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run_bungee.py
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run_bungee.py
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import os, sys
import numpy as np
import imageio
import json
import random
import time
import torch
import torch.nn as nn
import torch.nn.functional as F
from torch.utils.tensorboard import SummaryWriter
from tqdm import tqdm, trange
from run_nerf_helpers import *
from load_multiscale import load_multiscale_data
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
np.random.seed(0)
def batchify(fn, chunk):
if chunk is None:
return fn
def ret(inputs):
return torch.cat([fn(inputs[i:i+chunk]) for i in range(0, inputs.shape[0], chunk)], 0)
return ret
def run_network(means, cov_diags, viewdirs, fn, embed_fn, embeddirs_fn, netchunk=1024*64):
means_flat = torch.reshape(means, [-1, means.shape[-1]])
cov_diags_flat = torch.reshape(cov_diags, [-1, cov_diags.shape[-1]])
inputs_flat = torch.cat((means_flat, cov_diags_flat), -1)
embedded = embed_fn(inputs_flat)
input_dirs = viewdirs[:,None].expand(means.shape)
input_dirs_flat = torch.reshape(input_dirs, [-1, input_dirs.shape[-1]])
embedded_dirs = embeddirs_fn(input_dirs_flat)
embedded = torch.cat([embedded, embedded_dirs], -1)
outputs_flat = batchify(fn, netchunk)(embedded)
outputs = torch.reshape(outputs_flat, list(means.shape[:-1]) + list(outputs_flat.shape[1:]))
return outputs
def batchify_rays(rays_flat, stage, radii, chunk=1024*32, **kwargs):
all_ret = {}
for i in range(0, rays_flat.shape[0], chunk):
ret = render_rays(rays_flat[i:i+chunk], stage, radii[i:i+chunk], **kwargs)
for k in ret:
if k not in all_ret:
all_ret[k] = []
all_ret[k].append(ret[k])
all_ret = {k : torch.cat(all_ret[k], 0) for k in all_ret}
return all_ret
def render(H, W, focal, radii, chunk=1024*32, rays=None, stage=None, c2w=None, **kwargs):
if c2w is not None:
rays_o, rays_d = get_rays(H, W, focal, c2w)
else:
rays_o, rays_d = rays
rays_d = rays_d / torch.norm(rays_d, dim=-1, keepdim=True)
sh = rays_d.shape
rays_o = torch.reshape(rays_o, [-1,3]).float()
rays_d = torch.reshape(rays_d, [-1,3]).float()
radii = torch.reshape(radii, [-1,1]).float()
rays = torch.cat([rays_o, rays_d], -1)
all_ret = batchify_rays(rays, stage, radii, chunk, **kwargs)
for k in all_ret:
k_sh = list(sh[:-1]) + list(all_ret[k].shape[1:])
all_ret[k] = torch.reshape(all_ret[k], k_sh)
k_extract = ['rgb_map', 'disp_map', 'acc_map', 'depth_map']
ret_list = [all_ret[k] for k in k_extract]
ret_dict = {k : all_ret[k] for k in all_ret if k not in k_extract}
return ret_list + [ret_dict]
def render_path(render_poses, hwf, chunk, render_kwargs, stage=0, savedir=None, render_factor=0):
H, W, focal = hwf
if render_factor!=0:
H = H//render_factor
W = W//render_factor
focal = focal/render_factor
rgbs = []
radii = get_radii_for_test(H, W, focal, render_poses)
t = time.time()
for i, c2w in enumerate(tqdm(render_poses)):
print(i, time.time() - t)
t = time.time()
rgb, _, _, _, _ = render(H, W, focal, radii[i], chunk=chunk, stage=stage, c2w=c2w[:3,:4], **render_kwargs)
rgbs.append(rgb.cpu().numpy())
if i==0:
print(rgb.shape)
if savedir is not None:
rgb8 = to8b(rgbs[-1])
imageio.imwrite(os.path.join(savedir, '{:03d}.png'.format(i)), rgb8)
rgbs = np.stack(rgbs, 0)
return rgbs
def create_nerf(args):
"""Instantiate NeRF's MLP model.
