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train_tc.py
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train_tc.py
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import argparse
import os
import sys
import numpy
import torch
import models
import dataset
import utils
import supervision as L
import exporters as IO
import spherical as S360
def parse_arguments(args):
usage_text = (
"Omnidirectional Trinocular Stereo Placement (Up-Down & Left-Right , UD+LR) Training"
)
parser = argparse.ArgumentParser(description=usage_text)
# durations
parser.add_argument('-e',"--epochs", type=int, help="Train for a total number of <epochs> epochs.")
parser.add_argument('-b',"--batch_size", type=int, help="Train with a <batch_size> number of samples each train iteration.")
parser.add_argument("--test_batch_size", default=1, type=int, help="Test with a <batch_size> number of samples each test iteration.")
parser.add_argument('-d','--disp_iters', type=int, default=50, help='Log training progress (i.e. loss etc.) on console every <disp_iters> iterations.')
parser.add_argument('--save_iters', type=int, default=100, help='Maximum test iterations to perform each test run.')
# paths
parser.add_argument("--configuration", required=False, type=str, default='mono', help="Data loader configuration <mono>, <lr>, <ud>, <tc>", choices=['mono', 'lr', 'ud', 'tc'])
parser.add_argument("--test_path", type=str, help="Path to the testing file containing the test set file paths")
parser.add_argument("--save_path", type=str, help="Path to the folder where the models and results will be saved at.")
# model
parser.add_argument("--configuration", required = False, type = str, default='tc', help = "Training configuration <mono>, <lr>, <ud>, <tc>", choices=['mono', 'lr', 'ud', 'tc'])
parser.add_argument('--weight_init', type=str, default="xavier", help='Weight initialization method, or path to weights file (for fine-tuning or continuing training)')
parser.add_argument('--model', default="default", type=str, help='Model selection argument.')
# optimization
parser.add_argument('-o','--optimizer', type=str, default="adam", help='The optimizer that will be used during training.')
parser.add_argument("--opt_state", type=str, help="Path to stored optimizer state file to continue training)")
parser.add_argument('-l','--lr', type=float, default=0.0002, help='Optimization Learning Rate.')
parser.add_argument('-m','--momentum', type=float, default=0.9, help='Optimization Momentum.')
parser.add_argument('--momentum2', type=float, default=0.999, help='Optimization Second Momentum (optional, only used by some optimizers).')
parser.add_argument('--epsilon', type=float, default=1e-8, help='Optimization Epsilon (optional, only used by some optimizers).')
parser.add_argument('--weight_decay', type=float, default=0, help='Optimization Weight Decay.')
# hardware
parser.add_argument('-g','--gpu', type=str, default='0', help='The ids of the GPU(s) that will be utilized. (e.g. 0 or 0,1, or 0,2). Use -1 for CPU.')
# other
parser.add_argument('-n','--name', type=str, default='default_name', help='The name of this train/test. Used when storing information.')
parser.add_argument("--visdom", type=str, nargs='?', default=None, const="127.0.0.1", help="Visdom server IP (port defaults to 8097)")
parser.add_argument("--visdom_iters", type=int, default=400, help = "Iteration interval that results will be reported at the visdom server for visualization.")
parser.add_argument("--seed", type=int, default=1337, help="Fixed manual seed, zero means no seeding.")
# network specific params
parser.add_argument("--photo_w", type=float, default=1.0, help = "Photometric loss weight.")
parser.add_argument("--photo_ratio", type=float, default=0.5, help = "Ratio between right (1-ratio) and up (ratio) photometric loss.")
parser.add_argument("--smooth_reg_w", type=float, default=0.1, help = "Smoothness regularization weight.")
parser.add_argument("--ssim_window", type=int, default=7, help = "Kernel size to use in SSIM calculation.")
parser.add_argument("--ssim_mode", type=str, default='gaussian', help = "Type of SSIM averaging (either gaussian or box).")
parser.add_argument("--ssim_std", type=float, default=1.5, help = "SSIM standard deviation value used when creating the gaussian averaging kernels.")
parser.add_argument("--ssim_alpha", type=float, default=0.85, help = "Alpha factor to weight the SSIM and L1 losses, where a x SSIM and (1 - a) x L1.")
parser.add_argument("--pred_bias", type=float, default=5.0, help = "Initialize prediction layers' bias to the given value (helps convergence).")
# details
parser.add_argument("--depth_thres", type=float, default=20.0, help = "Depth threshold - depth clipping.")
parser.add_argument("--baseline", type=float, default=0.26, help = "Stereo baseline distance (in either axis).")
parser.add_argument("--width", type=float, default=512, help = "Spherical image width.")
