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train.py
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train.py
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import math
import os
import time
from argparse import Namespace
import torch
from tqdm.auto import tqdm
import pdb
import utils
from opt import config_parser
from torch.cuda.amp import GradScaler
from torch.cuda.amp import autocast
from functools import partial
import json, random
from renderer import *
from utils import *
from torch.utils.tensorboard import SummaryWriter
import datetime
from dynamics import Dynamics
from dataLoader import dataset_dict
import sys
from torch.profiler import profile, record_function, ProfilerActivity
# torch.backends.cudnn.benchmark = True
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
renderer = OctreeRender_trilinear_fast
def cuda_empty():
if hasattr(torch.cuda, 'empty_cache'):
torch.cuda.empty_cache()
@torch.no_grad()
def export_mesh(args):
ckpt = torch.load(args.ckpt, map_location=device)
kwargs = ckpt['kwargs']
kwargs.update({'device': device})
tensorf = eval(args.model_name)(**kwargs)
tensorf.load(ckpt)
alpha,_ = tensorf.getDenseAlpha()
convert_sdf_samples_to_ply(alpha.cpu(), f'{args.ckpt[:-3]}.ply',bbox=tensorf.aabb.cpu(), level=0.005)
@torch.no_grad()
def render_test(args):
# init dataset
dataset = dataset_dict[args.dataset_name]
test_dataset = dataset(args.datadir, split='test', downsample=args.downsample_train, is_stack=True,
n_frames=args.n_frames, render_views=args.render_views, scene_box=args.scene_box,
frame_start=args.frame_start, near=args.near, far=args.far, diffuse_kernel=args.diffuse_kernel)
white_bg = test_dataset.white_bg
ndc_ray = args.ndc_ray
if args.temporal_sampler == 'simple':
temporal_sampler = TemporalSampler(args.n_frames, args.n_train_frames)
elif args.temporal_sampler == 'weighted':
temporal_sampler = TemporalWeightedSampler(args.n_frames, args.n_train_frames, args.temperature_start,
args.temperature_end, args.n_iters, args.temporal_sampler_replace)
if not os.path.exists(args.ckpt):
print('the ckpt path does not exists!!')
return
ckpt = torch.load(args.ckpt, map_location=device)
kwargs = ckpt['kwargs']
# kwargs.update({'device': device})
# tensorf = eval(args.model_name)(**kwargs)
tensorf = eval(args.model_name)(args, kwargs['aabb'], kwargs['gridSize'], device,
density_n_comp=kwargs['density_n_comp'], appearance_n_comp=kwargs['appearance_n_comp'],
app_dim=args.data_dim_color, near_far=kwargs['near_far'],
shadingMode=args.shadingMode, alphaMask_thres=args.alpha_mask_thre,
density_shift=args.density_shift, distance_scale=args.distance_scale,
rayMarch_weight_thres=args.rm_weight_mask_thre,
rayMarch_weight_thres_static=args.rm_weight_mask_thre_static,
pos_pe=args.pos_pe, view_pe=args.view_pe, fea_pe=args.fea_pe,
featureC=args.featureC, step_ratio=kwargs['step_ratio'], fea2denseAct=args.fea2denseAct,
den_dim=args.data_dim_density, densityMode=args.densityMode, featureD=args.featureD,
rel_pos_pe=args.rel_pos_pe, n_frames=args.n_frames,
amp=args.amp, temporal_variance_threshold=args.temporal_variance_threshold,
n_frame_for_static=args.n_frame_for_static,
dynamic_threshold=args.dynamic_threshold, n_time_embedding=args.n_time_embedding,
static_dynamic_seperate=args.static_dynamic_seperate,
zero_dynamic_sigma=args.zero_dynamic_sigma,
zero_dynamic_sigma_thresh=args.zero_dynamic_sigma_thresh,
sigma_static_thresh=args.sigma_static_thresh,
n_train_frames=args.n_train_frames,
net_layer_add=args.net_layer_add,
density_n_comp_dynamic=args.n_lamb_sigma_dynamic,
app_n_comp_dynamic=args.n_lamb_sh_dynamic,
interpolation=args.interpolation,
dynamic_granularity=args.dynamic_granularity,
point_wise_dynamic_threshold=args.point_wise_dynamic_threshold,
static_point_detach=args.static_point_detach,
dynamic_pool_kernel_size=args.dynamic_pool_kernel_size,
time_head=args.time_head, filter_thresh=args.filter_threshold,
static_featureC=args.static_featureC,
)
tensorf.load(ckpt)
logfolder = os.path.dirname(args.ckpt)
if args.dense_alpha:
with autocast(enabled=bool(args.amp)):
alpha, sigma = tensorf.getTemporalDenseAlpha(gridSize=(300,150,150))
convert_sdf_samples_to_ply(alpha.cpu()[...,150], f'{args.ckpt[:-3]}.ply', bbox=tensorf.aabb.cpu(), level=0.005)
alpha = alpha.cpu().numpy()
np.save(os.path.join(logfolder, 'dense_alpha.npy'), alpha)
if args.render_train:
os.makedirs(f'{logfolder}/imgs_train_all', exist_ok=True)