"""
embed_fn, input_ch = get_mip_embedder(args.multires, args.min_multires, args.i_embed, log_sampling=True)
embeddirs_fn, input_ch_views = get_embedder(args.multires_views, args.min_multires, args.i_embed)
model = Bungee_NeRF_block(num_resblocks=args.cur_stage, net_width=args.netwidth, input_ch=input_ch, input_ch_views=input_ch_views).to(device)
print(model)
model = nn.DataParallel(model)
grad_vars = list(model.parameters())
network_query_fn = lambda means, cov_diags, viewdirs, network_fn : run_network(means, cov_diags, viewdirs, network_fn,
embed_fn=embed_fn,
embeddirs_fn=embeddirs_fn,
netchunk=args.netchunk)
optimizer = torch.optim.Adam(params=grad_vars, lr=args.lrate, betas=(0.9, 0.999))
start = 0
total_iter = 0
basedir = args.basedir
expname = args.expname
if args.ft_path is not None and args.ft_path!='None':
ckpts = [args.ft_path]
else:
ckpts = [os.path.join(basedir, expname, f) for f in sorted(os.listdir(os.path.join(basedir, expname))) if 'tar' in f]
print('Found ckpts', ckpts)
if len(ckpts) > 0:
ckpt_path = ckpts[-1]
print('Reloading from', ckpt_path)
ckpt = torch.load(ckpt_path)
start = ckpt['global_step']
total_iter = ckpt['total_iter']
model.load_state_dict(ckpt['network_fn_state_dict'], strict=False)
try:
optimizer.load_state_dict(ckpt['optimizer_state_dict'])
except:
print('Start a new training stage, reset optimizer.')
start = 0
if args.render_test:
model.eval()
render_kwargs_train = {
'network_query_fn' : network_query_fn,
'perturb' : args.perturb,
'N_importance' : args.N_importance,
'N_samples' : args.N_samples,
'network_fn' : model,
'white_bkgd' : args.white_bkgd,
'raw_noise_std' : args.raw_noise_std,
}
render_kwargs_test = {k : render_kwargs_train[k] for k in render_kwargs_train}
render_kwargs_test['perturb'] = False
render_kwargs_test['raw_noise_std'] = 0.
return render_kwargs_train, render_kwargs_test, start, total_iter, grad_vars, optimizer
def raw2outputs(raw, z_vals, rays_d, stage, raw_noise_std=0, white_bkgd=False):
raw2alpha = lambda raw, dists, act_fn=F.softplus: 1.-torch.exp(-act_fn(raw-1)*dists)
z_vals = .5 * (z_vals[...,1:] + z_vals[...,:-1])
dists = z_vals[...,1:] - z_vals[...,:-1]
dists = torch.cat([dists, torch.Tensor([1e10]).expand(dists[...,:1].shape)], -1)
dists = dists * torch.norm(rays_d[...,None,:], dim=-1)
acc_rgb = torch.sum(raw[...,:stage+1,:3], dim=2)
rgb = (1+2*0.001)/(1+torch.exp(-acc_rgb))-0.001
acc_alpha = torch.sum(raw[...,:stage+1,3], dim=2)
noise = 0.
