xy(torch.arange(H).to(device), torch.arange(W).to(device)),
dim=-1,
)
coords = coords.reshape((-1, 2))
select_inds = np.random.choice(
coords.shape[0], size=(cfg.nerf.train.num_random_rays), replace=False
)
select_inds = coords[select_inds]
ray_origins = ray_origins[select_inds[:, 0], select_inds[:, 1], :]
ray_directions = ray_directions[select_inds[:, 0], select_inds[:, 1], :]
# batch_rays = torch.stack([ray_origins, ray_directions], dim=0)
target_s = img_target[select_inds[:, 0], select_inds[:, 1], :]
then = time.time()
rgb_coarse, _, _, rgb_fine, _, _ = run_one_iter_of_nerf(
H,
W,
focal,
model_coarse,
model_fine,
ray_origins,
ray_directions,
cfg,
mode="train",
encode_position_fn=encode_position_fn,
encode_direction_fn=encode_direction_fn,
)
target_ray_values = target_s
coarse_loss = torch.nn.functional.mse_loss(
rgb_coarse[..., :3], target_ray_values[..., :3]
)
fine_loss = None
if rgb_fine is not None:
fine_loss = torch.nn.functional.mse_loss(
rgb_fine[..., :3], target_ray_values[..., :3]
)
# loss = torch.nn.functional.mse_loss(rgb_pred[..., :3], target_s[..., :3])
loss = 0.0
# if fine_loss is not None:
# loss = fine_loss
# else:
# loss = coarse_loss
loss = coarse_loss + (fine_loss if fine_loss is not None else 0.0)
loss.backward()
psnr = mse2psnr(loss.item())
optimizer.step()
optimizer.zero_grad()
# Learning rate updates
num_decay_steps = cfg.scheduler.lr_decay * 1000
lr_new = cfg.optimizer.lr * (
cfg.scheduler.lr_decay_factor ** (i / num_decay_steps)
)
for param_group in optimizer.param_groups:
param_group["lr"] = lr_new
if i % cfg.experiment.print_every == 0 or i == cfg.experiment.train_iters - 1:
tqdm.write(
"[TRAIN] Iter: "
+ str(i)
+ " Loss: "
+ str(loss.item())
+ " PSNR: "
+ str(psnr)
)
writer.add_scalar("train/loss", loss.item(), i)
writer.add_scalar("train/coarse_loss", coarse_loss.item(), i)
if rgb_fine is not None:
writer.add_scalar("train/fine_loss", fine_loss.item(), i)
writer.add_scalar("train/psnr", psnr, i)
# Validation
if (
i % cfg.experiment.validate_every == 0
or i == cfg.experiment.train_iters - 1
):
tqdm.write("[VAL] =======> Iter: " + str(i))
model_coarse.eval()
if model_fine:
model_coarse.eval()
start = time.time()
with torch.no_grad():
rgb_coarse, rgb_fine = None, None
target_ray_values = None
if USE_CACHED_DATASET:
datafile = np.random.choice(validation_paths)
cache_dict = torch.load(datafile)
rgb_coarse, _, _, rgb_fine, _, _ = run_one_iter_of_nerf(
cache_dict["height"],
cache_dict["width"],
cache_dict["focal_length"],
model_coarse,
model_fine,
cache_dict["ray_origins"].to(device),
cache_dict["ray_directions"].to(device),
cfg,
mode="validation",
encode_position_fn=encode_position_fn,
encode_direction_fn=encode_direction_fn,
)
target_ray_values = cache_dict["target"].to(device)
else:
img_idx = np.random.choice(i_val)
img_target = images[img_idx].to(device)
pose_target = poses[img_idx, :3, :4].to(device)
ray_origins, ray_directions = get_ray_bundle(
H, W, focal, pose_target
)
rgb_coarse, _, _, rgb_fine, _, _ = run_one_iter_of_nerf(
H,
W,
focal,
model_coarse,
model_fine,
ray_origins,
ray_directions,
cfg,
mode="validation",
encode_position_fn=encode_position_fn,
encode_direction_fn=encode_direction_fn,
)
target_ray_values = img_target
coarse_loss = img2mse(rgb_coarse[..., :3], target_ray_values[..., :3])
loss, fine_loss = 0.0, 0.0
if rgb_fine is not None:
fine_loss = img2mse(rgb_fine[..., :3], target_ray_values[..., :3])
loss = fine_loss
else:
loss = coarse_loss
loss = coarse_loss + fine_loss
psnr = mse2psnr(loss.item())
writer.add_scalar("validation/loss", loss.item(), i)
writer.add_scalar("validation/coarse_loss", coarse_loss.item(), i)
writer.add_scalar("validataion/psnr", psnr, i)
writer.add_image(
"validation/rgb_coarse", cast_to_image(rgb_coarse[..., :3]), i
)
if rgb_fine is not None:
writer.add_image(
"validation/rgb_fine", cast_to_image(rgb_fine[..., :3]), i
)
writer.add_scalar("validation/fine_loss", fine_loss.item(), i)
writer.add_image(
"validation/img_target",
cast_to_image(target_ray_values[..., :3]),
i,
)
tqdm.write(
"Validation loss: "
+ str(loss.item())
+ " Validation PSNR: "
+ str(psnr)
+ " Time: "
+ str(time.time() - start)
)
if i % cfg.experiment.save_every == 0 or i == cfg.experiment.train_iters - 1:
checkpoint_dict = {
"iter": i,
"model_coarse_state_dict": model_coarse.state_dict(),
"model_fine_state_dict": None
if not model_fine
else model_fine.state_dict(),
"optimizer_state_dict": optimizer.state_dict(),
"loss": loss,
"psnr": psnr,
}
torch.save(
checkpoint_dict,
os.path.join(logdir, "checkpoint" + str(i).zfill(5) + ".ckpt"),
)
tqdm.write("================== Saved Checkpoint =================")
print("Done!")
def cast_to_image(tensor):
# Input tensor is (H, W, 3). Convert to (3, H, W).
tensor = tensor.permute(2, 0, 1)
# Conver to PIL Image and then np.array (output shape: (H, W, 3))
img = np.array(torchvision.transforms.ToPILImage()(tensor.detach().cpu()))
# Map back to shape (3, H, W), as tensorboard needs channels first.
img = np.moveaxis(img, [-1], [0])
return img
if __name__ == "__main__":
main()