train_dataset = dataset(args.datadir, split='train', downsample=args.downsample_train, is_stack=True,
n_frames=args.n_frames, scene_box=args.scene_box, temporal_variance_threshold=args.temporal_variance_threshold,
frame_start=args.frame_start, near=args.near, far=args.far, diffuse_kernel=args.diffuse_kernel)
with autocast(enabled=bool(args.amp)):
PSNRs_test, PSNRs_STA_test, all_metrics = evaluation(train_dataset,tensorf, args, renderer, f'{logfolder}/imgs_train_all/',
N_vis=-1, N_samples=-1, white_bg = white_bg, ndc_ray=ndc_ray,device=device,
static_branch_only=args.static_branch_only_initial)
print(f'======> {args.expname} train all psnr: {np.mean(PSNRs_test)} <========================')
print(f'======> {args.expname} test all psnr sta: {np.mean(PSNRs_STA_test)} <========================')
if args.render_test:
os.makedirs(f'{logfolder}/imgs_test_all', exist_ok=True)
with autocast(enabled=bool(args.amp)):
PSNRs_test, PSNRs_STA_test, all_metrics = evaluation(test_dataset,tensorf, args, renderer, f'{logfolder}/{args.expname}/imgs_test_all/',
N_vis=-1, N_samples=-1, white_bg = white_bg, ndc_ray=ndc_ray,device=device, simplify=(args.n_frames>0),
static_branch_only=args.static_branch_only_initial, remove_foreground=args.remove_foreground)
print(f'======> {args.expname} test all psnr: {np.mean(PSNRs_test)} <========================')
print(f'======> {args.expname} test all psnr sta: {np.mean(PSNRs_STA_test)} <========================')
if args.render_path:
cuda_empty()
c2ws = test_dataset.render_path
os.makedirs(f'{logfolder}/imgs_path_all', exist_ok=True)
with torch.no_grad():
with autocast(enabled=bool(args.amp)):
if args.sigma_static_thresh < 1.0 or args.static_branch_only_initial:
evaluation_path(test_dataset, tensorf, args, c2ws, renderer, f'{logfolder}/{args.expname}/imgs_path_all/',
N_vis=-1, N_samples=-1, white_bg = white_bg, ndc_ray=ndc_ray,device=device,
static_branch_only=args.static_branch_only_initial, temporal_sampler=temporal_sampler,
remove_foreground=args.remove_foreground, start_idx=args.render_path_start)
else:
evaluation_path_efficient(test_dataset, tensorf, args, c2ws, renderer, f'{logfolder}/{args.expname}/imgs_path_all/',
N_vis=-1, N_samples=-1, white_bg = white_bg, ndc_ray=ndc_ray,device=device)
def train_dynamics(args, tensorf, allrays, allrgbs, allstds, ndc_ray, nSamples, scaler, device, iter_ratio=1):
DynamicCriterion = Dynamics(args, device, use_volumetric_render=args.dynamic_use_volumetric_render)
dy_optimizer = torch.optim.Adam(tensorf.get_dynamic_optparam_groups(args.lr_init), betas=(0.9, 0.99))
dy_lr_factor = args.lr_decay_target_ratio ** (1 / (args.n_dynamic_iters*iter_ratio))
pbar_dynamic = tqdm(range(args.n_dynamic_iters*iter_ratio), miniters=args.progress_refresh_rate, file=sys.stdout)
dy_Sampler = SimpleSampler(allrays.shape[0], args.batch_size * 10)
tvreg = TVLoss() if args.model_name == 'TensorVMSplit' else TVLossVoxel()
for iteration in pbar_dynamic:
ray_idx = dy_Sampler.nextids()
rays_train, rgb_train, variance_train = allrays[ray_idx].to(device).float(), allrgbs[ray_idx].to(device).float(), allstds[ray_idx].to(device).float()
# rgb_map, alphas_map, depth_map, weights, uncertainty
dy_optimizer.zero_grad()
with autocast(enabled=bool(args.amp)):
retva = tensorf.forward_dynamics(rays_train.to(device), is_train=True, variance_train=variance_train,
ndc_ray=ndc_ray, N_samples=nSamples,
rgb_train=rgb_train)
dynamic_prediction_loss = DynamicCriterion.calculate_loss(*retva)
# loss_tv = tensorf.TV_loss_dynamic(tvreg) * 2
loss_tv = 0
total_loss = dynamic_prediction_loss + loss_tv
DynamicCriterion.compute_metrics()
if args.amp:
scaler.scale(total_loss).backward()
scaler.step(dy_optimizer)
scaler.update()
else:
total_loss.backward()
dy_optimizer.step()
for param_group in dy_optimizer.param_groups:
param_group['lr'] = param_group['lr'] * dy_lr_factor
current_lr = dy_optimizer.param_groups[0]['lr']
if iteration % args.progress_refresh_rate == 0:
pbar_dynamic.set_description(f'Iteration {iteration:05d}: '
+ f' loss = {total_loss.item():.6f}'
+ f' lr = {current_lr:.6f}')
DynamicCriterion.print_metrics()
cuda_empty()
# evaluation
@torch.no_grad()
def eval_dynamics(args, tensorf, test_dataset, ndc_ray, nSamples, device):
DynamicCriterion = Dynamics(args, device, use_volumetric_render=args.dynamic_use_volumetric_render)
for idx, samples in tqdm(enumerate(test_dataset.all_rays), file=sys.stdout):