if raw_noise_std > 0.:
noise = torch.randn(acc_alpha.shape) * raw_noise_std
alpha = raw2alpha(acc_alpha + noise, dists)
weights = alpha * torch.cumprod(torch.cat([torch.ones((alpha.shape[0], 1)), 1.-alpha + 1e-10], -1), -1)[:, :-1]
rgb_map = torch.sum(weights[...,None] * rgb, -2)
depth_map = torch.sum(weights * z_vals, -1)
disp_map = 1./torch.max(1e-10 * torch.ones_like(depth_map), depth_map / (torch.sum(weights, -1)+1e-8))
acc_map = torch.sum(weights, -1)
if white_bkgd:
rgb_map = rgb_map + (1.-acc_map[...,None])
return rgb_map, disp_map, acc_map, weights, depth_map
def cast(origin, direction, radius, t):
t0, t1 = t[..., :-1], t[..., 1:]
c, d = (t0 + t1)/2, (t1 - t0)/2
t_mean = c + (2*c*d**2) / (3*c**2 + d**2)
t_var = (d**2)/3 - (4/15) * ((d**4 * (12*c**2 - d**2)) / (3*c**2 + d**2)**2)
r_var = radius**2 * ((c**2)/4 + (5/12) * d**2 - (4/15) * (d**4) / (3*c**2 + d**2))
mean = origin[...,None,:] + direction[..., None, :] * t_mean[..., None]
null_outer_diag = 1 - (direction**2) / torch.sum(direction**2, -1, keepdims=True)
cov_diag = (t_var[..., None] * (direction**2)[..., None, :] + r_var[..., None] * null_outer_diag[..., None, :])
return mean, cov_diag
def render_rays(ray_batch,
stage,
radii,
network_fn,
network_query_fn,
N_samples,
perturb=0.,
N_importance=0,
white_bkgd=False,
raw_noise_std=0.,
ray_nearfar=None,
scene_origin=None,
scene_scaling_factor=None):
N_rays = ray_batch.shape[0]
rays_o, rays_d = ray_batch[:,:3], ray_batch[:,-3:]
t_vals = torch.linspace(0., 1., steps=N_samples)
if ray_nearfar == 'sphere': ## treats earth as a sphere and computes the intersection of a ray and a sphere
globe_center = torch.tensor(np.array(scene_origin) * scene_scaling_factor).float()
# 6371011 is earth radius, 250 is the assumed height limitation of buildings in the scene
earth_radius = 6371011 * scene_scaling_factor
earth_radius_plus_bldg = (6371011+250) * scene_scaling_factor
## intersect with building upper limit sphere
delta = (2*torch.sum((rays_o-globe_center) * rays_d, dim=-1))**2 - 4*torch.norm(rays_d, dim=-1)**2 * (torch.norm((rays_o-globe_center), dim=-1)**2 - (earth_radius_plus_bldg)**2)
d_near = (-2*torch.sum((rays_o-globe_center) * rays_d, dim=-1) - delta**0.5) / (2*torch.norm(rays_d, dim=-1)**2)
rays_start = rays_o + (d_near[...,None]*rays_d)
## intersect with earth
delta = (2*torch.sum((rays_o-globe_center) * rays_d, dim=-1))**2 - 4*torch.norm(rays_d, dim=-1)**2 * (torch.norm((rays_o-globe_center), dim=-1)**2 - (earth_radius)**2)
d_far = (-2*torch.sum((rays_o-globe_center) * rays_d, dim=-1) - delta**0.5) / (2*torch.norm(rays_d, dim=-1)**2)
rays_end = rays_o + (d_far[...,None]*rays_d)
## compute near and far for each ray
new_near = torch.norm(rays_o - rays_start, dim=-1, keepdim=True)
near = new_near * 0.9
new_far = torch.norm(rays_o - rays_end, dim=-1, keepdim=True)
far = new_far * 1.1
# disparity sampling for the first half and linear sampling for the rest
t_vals_lindisp = torch.linspace(0., 1., steps=N_samples)
z_vals_lindisp = 1./(1./near * (1.-t_vals_lindisp) + 1./far * (t_vals_lindisp))
z_vals_lindisp_half = z_vals_lindisp[:,:int(N_samples*2/3)]
linear_start = z_vals_lindisp_half[:,-1:]
t_vals_linear = torch.linspace(0., 1., steps=N_samples-int(N_samples*2/3)+1)
z_vals_linear_half = linear_start * (1-t_vals_linear) + far * t_vals_linear
z_vals = torch.cat((z_vals_lindisp_half, z_vals_linear_half[:,1:]), -1)
z_vals, _ = torch.sort(z_vals, -1)
z_vals = z_vals.expand([N_rays, N_samples])
elif ray_nearfar == 'flat': ## treats earth as a flat surface and computes the intersection of a ray and a plane
normal = torch.tensor([0, 0, 1]).to(rays_o) * scene_scaling_factor
p0_far = torch.tensor([0, 0, 0]).to(rays_o) * scene_scaling_factor
p0_near = torch.tensor([0, 0, 250]).to(rays_o) * scene_scaling_factor
near = (p0_near - rays_o * normal).sum(-1) / (rays_d * normal).sum(-1)
far = (p0_far - rays_o * normal).sum(-1) / (rays_d * normal).sum(-1)
near = near.clamp(min=1e-6)
near, far = near.unsqueeze(-1), far.unsqueeze(-1)
# disparity sampling for the first half and linear sampling for the rest
t_vals_lindisp = torch.linspace(0., 1., steps=N_samples)
z_vals_lindisp = 1./(1./near * (1.-t_vals_lindisp) + 1./far * (t_vals_lindisp))
z_vals_lindisp_half = z_vals_lindisp[:,:int(N_samples*2/3)]
linear_start = z_vals_lindisp_half[:,-1:]
t_vals_linear = torch.linspace(0., 1., steps=N_samples-int(N_samples*2/3)+1)
z_vals_linear_half = linear_start * (1-t_vals_linear) + far * t_vals_linear
z_vals = torch.cat((z_vals_lindisp_half, z_vals_linear_half[:,1:]), -1)
z_vals, _ = torch.sort(z_vals, -1)
z_vals = z_vals.expand([N_rays, N_samples])
else:
pass
if perturb > 0.:
mids = .5 * (z_vals[...,1:] + z_vals[...,:-1])
upper = torch.cat([mids, z_vals[...,-1:]], -1)
lower = torch.cat([z_vals[...,:1], mids], -1)
t_rand = torch.rand(z_vals.shape)
z_vals = lower + (upper - lower) * t_rand
means, cov_diags = cast(rays_o, rays_d, radii, z_vals)
raw = network_query_fn(means, cov_diags, rays_d, network_fn)
rgb_map, disp_map, acc_map, weights, depth_map = raw2outputs(raw, z_vals, rays_d, stage, raw_noise_std, white_bkgd)
if N_importance > 0:
rgb_map_0, disp_map_0, acc_map_0, depth_map_0 = rgb_map, disp_map, acc_map, depth_map
weights_pad = torch.cat([
weights[..., :1],
weights,
weights[..., -1:],
], axis=-1)
weights_max = torch.maximum(weights_pad[..., :-1], weights_pad[..., 1:])
weights_blur = 0.5 * (weights_max[..., :-1] + weights_max[..., 1:])
weights_prime = weights_blur + 0.01
z_samples = sorted_piecewise_constant_pdf(z_vals, weights_prime, N_importance, randomized=(perturb>0.))
z_samples = z_samples.detach()
z_vals, _ = torch.sort(z_samples, -1)
means, cov_diags = cast(rays_o, rays_d, radii, z_vals)
raw = network_query_fn(means, cov_diags, rays_d, network_fn)
rgb_map, disp_map, acc_map, weights, depth_map = raw2outputs(raw, z_vals, rays_d, stage, raw_noise_std, white_bkgd)
ret = {'rgb_map' : rgb_map, 'disp_map' : disp_map, 'acc_map' : acc_map, 'depth_map' : depth_map}
ret['raw'] = raw
if N_importance > 0:
ret['rgb0'] = rgb_map_0
ret['disp0'] = disp_map_0
ret['acc0'] = acc_map_0
ret['depth0'] = depth_map_0
ret['z_std'] = torch.std(z_samples, dim=-1, unbiased=False)
for k in ret:
if (torch.isnan(ret[k]).any() or torch.isinf(ret[k]).any()):
print(f"! [Numerical Error] {k} contains nan or inf.")