rays_test = samples.reshape(-1, samples.shape[-1]).to(device).contiguous()
rgb_test = test_dataset.all_rgbs[idx].reshape(-1, args.n_frames, 3).to(device).contiguous()
std_test = test_dataset.all_stds[idx].reshape(-1).to(device).contiguous()
# rgb_map, alphas_map, depth_map, weights, uncertainty
N_rays_all = rays_test.shape[0]
all_dynamics, all_dynamics_supervision, all_max_dynamics = [], [], []
chunk = 256
for chunk_idx in range(N_rays_all // chunk + int(N_rays_all % chunk > 0)):
with autocast(enabled=bool(args.amp)):
dynamics, dynamics_supervision, max_dynamics = tensorf.forward_dynamics(rays_test[chunk_idx * chunk:(chunk_idx + 1) * chunk], is_train=False,
ndc_ray=ndc_ray, N_samples=nSamples,
rgb_train=rgb_test[chunk_idx * chunk:(chunk_idx + 1) * chunk], variance_train=std_test[chunk_idx * chunk:(chunk_idx + 1) * chunk])
all_dynamics.append(dynamics)
all_dynamics_supervision.append(dynamics_supervision)
all_max_dynamics.append(max_dynamics)
all_dynamics = torch.cat(all_dynamics, dim=0)
all_dynamics_supervision = torch.cat(all_dynamics_supervision, dim=0)
all_max_dynamics = torch.cat(all_max_dynamics, dim=0)
dynamic_prediction_loss = DynamicCriterion.calculate_loss(all_dynamics, all_dynamics_supervision, all_max_dynamics)
print('test loss: {:.4f}'.format(dynamic_prediction_loss.item()))
DynamicCriterion.compute_metrics()
DynamicCriterion.print_metrics()
cuda_empty()
def reconstruction(args):
# init dataset
dataset = dataset_dict[args.dataset_name]
time_dataset_start = time.time()
train_dataset = dataset(args.datadir, split='train', downsample=args.downsample_train, is_stack=False,
n_frames=args.n_frames, scene_box=args.scene_box, temporal_variance_threshold=args.temporal_variance_threshold,
frame_start=args.frame_start, near=args.near, far=args.far, diffuse_kernel=args.diffuse_kernel)
time_dataset_end = time.time()
print(f'Loading Train Dataset: {time_dataset_end-time_dataset_start}s')
time_dataset_start = time_dataset_end
test_dataset = dataset(args.datadir, split='test', downsample=args.downsample_train, is_stack=True,
n_frames=args.n_frames, render_views=args.render_views, scene_box=args.scene_box,
temporal_variance_threshold=args.temporal_variance_threshold,
frame_start=args.frame_start, near=args.near, far=args.far, diffuse_kernel=args.diffuse_kernel)
time_dataset_end = time.time()
print(f'Loading Test Dataset: {time_dataset_end-time_dataset_start}s')
white_bg = train_dataset.white_bg
near_far = train_dataset.near_far
ndc_ray = args.ndc_ray
# init resolution
upsamp_list = args.upsamp_list
update_AlphaMask_list = args.update_AlphaMask_list
n_lamb_sigma = args.n_lamb_sigma
n_lamb_sh = args.n_lamb_sh
args.expname = os.path.basename(args.config.split('.')[0])
# if args.meta_config is not None:
# args.expname = args.expname + '_' + os.path.basename(args.meta_config.split('.')[0])
# args.expname = '_'.join([args.expname, utils.base_dir(args.datadir), str(args.downsample_train)])
logfolder = '{}/{}'.format(args.basedir, args.expname)
print(args.expname, logfolder)
# init log file
os.makedirs(logfolder, exist_ok=True)
os.makedirs(f'{logfolder}/imgs_vis', exist_ok=True)
os.makedirs(f'{logfolder}/imgs_rgba', exist_ok=True)
os.makedirs(f'{logfolder}/rgba', exist_ok=True)
summary_writer = SummaryWriter(logfolder)
# init parameters
# tensorVM, renderer = init_parameters(args, train_dataset.scene_bbox.to(device), reso_list[0])
aabb = train_dataset.scene_bbox.to(device)
reso_cur = N_to_reso(args.N_voxel_init, aabb)
nSamples = min(args.nSamples, cal_n_samples(reso_cur,args.step_ratio))
print(f'Sampling points: {nSamples}')
if args.ckpt is not None:
ckpt = torch.load(args.ckpt, map_location=device)
kwargs = ckpt['kwargs']
kwargs.update({'device':device,
'amp': args.amp,
'temporal_variance_threshold': args.temporal_variance_threshold,
'dynamic_threshold': args.dynamic_threshold,
'n_time_embedding': args.n_time_embedding,
'static_dynamic_seperate': args.static_dynamic_seperate,
'n_frames': args.n_frames,
'dynamic_use_volumetric_render': args.dynamic_use_volumetric_render,
'sigma_static_thresh': args.sigma_static_thresh,
'zero_dynamic_sigma': args.zero_dynamic_sigma,
'zero_dynamic_sigma_thresh': args.zero_dynamic_sigma_thresh,
'n_train_frames': args.n_train_frames,
'net_layer_add': args.net_layer_add,
})
tensorf = eval(args.model_name)(**kwargs)
tensorf.load(ckpt)
else:
tensorf = eval(args.model_name)(args, aabb, reso_cur, device,