return ret
def config_parser():
import configargparse
parser = configargparse.ArgumentParser()
parser.add_argument('--config', is_config_file=True,
help='config file path')
parser.add_argument("--expname", type=str,
help='experiment name')
parser.add_argument("--basedir", type=str, default='./logs/',
help='where to store ckpts and logs')
parser.add_argument("--datadir", type=str,
help='input data directory')
# training options
parser.add_argument("--N_iters", type=int, default=200000,
help='number of iters to run at current stage')
parser.add_argument("--netdepth", type=int, default=8,
help='layers in network')
parser.add_argument("--netwidth", type=int, default=256,
help='channels per layer')
parser.add_argument("--N_rand", type=int, default=32*32*4,
help='batch size (number of random rays per gradient step)')
parser.add_argument("--lrate", type=float, default=5e-4,
help='learning rate')
parser.add_argument("--lrate_decay", type=int, default=250,
help='exponential learning rate decay (in 1000 steps)')
parser.add_argument("--chunk", type=int, default=1024*32,
help='number of rays processed in parallel, decrease if running out of memory')
parser.add_argument("--netchunk", type=int, default=1024*64,
help='number of pts sent through network in parallel, decrease if running out of memory')
parser.add_argument("--ft_path", type=str, default=None,
help='specific weights npy file to reload for coarse network')
parser.add_argument("--cur_stage", type=int, default=0,
help='current training stage: smaller value means further scale')
parser.add_argument("--use_batching", action='store_true',
help='recommand set to False at later training stage for speed up')
parser.add_argument("--precrop_iters", type=int, default=0,
help='number of steps to train on central crops')
parser.add_argument("--precrop_frac", type=float,
default=.5, help='fraction of img taken for central crops')
parser.add_argument("--ray_nearfar", type=str, default='sphere', help='options: sphere/flat')
# rendering options
parser.add_argument("--N_samples", type=int, default=64,
help='number of coarse samples per ray')
parser.add_argument("--N_importance", type=int, default=0,
help='number of additional fine samples per ray')
parser.add_argument("--perturb", type=float, default=1.,
help='set to 0. for no jitter, 1. for jitter')
parser.add_argument("--i_embed", type=int, default=0,
help='set 0 for default positional encoding, -1 for none')
parser.add_argument("--multires", type=int, default=10,
help='log2 of max freq for positional encoding (3D location)')
parser.add_argument("--min_multires", type=int, default=0,
help='log2 of min freq for positional encoding (3D location)')
parser.add_argument("--multires_views", type=int, default=4,
help='log2 of max freq for positional encoding (2D direction)')
parser.add_argument("--raw_noise_std", type=float, default=0.,
help='std dev of noise added to regularize sigma_a output, 1e0 recommended')
parser.add_argument("--render_test", action='store_true',
help='render the test set instead of render_poses path')
parser.add_argument("--render_factor", type=int, default=0,
help='downsampling factor to speed up rendering, set 4 or 8 for fast preview')
# dataset options
parser.add_argument("--white_bkgd", action='store_true',
help='set to render synthetic data on a white bkgd (always use for blender)')
parser.add_argument("--factor", type=int, default=None,
help='downsample factor for images')
parser.add_argument("--holdout", type=int, default=8,
help='will take every 1/N images as test set')
# logging/saving options
parser.add_argument("--i_print", type=int, default=100,
help='frequency of console printout and metric loggin')
parser.add_argument("--i_weights", type=int, default=10000,
help='frequency of weight ckpt saving')
return parser
def train():
parser = config_parser()
args = parser.parse_args()
# Load data
images, poses, scene_scaling_factor, scene_origin, scale_split = load_multiscale_data(args.datadir, args.factor)