density_n_comp=n_lamb_sigma, appearance_n_comp=n_lamb_sh, app_dim=args.data_dim_color, near_far=near_far,
shadingMode=args.shadingMode, alphaMask_thres=args.alpha_mask_thre, density_shift=args.density_shift, distance_scale=args.distance_scale,
rayMarch_weight_thres=args.rm_weight_mask_thre,
pos_pe=args.pos_pe, view_pe=args.view_pe, fea_pe=args.fea_pe, featureC=args.featureC, step_ratio=args.step_ratio, fea2denseAct=args.fea2denseAct,
den_dim=args.data_dim_density, densityMode=args.densityMode, featureD=args.featureD, rel_pos_pe=args.rel_pos_pe, n_frames=args.n_frames,
amp=args.amp, temporal_variance_threshold=args.temporal_variance_threshold, n_frame_for_static=args.n_frame_for_static,
dynamic_threshold=args.dynamic_threshold, n_time_embedding=args.n_time_embedding, static_dynamic_seperate=args.static_dynamic_seperate,
dynamic_use_volumetric_render=args.dynamic_use_volumetric_render, zero_dynamic_sigma=args.zero_dynamic_sigma,
zero_dynamic_sigma_thresh=args.zero_dynamic_sigma_thresh, sigma_static_thresh=args.sigma_static_thresh, n_train_frames=args.n_train_frames,
net_layer_add=args.net_layer_add,
density_n_comp_dynamic=args.n_lamb_sigma_dynamic,
app_n_comp_dynamic=args.n_lamb_sh_dynamic,
interpolation=args.interpolation,
dynamic_granularity=args.dynamic_granularity,
point_wise_dynamic_threshold=args.point_wise_dynamic_threshold,
static_point_detach=args.static_point_detach,
dynamic_pool_kernel_size=args.dynamic_pool_kernel_size,
time_head=args.time_head,
filter_thresh=args.filter_threshold,
static_featureC=args.static_featureC,
)
grad_vars = tensorf.get_optparam_groups(args.lr_dynamic_init, args.lr_dynamic_basis)
static_grad_vars = tensorf.get_static_optparam_groups(args.lr_init, args.lr_basis)
if args.lr_decay_iters > 0:
lr_factor = args.lr_decay_target_ratio**(1/args.lr_decay_iters)
else:
args.lr_decay_iters = args.n_iters
lr_factor = args.lr_decay_target_ratio**(1/args.n_iters)
print("lr decay", args.lr_decay_target_ratio, args.lr_decay_iters)
opt_proto = {
'sgd': torch.optim.SGD,
'adam': partial(torch.optim.Adam, betas=(0.9, 0.99)),
'adamw': partial(torch.optim.AdamW, betas=(0.9, 0.99)),
'rmsp': partial(torch.optim.RMSprop, momentum=0.0),
}[args.optimizer]
optimizer = opt_proto(grad_vars, weight_decay=args.dynamic_weight_decay)
static_optimizer = opt_proto(static_grad_vars)
scaler = GradScaler()
static_scaler = GradScaler()
#linear in logrithmic space
N_voxel_list = ( torch.round(
torch.exp(
torch.linspace(np.log(args.N_voxel_init), np.log(args.N_voxel_final), len(upsamp_list)+1)
)
).long()
).tolist()[1:]
torch.cuda.empty_cache()
if args.static_branch_only_initial:
Metrics = {}
else:
Metrics = {
'PSNRs': [],
'PSNRs_t': [0],
'frac': [],
'tfrac': [],
'hfrac': [],
}
if args.static_dynamic_seperate:
Metrics.update({
'PSNRs_STA': [],
'PSNRs_st': [0],
'sfrac': [],
})
TESTKEYS = ['PSNRs_t', 'PSNRs_st']
batch_factor = [1, 1, 1, 1] if args.batch_factor == [] else args.batch_factor
allrays, allrgbs, allstds = train_dataset.all_rays, train_dataset.all_rgbs, train_dataset.all_stds
dynamicrays, dynamicrgbs, dynamicstds = train_dataset.dynamic_rays, train_dataset.dynamic_rgbs, train_dataset.dynamic_stds
if not args.ndc_ray:
allrays, allrgbs, allstds = tensorf.filtering_rays(allrays, allrgbs, allstds, bbox_only=True)
current_batch_size = int(args.batch_size * batch_factor[0])
print("creating sammpler with batch size: {}".format(current_batch_size))
if args.ray_sampler == 'simple':
print("=================SimpleRay========================")
print('All Rays: {}'.format(allrays.shape[0]))
trainingSampler = SimpleSampler(allrays.shape[0], current_batch_size)
elif args.ray_sampler == 'weighted':
trainingSampler = WeightedRaySampler(allrays.shape[0], current_batch_size, train_dataset.all_rays_weight)
elif args.ray_sampler == 'comp':
trainingSampler = SimpleSampler(allrays.shape[0], current_batch_size)
Ortho_reg_weight = args.Ortho_weight
print("initial Ortho_reg_weight", Ortho_reg_weight)
L1_reg_weight = args.L1_weight_inital
print("initial L1_reg_weight", L1_reg_weight)
TV_weight_density, TV_weight_app = args.TV_weight_density, args.TV_weight_app
tvreg = TVLoss()
sparse_reg = lambda x: torch.abs(1-torch.exp(-args.sparsity_lambda*x))
print(f"initial TV_weight density: {TV_weight_density} appearance: {TV_weight_app}")
# Training Dynamic Volumetric representations
train_dynamics(args, tensorf, allrays, allrgbs, allstds, ndc_ray, nSamples, scaler, device)
eval_dynamics(args, tensorf, test_dataset, ndc_ray, nSamples, device)
DynamicCriterion = Dynamics(args, device, use_volumetric_render=args.dynamic_use_volumetric_render)
if args.temporal_sampler == 'simple':
print("=================SimpleTemporal========================")
temporal_sampler = TemporalSampler(args.n_frames, args.n_train_frames)
elif args.temporal_sampler == 'weighted':
temporal_sampler = TemporalWeightedSampler(args.n_frames, args.n_train_frames, args.temperature_start,
args.temperature_end, args.n_iters, args.temporal_sampler_replace,
method=args.temporal_sampler_method)
elif args.temporal_sampler == 'importance':
temporal_sampler = ImportanceTemporalSampler(args.n_frames, args.n_train_frames)
elif args.temporal_sampler == 'combimportance':
temporal_sampler = CombImportanceTemporalSampler(args.n_frames, args.n_train_frames)
elif args.temporal_sampler == 'continous':
temporal_sampler = ContinousTemporalSampler(args.n_frames, args.n_train_frames)
elif args.temporal_sampler == 'continous_even':
temporal_sampler = ContinousEvenTemporalSampler(args.n_frames, args.n_train_frames)
# debugger = DebugGradient(static_optimizer)
# debugger.check()
pbar = tqdm(range(args.n_iters), miniters=args.progress_refresh_rate, file=sys.stdout)
timing = {}
# tensorf.calc_init_alpha(tuple(reso_cur))
for iteration in pbar:
_time = time.time()
if args.use_cosine_lr_scheduler:
lr_factor = math.cos((iteration + 1.0) / args.n_iters * math.pi / 2) / math.cos((iteration + 0.0) / args.n_iters * math.pi / 2)
gamma_current = iteration/args.n_iters * (args.gamma_end - args.gamma_start) + args.gamma_start
ray_idx = trainingSampler.nextids(gamma=gamma_current)
rays_train, rgb_train, std_train = allrays[ray_idx].to(device).float(), allrgbs[ray_idx].to(device).float(), allstds[ray_idx].to(device).float()
args.static_branch_only = args.static_branch_only_initial
temporal_indices, supervision_rgb_train = temporal_sampler.sample(rgb_train, iteration)
#rgb_map, alphas_map, depth_map, weights, uncertainty
time_ = time.time()
timing['pre'] = time_ - _time
optimizer.zero_grad()
static_optimizer.zero_grad()
with autocast(enabled=bool(args.amp)):
# with profile(activities=[ProfilerActivity.CPU, ProfilerActivity.CUDA]) as prof:
retva = renderer(rays_train, tensorf, chunk=current_batch_size,
N_samples=nSamples, white_bg = white_bg, ndc_ray=ndc_ray,
device=device, is_train=True, rgb_train=rgb_train,
temporal_indices=temporal_indices, static_branch_only=args.static_branch_only,
std_train=std_train, nodepth=True)
# print(prof.key_averages().table(sort_by="cuda_time_total", row_limit=10))
retva = Namespace(**retva)
# =============== dynamics prediction for points ===============
# dynamics dynamics_supervision shape: Ns
# dynamic_prediction_loss = DynamicCriterion.calculate_loss(dynamics, dynamics_supervision)
# DynamicCriterion.compute_metrics()
# ray_wise_temporal_mask [Nr x T]
total_loss = 0
total_static_loss = 0
if args.static_dynamic_seperate:
if not args.static_branch_only:
# supervision_rgb_train = rgb_train.transpose(0,1)[temporal_indices].transpose(0,1)
if args.dy_loss == 'l2':
loss_ray_wise = ((retva.rgb_map - supervision_rgb_train[retva.ray_wise_temporal_mask])**2)
elif args.dy_loss == 'l1':
loss_ray_wise = ((retva.rgb_map - supervision_rgb_train[retva.ray_wise_temporal_mask]).abs())
else:
raise NotImplementedError
loss_ray_wise = loss_ray_wise.mean(dim=1)
# loss_mask = loss_ray_wise > (iteration /args.n_iters *
# (args.loss_weight_thresh_end - args.loss_weight_thresh_start)
# + args.loss_weight_thresh_start)
# loss = torch.cat([loss_ray_wise[loss_mask],
# (iteration/args.n_iters * (args.simple_sample_weight_end - args.simple_sample_weight) + args.simple_sample_weight) * loss_ray_wise[~loss_mask]]).mean()
# loss_ray_wise [Nr]
# loss ray_weight, std_train [Nr]
if args.ray_weighted == 0:
loss_ray_weight = torch.ones_like(loss_ray_wise)
elif args.ray_weighted == 1:
loss_ray_weight = (std_train.unsqueeze(dim=1).expand(-1, args.n_train_frames)[retva.ray_wise_temporal_mask]).reshape(-1)
elif args.ray_weighted == 2:
loss_ray_weight = (((rgb_train[:,1:,:] - rgb_train[:,:-1,:]).abs().max(dim=1)[0])**args.ray_weight_gamma).mean(dim=1)\
.unsqueeze(dim=1).expand(-1, args.n_train_frames)[retva.ray_wise_temporal_mask].reshape(-1)
loss = (loss_ray_wise * loss_ray_weight).sum()/loss_ray_weight.sum()