if args.white_bkgd:
images = images[...,:3]*images[...,-1:] + (1.-images[...,-1:])
else:
images = images[...,:3]
n_images = len(images)
images = images[scale_split[args.cur_stage]:]
poses = poses[scale_split[args.cur_stage]:]
if args.holdout > 0:
print('Auto holdout,', args.holdout)
i_test = np.arange(images.shape[0])[::args.holdout]
i_train = np.array([i for i in np.arange(int(images.shape[0])) if
(i not in i_test)])
hwf = poses[0,:3,-1]
poses = poses[:,:3,:4]
H, W, focal = hwf
H, W = int(H), int(W)
hwf = [H, W, focal]
if args.render_test:
render_poses = np.array(poses[i_test])
basedir = args.basedir
expname = args.expname
os.makedirs(os.path.join(basedir, expname), exist_ok=True)
f = os.path.join(basedir, expname, 'args.txt')
with open(f, 'w') as file:
for arg in sorted(vars(args)):
attr = getattr(args, arg)
file.write('{} = {}\n'.format(arg, attr))
if args.config is not None:
f = os.path.join(basedir, expname, 'config.txt')
with open(f, 'w') as file:
file.write(open(args.config, 'r').read())
render_kwargs_train, render_kwargs_test, start_iter, total_iter, grad_vars, optimizer = create_nerf(args)
scene_stat = {
'ray_nearfar' : args.ray_nearfar,
'scene_origin' : scene_origin,
'scene_scaling_factor' : scene_scaling_factor,
}
render_kwargs_train.update(scene_stat)
render_kwargs_test.update(scene_stat)
global_step = start_iter
if args.render_test:
render_poses = torch.Tensor(render_poses).to(device)
print('RENDER TEST')
with torch.no_grad():
testsavedir = os.path.join(basedir, expname, 'render_{:06d}'.format(start_iter))
os.makedirs(testsavedir, exist_ok=True)
# By default it uses the deepest output head to render result (i.e. cur_stage).
# Sepecify 'stage' to shallower output head for lower level of detail rendering.
rgbs = render_path(render_poses, hwf, args.chunk, render_kwargs_test, stage=args.cur_stage, savedir=testsavedir, render_factor=args.render_factor)
print('Done rendering, saved in ', testsavedir)
imageio.mimwrite(os.path.join(testsavedir, 'video.mp4'), to8b(rgbs), fps=30, quality=8)
return
scale_codes = []
prev_spl = n_images
cur_scale = 0
for spl in scale_split[:args.cur_stage+1]:
scale_codes.append(np.tile(np.ones(((prev_spl-spl),1,1,1))*cur_scale, (1,H,W,1)))
prev_spl = spl
cur_scale += 1
scale_codes = np.concatenate(scale_codes, 0)
scale_codes = scale_codes.astype(np.int64)
if args.use_batching:
rays = np.stack([get_rays_np(H, W, focal, p) for p in poses], 0)
directions = rays[:,1,:,:,:]
dx = np.sqrt(
np.sum((directions[:, :-1, :, :] - directions[:, 1:, :, :])**2, -1))
dx = np.concatenate([dx, dx[:, -2:-1, :]], 1)
radii = dx[..., None] * 2 / np.sqrt(12)
rays_rgb = np.concatenate([rays, images[:,None]], 1)
rays_rgb = np.transpose(rays_rgb, [0,2,3,1,4])
rays_rgb = np.stack([rays_rgb[i] for i in i_train], 0)
radii = np.stack([radii[i] for i in i_train], 0)
scale_codes = np.stack([scale_codes[i] for i in i_train], 0)
rays_rgb = np.reshape(rays_rgb, [-1,3,3])
radii = np.reshape(radii, [-1, 1])
scale_codes = np.reshape(scale_codes, [-1, 1])
print('shuffle rays')
rand_idx = torch.randperm(rays_rgb.shape[0])
rays_rgb = rays_rgb[rand_idx.cpu().data.numpy()]
radii = radii[rand_idx.cpu().data.numpy()]
scale_codes = scale_codes[rand_idx.cpu().data.numpy()]
print('done')
i_batch = 0
print('Begin')
print('TRAIN views are', i_train)
print('TEST views are', i_test)
writer = SummaryWriter(os.path.join(basedir, 'summaries', expname))
for i in trange(start_iter+1, args.N_iters+1):
if args.use_batching:
batch = torch.tensor(rays_rgb[i_batch : i_batch+args.N_rand]).to(device)
batch_radii = torch.tensor(radii[i_batch : i_batch+args.N_rand]).to(device)
batch_scale_codes = torch.tensor(scale_codes[i_batch : i_batch+args.N_rand]).to(device)
batch = torch.transpose(batch, 0, 1)
batch_rays, target_s = batch[:2], batch[2]
i_batch += args.N_rand
if i_batch >= rays_rgb.shape[0]:
print("Shuffle data after an epoch!")