# hard_fraction = loss_mask.sum()/(loss_mask.shape[0])
Metrics['hfrac'].append(1.0)
# loss = ((retva.rgb_map - rgb_train[retva.ray_wise_temporal_mask])**2).mean()
total_loss += loss
Metrics['PSNRs'].append(-10.0 * np.log(loss.item()) / np.log(10.0))
Metrics['frac'].append(retva.fraction)
Metrics['tfrac'].append(retva.temporal_fraction)
if args.static_type == 'mean':
static_supervision = rgb_train.mean(dim=1)
elif args.static_type == 'median':
static_supervision = rgb_train.median(dim=1)[0]
elif args.static_type == 'single_frame':
static_supervision = torch.zeros(rgb_train.shape[0], rgb_train.shape[2]).to(rgb_train)
ray_dynamic_mask = retva.ray_wise_temporal_mask.any(dim=1)
static_supervision[ray_dynamic_mask] = rgb_train[ray_dynamic_mask].mean(dim=1)
static_supervision[~ray_dynamic_mask] = rgb_train[~ray_dynamic_mask][:,0,:]
else:
raise NotImplementedError
if args.static_loss == 'l2':
loss_static = ((retva.static_rgb_map - static_supervision)**2).mean()
elif args.static_loss == 'l1':
loss_static = ((retva.static_rgb_map - static_supervision).abs()).mean()
else:
raise NotImplementedError
total_static_loss += loss_static
Metrics['PSNRs_STA'].append(-10.0 * np.log(loss_static.item()) / np.log(10.0))
Metrics['sfrac'].append(retva.static_fraction)
else:
loss_weight = (retva.ray_wise_temporal_mask.float().mean(dim=1)).unsqueeze(dim=1).expand(-1, args.n_frames)
weight_static = torch.ones_like(loss_weight) * args.loss_weight_static
weight_dynamic = torch.ones_like(loss_weight)
loss_weight = torch.where((loss_weight-1).abs()<0.0001, weight_dynamic, weight_static)
loss_weight = loss_weight[retva.ray_wise_temporal_mask]
_distance = ((retva.rgb_map - rgb_train[retva.ray_wise_temporal_mask]) ** 2).mean(dim=1) # Nrv
loss = _distance.sum()/loss_weight.sum()
total_loss += loss
# loss = torch.mean()
_time = time.time()
timing['calc'] = _time - time_
# loss
# if args.dynamic_reg_weight > 0:
# total_loss += args.dynamic_reg_weight * dynamic_prediction_loss
if not args.static_branch_only and args.time_head == 'forrier' and args.filter_loss_weight > 0:
total_loss += args.filter_loss_weight * retva.filter_loss
if not args.static_branch_only and args.sigma_entropy_weight > 0:
total_loss += args.sigma_entropy_weight * entropy_loss(retva.sigma_ray_wise)
if args.sigma_entropy_weight_static > 0:
total_static_loss += args.sigma_entropy_weight_static * entropy_loss(retva.static_sigma)
if not args.static_branch_only and args.sigma_decay > 0:
if args.sigma_decay_method == 'l2':
total_loss += args.sigma_decay * (retva.validsigma**2).mean()
elif args.sigma_decay_method == 'l1':
total_loss += args.sigma_decay * retva.validsigma.abs().mean()
else:
raise NotImplementedError
if args.sigma_decay_static > 0:
if args.sigma_decay_method == 'l2':
total_static_loss += args.sigma_decay_static * (retva.static_validsigma**2).mean()
elif args.sigma_decay_method == 'l1':
total_static_loss += args.sigma_decay_static * retva.static_validsigma.abs().mean()
else:
raise NotImplementedError
if not args.static_branch_only and args.sigma_diff_weight > 0:
if args.sigma_diff_method == 'l2':
total_loss += args.sigma_diff_weight * (retva.sigma_diff.mean(dim=-1)**2).mean()
elif args.sigma_diff_method == 'log':
total_loss += args.sigma_diff_weight * consistency_loss(retva.sigma_diff, thresh=args.sigma_diff_log_thresh)
if not args.static_branch_only and args.rgb_diff_weight > 0:
total_loss += args.rgb_diff_weight * consistency_loss(retva.rgb_diff, thresh=args.rgb_diff_log_thresh, rgb=True)
if not args.static_branch_only and Ortho_reg_weight > 0:
loss_reg = tensorf.vector_comp_diffs()
total_loss += Ortho_reg_weight*loss_reg
summary_writer.add_scalar('train/reg', loss_reg.detach().item(), global_step=iteration)
if L1_reg_weight > 0:
if not args.static_branch_only:
loss_reg_L1 = tensorf.density_L1(sparse_reg)
total_loss = total_loss + L1_reg_weight * loss_reg_L1
loss_reg_L1_static = tensorf.density_L1_static(sparse_reg)
total_static_loss = total_static_loss + L1_reg_weight * loss_reg_L1_static
summary_writer.add_scalar('train/reg_l1', loss_reg_L1.detach().item(), global_step=iteration)
if TV_weight_density>0 and iteration < args.TV_loss_end_iteration:
TV_weight_density *= lr_factor
if not args.static_branch_only and args.TV_dynamic_factor > 0:
loss_tv = tensorf.TV_loss_density(tvreg) * TV_weight_density * args.TV_dynamic_factor
total_loss = total_loss + loss_tv
if args.static_dynamic_seperate:
loss_tv = tensorf.TV_loss_static_density(tvreg) * TV_weight_density
total_static_loss = total_static_loss + loss_tv
summary_writer.add_scalar('train/reg_tv_density', loss_tv.detach().item(), global_step=iteration)
if TV_weight_app>0 and iteration < args.TV_loss_end_iteration:
TV_weight_app *= lr_factor
if not args.static_branch_only and args.TV_dynamic_factor > 0:
loss_tv = tensorf.TV_loss_app(tvreg) * TV_weight_app * args.TV_dynamic_factor
total_loss = total_loss + loss_tv
if args.static_dynamic_seperate:
loss_tv = tensorf.TV_loss_static_app(tvreg) * TV_weight_app
total_static_loss = total_static_loss + loss_tv
summary_writer.add_scalar('train/reg_tv_app', loss_tv.detach().item(), global_step=iteration)
time_ = time.time()
timing['reg'] = time_ - _time
if args.amp:
static_scaler.scale(total_static_loss).backward()
static_scaler.step(static_optimizer)
static_scaler.update()
if not args.static_branch_only:
scaler.scale(total_loss).backward()
scaler.step(optimizer)
scaler.update()
# debugger.check()
else:
total_static_loss.backward()
static_optimizer.step()
if not args.static_branch_only:
total_loss.backward()
optimizer.step()
_time = time.time()
timing['backward'] = _time - time_
# print(timing)
if not args.static_branch_only:
loss = loss.detach().item()
summary_writer.add_scalar('train/mse', loss, global_step=iteration)
for key in Metrics.keys():
if key in TESTKEYS:
continue
summary_writer.add_scalar('train/{}'.format(key), Metrics[key][-1], global_step=iteration)
for param_group in optimizer.param_groups:
param_group['lr'] = param_group['lr'] * lr_factor
for param_group in static_optimizer.param_groups:
param_group['lr'] = param_group['lr'] * lr_factor
first_group_lr = optimizer.param_groups[0]['lr']
# Print the current values of the losses.
if iteration % args.progress_refresh_rate == 0:
if not args.static_branch_only:
description = f'Iteration {iteration:05d}:' \
+ f' mse:{loss:.2f}' \
+ f' loss:{total_loss.item():.2f}' \
+ f' LR_G1:{first_group_lr: .3f} '
else:
description = f'Iteration {iteration:05d}:' \
+ f' loss:{total_static_loss.item():.2f}' \
+ f' LR_G1:{first_group_lr: .3f} '
for key in Metrics.keys():
description += '{}:{:.2f} '.format(key.lower(), float(np.mean(Metrics[key])))
pbar.set_description(description)
for key in Metrics.keys():
if key not in TESTKEYS:
Metrics[key] = []
if iteration % args.vis_every == args.vis_every - 1 and args.N_vis!=0:
tensorf.save(f'{logfolder}/{args.expname}.th')
cuda_empty()
with autocast(enabled=bool(args.amp)):
Metrics['PSNRs_t'], Metrics['PSNRs_st'], all_metrics = evaluation(test_dataset,tensorf, args, renderer, f'{logfolder}/imgs_vis/', N_vis=args.N_vis,
prtx=f'{iteration:06d}_', N_samples=nSamples, white_bg = white_bg, ndc_ray=ndc_ray, compute_extra_metrics=False,
simplify=True, static_branch_only=args.static_branch_only)
summary_writer.add_scalar('test/psnr', np.mean(Metrics['PSNRs_t']), global_step=iteration)
summary_writer.add_scalar('test/psnr_sta', np.mean(Metrics['PSNRs_st']), global_step=iteration)
cuda_empty()
if iteration in update_AlphaMask_list:
# if reso_cur[0] * reso_cur[1] * reso_cur[2]<330**3:# update volume resolution
reso_mask = reso_cur
new_aabb = tensorf.updateAlphaMask(tuple(reso_mask))
print(new_aabb)
if iteration == update_AlphaMask_list[0]:
tensorf.shrink(new_aabb)
# tensorVM.alphaMask = None
L1_reg_weight = args.L1_weight_rest
print("continuing L1_reg_weight", L1_reg_weight)
if not args.ndc_ray and iteration == update_AlphaMask_list[1]:
# filter rays outside the bbox
allrays,allrgbs = tensorf.filtering_rays(allrays,allrgbs)
# trainingSampler = SimpleSampler(allrgbs.shape[0], args.batch_size)
cuda_empty()
current_batch_size = int(batch_factor[update_AlphaMask_list.index(iteration)] * args.batch_size)
print("re-creating sammpler with batch size: {}".format(current_batch_size))
# trainingSampler = SimpleSampler(allrgbs.shape[0], current_batch_size)
if args.ray_sampler == 'simple':
trainingSampler = SimpleSampler(allrays.shape[0], current_batch_size)
elif args.ray_sampler == 'weighted':
trainingSampler = WeightedRaySampler(allrays.shape[0], current_batch_size, train_dataset.all_rays_weight)
if args.ray_sampler == 'comp' and iteration == args.ray_sampler_shift:
print('Shifting Training Sampler')
trainingSampler = WeightedRaySampler(allrays.shape[0], current_batch_size, train_dataset.all_rays_weight)
if iteration == args.shift_std:
print('Shifting STDs')