rand_idx = torch.randperm(rays_rgb.shape[0])
rays_rgb = rays_rgb[rand_idx.cpu().data.numpy()]
radii = radii[rand_idx.cpu().data.numpy()]
scale_codes = scale_codes[rand_idx.cpu().data.numpy()]
i_batch = 0
else:
img_i = np.random.choice(i_train)
target = torch.tensor(images[img_i]).to(device)
scale_code = torch.tensor(scale_codes[img_i]).to(device)
pose = poses[img_i]
rays_o, rays_d = get_rays(H, W, focal, torch.Tensor(pose))
dx = torch.sqrt(torch.sum((rays_d[:-1, :, :] - rays_d[1:, :, :])**2, -1))
dx = torch.cat([dx, dx[-2:-1, :]], 0)
radii = dx[..., None] * 2 / np.sqrt(12)
if i < args.precrop_iters:
dH = int(H//2 * args.precrop_frac)
dW = int(W//2 * args.precrop_frac)
coords = torch.stack(
torch.meshgrid(
torch.linspace(H//2 - dH, H//2 + dH - 1, 2*dH),
torch.linspace(W//2 - dW, W//2 + dW - 1, 2*dW)
), -1)
else:
coords = torch.stack(torch.meshgrid(torch.linspace(0, H-1, H), torch.linspace(0, W-1, W)), -1)
coords = torch.reshape(coords, [-1,2])
select_inds = np.random.choice(coords.shape[0], size=[args.N_rand], replace=False)
select_coords = coords[select_inds].long()
rays_o = rays_o[select_coords[:, 0], select_coords[:, 1]]
rays_d = rays_d[select_coords[:, 0], select_coords[:, 1]]
batch_rays = torch.stack([rays_o, rays_d], 0)
target_s = target[select_coords[:, 0], select_coords[:, 1]]
batch_radii = radii[select_coords[:, 0], select_coords[:, 1]]
batch_scale_codes = scale_code[select_coords[:, 0], select_coords[:, 1]]
optimizer.zero_grad()
for stage in range(max(batch_scale_codes)+1):
rgb, _, _, _, extras = render(H, W, focal, batch_radii, chunk=args.chunk, rays=batch_rays, stage=stage, **render_kwargs_train)
img_loss = img2mse(rgb*(batch_scale_codes<=stage), target_s*(batch_scale_codes<=stage))
psnr = mse2psnr(img_loss)
loss = img_loss
if 'rgb0' in extras:
loss += img2mse(extras['rgb0']*(batch_scale_codes<=stage), target_s*(batch_scale_codes<=stage))
loss.backward()
optimizer.step()
decay_rate = 0.1
decay_steps = args.lrate_decay * 1000
new_lrate = args.lrate * (decay_rate ** (global_step / decay_steps))
for param_group in optimizer.param_groups:
param_group['lr'] = new_lrate
if i%args.i_weights==0:
path = os.path.join(basedir, expname, '{:06d}.tar'.format(i))
torch.save({
'global_step': global_step,
'total_iter': total_iter,
'network_fn_state_dict': render_kwargs_train['network_fn'].state_dict(),
'optimizer_state_dict': optimizer.state_dict(),
}, path)
print('Saved checkpoints at', path)
if i%args.i_print==0:
tqdm.write(f"[TRAIN] Iter: {i} Loss: {loss.item()} PSNR: {psnr.item()}")
writer.add_scalar('Train/loss', loss, total_iter)
writer.add_scalar('Train/psnr', psnr, total_iter)
global_step += 1
total_iter += 1
if __name__=='__main__':
torch.set_default_tensor_type('torch.cuda.FloatTensor')
train()