allstds = train_dataset.shift_stds()
test_dataset.shift_stds()
if iteration not in upsamp_list:
train_dynamics(args, tensorf, allrays, allrgbs, allstds, ndc_ray, nSamples, scaler, device, iter_ratio=2)
eval_dynamics(args, tensorf, test_dataset, ndc_ray, nSamples, device)
cuda_empty()
if iteration in upsamp_list:
n_voxels = N_voxel_list.pop(0)
reso_cur = N_to_reso(n_voxels, tensorf.aabb)
nSamples = min(args.nSamples, cal_n_samples(reso_cur,args.step_ratio))
tensorf.upsample_volume_grid(reso_cur)
if args.lr_upsample_reset:
print("reset lr to initial")
lr_scale = 1 #0.1 ** (iteration / args.n_iters)
else:
lr_scale = args.lr_decay_target_ratio ** (iteration / args.n_iters)
grad_vars = tensorf.get_optparam_groups(args.lr_dynamic_init*lr_scale, args.lr_dynamic_basis*lr_scale)
optimizer = opt_proto(grad_vars, weight_decay=args.dynamic_weight_decay)
static_grad_vars = tensorf.get_static_optparam_groups(args.lr_init*lr_scale, args.lr_basis*lr_scale)
static_optimizer = opt_proto(static_grad_vars)
train_dynamics(args, tensorf, allrays, allrgbs, allstds, ndc_ray, nSamples, scaler, device, iter_ratio=(2 if iteration==upsamp_list[-1] else 1))
eval_dynamics(args, tensorf, test_dataset, ndc_ray, nSamples, device)
cuda_empty()
if args.update_stepratio_iters is not None and iteration in args.update_stepratio_iters:
_idx = args.update_stepratio_iters.index(iteration)
tensorf.update_stepRatio(args.update_stepratio[_idx])
nSamples = min(args.nSamples, cal_n_samples(reso_cur, args.update_stepratio[_idx]))
print(f'Sampling points: {nSamples}')
if args.n_iters > 1000 and (iteration % 1000 == 0 or iteration == args.n_iters-1):
tensorf.save(f'{logfolder}/{args.expname}.th')
cuda_empty()
if args.render_train:
os.makedirs(f'{logfolder}/imgs_train_all', exist_ok=True)
train_dataset = dataset(args.datadir, split='train', downsample=args.downsample_train, is_stack=True,
scene_box=args.scene_box)
with autocast(enabled=bool(args.amp)):
PSNRs_test, PSNRs_STA_test, all_metrics = evaluation(train_dataset,tensorf, args, renderer, f'{logfolder}/imgs_train_all/',
N_vis=-1, N_samples=-1, white_bg = white_bg, ndc_ray=ndc_ray,device=device,
static_branch_only=args.static_branch_only)
print(f'======> {args.expname} test all psnr: {np.mean(PSNRs_test)} <========================')
print(f'======> {args.expname} test all psnr sta: {np.mean(PSNRs_STA_test)} <========================')
# evaluate images existing in dataset, can not generate a continuous video for llff data.
if args.render_test:
os.makedirs(f'{logfolder}/imgs_test_all', exist_ok=True)
with autocast(enabled=bool(args.amp)):
PSNRs_test, PSNRs_STA_test, all_metrics = evaluation(test_dataset,tensorf, args, renderer, f'{logfolder}/imgs_test_all/',
N_vis=-1, N_samples=-1, white_bg = white_bg, ndc_ray=ndc_ray,device=device,
simplify=(args.n_frames>0), static_branch_only=args.static_branch_only)
summary_writer.add_scalar('test/psnr_all', np.mean(PSNRs_test), global_step=iteration)
summary_writer.add_scalar('test/psnr_sta_all', np.mean(PSNRs_STA_test), global_step=iteration)
print(f'======> {args.expname} test all psnr: {np.mean(PSNRs_test)} <========================')
print(f'======> {args.expname} test all psnr sta: {np.mean(PSNRs_STA_test)} <========================')
# for llff data. without many images as ground truth, novel views are rendered without measuring metrics
if args.render_path:
c2ws = test_dataset.render_path
# c2ws = test_dataset.poses
print('========>',c2ws.shape)
os.makedirs(f'{logfolder}/imgs_path_all', exist_ok=True)
with autocast(enabled=bool(args.amp)):
if args.sigma_static_thresh < 1.0 or args.static_branch_only:
print("evaluating path")
evaluation_path(test_dataset, tensorf, args, c2ws, renderer, f'{logfolder}/imgs_path_all/',
N_vis=-1, N_samples=-1, white_bg = white_bg, ndc_ray=ndc_ray,device=device,
static_branch_only=args.static_branch_only, temporal_sampler=temporal_sampler)
else:
evaluation_path_efficient(test_dataset, tensorf, args, c2ws, renderer, f'{logfolder}/imgs_path_all/',
N_vis=-1, N_samples=-1, white_bg = white_bg, ndc_ray=ndc_ray,device=device)
if __name__ == '__main__':
torch.set_default_dtype(torch.float32)
torch.manual_seed(20211202)
np.random.seed(20211202)
args = config_parser()
print(args)
if args.export_mesh:
export_mesh(args)
if args.render_only and (args.render_test or args.render_path or args.dense_alpha):
render_test(args)
else:
reconstruction(args)