return parser.parse_known_args(args)
if __name__ == "__main__":
args, unknown = parse_arguments(sys.argv)
gpus = [int(id) for id in args.gpu.split(',') if int(id) >= 0]
# device & visualizers
device, visualizers, model_params = utils.initialize(args)
plot_viz = visualizers[0]
img_viz = visualizers[1]
# model
model = models.get_model(args.model, model_params)
utils.init.initialize_weights(model, args.weight_init, pred_bias=args.pred_bias)
if (len(gpus) > 1):
model = torch.nn.parallel.DataParallel(model, gpus)
model = model.to(device)
# optimizer
optimizer = utils.init_optimizer(model, args)
# train data
train_data = dataset.dataset_360D.Dataset360D(args.train_path, " ", args.configuration, [256, 512])
train_data_iterator = torch.utils.data.DataLoader(train_data, batch_size=args.batch_size,\
num_workers=args.batch_size // len(gpus) // 4, pin_memory=False, shuffle=True)
# test data
test_data = dataset.dataset_360D.Dataset360D(args.test_path, " ", args.configuration, [256, 512])
test_data_iterator = torch.utils.data.DataLoader(test_data, batch_size=args.test_batch_size,\
num_workers=args.batch_size // len(gpus) // 4, pin_memory=False, shuffle=True)
print("Data size : {0} | Test size : {1}".format(\
args.batch_size * train_data_iterator.__len__(), \
args.test_batch_size * test_data_iterator.__len__()))
# params
width = args.width
height = args.width // 2
photo_params = L.photometric.PhotometricLossParameters(
alpha=args.ssim_alpha, l1_estimator='none', ssim_estimator='none',
ssim_mode=args.ssim_mode, std=args.ssim_std, window=args.ssim_window
)
iteration_counter = 0
# meters
total_loss = utils.AverageMeter()
running_photo_loss_lr = utils.AverageMeter()
running_photo_loss_ud = utils.AverageMeter()
running_depth_smooth_loss = utils.AverageMeter()
# train / test loop
model.train()
plot_viz.config(**vars(args))
for epoch in range(args.epochs):
print("Training | Epoch: {}".format(epoch))
img_viz.update_epoch(epoch)
for batch_id, batch in enumerate(train_data_iterator):
optimizer.zero_grad()
active_loss = torch.tensor(0.0).to(device)
''' Data '''
left_rgb = batch['leftRGB'].to(device)
b, _, __, ___ = left_rgb.size()
expand_size = (b, -1, -1, -1)
sgrid = S360.grid.create_spherical_grid(width).to(device)
uvgrid = S360.grid.create_image_grid(width, height).to(device)
right_rgb = batch['rightRGB'].to(device)
up_rgb = batch['upRGB'].to(device)
left_depth = batch['leftDepth'].to(device)
up_depth = batch['upDepth'].to(device)
right_depth = batch['rightDepth'].to(device)
''' Prediction '''
left_depth_pred = torch.abs(model(left_rgb))
''' Forward Rendering LR '''
disp_lr = torch.cat(
(
S360.derivatives.dphi_horizontal(sgrid, left_depth_pred, args.baseline),
S360.derivatives.dtheta_horizontal(sgrid, left_depth_pred, args.baseline)
),
dim=1
)
right_render_coords = uvgrid + disp_lr
right_render_coords[:, 0, :, :] = torch.fmod(right_render_coords[:, 0, :, :] + width, width)
right_render_coords[torch.isnan(right_render_coords)] = 0.0
right_render_coords[torch.isinf(right_render_coords)] = 0.0
right_rgb_t, right_mask_t = L.splatting.render(left_rgb, left_depth_pred,\
right_render_coords, max_depth=args.depth_thres)
''' Forward Rendering UD '''
disp_ud = torch.cat(
(
torch.zeros_like(left_depth_pred),
S360.derivatives.dtheta_vertical(sgrid, left_depth_pred, args.baseline)
),
dim=1
)
up_render_coords = uvgrid + disp_ud
up_render_coords[torch.isnan(up_render_coords)] = 0.0
up_render_coords[torch.isinf(up_render_coords)] = 0.0
up_rgb_t, up_mask_t = L.splatting.render(left_rgb, left_depth_pred,\
up_render_coords, max_depth=args.depth_thres)
''' Loss LR '''
right_cutoff_mask = (right_depth < args.depth_thres)
attention_weights_lr = S360.weights.phi_confidence(
S360.grid.create_spherical_grid(width)).to(device)
# attention_weights_lr = S360.weights.spherical_confidence(
# S360.grid.create_spherical_grid(width), zero_low=0.001
# ).to(device)
photo_loss_lr = L.photometric.calculate_loss(right_rgb_t, right_rgb, photo_params,
mask=right_cutoff_mask, weights=attention_weights_lr)
active_loss += photo_loss_lr * args.photo_w * (1 - args.photo_ratio)
''' Loss UD '''
up_cutoff_mask = (up_depth < args.depth_thres)
attention_weights_ud = S360.weights.theta_confidence(
S360.grid.create_spherical_grid(width)).to(device)
photo_loss_ud = L.photometric.calculate_loss(up_rgb_t, up_rgb, photo_params,
mask=up_cutoff_mask, weights=attention_weights_ud)
active_loss += photo_loss_ud * args.photo_w * args.photo_ratio
''' Loss Prior (3D Smoothness) '''
left_xyz = S360.cartesian.coords_3d(sgrid, left_depth_pred)
dI_dxyz = S360.derivatives.dV_dxyz(left_xyz)
tc_cuttof_mask = right_cutoff_mask & up_cutoff_mask
guidance_duv = S360.derivatives.dI_duv(left_rgb)
depth_smooth_loss = L.smoothness.guided_smoothness_loss(
dI_dxyz, guidance_duv, tc_cuttof_mask, (1.0 - attention_weights_ud)
* tc_cuttof_mask.type(attention_weights_ud.dtype)
)
active_loss += depth_smooth_loss * args.smooth_reg_w
''' Update Params '''
active_loss.backward()
optimizer.step()
''' Visualize'''
total_loss.update(active_loss)
running_depth_smooth_loss.update(depth_smooth_loss)
running_photo_loss_lr.update(photo_loss_lr)
running_photo_loss_ud.update(photo_loss_ud)
iteration_counter += b
if (iteration_counter + 1) % args.disp_iters <= args.batch_size:
print("Epoch: {}, iteration: {}\nPhotometric (LR-UD): {} - {}\nSmoothness: {}\nTotal average loss: {}\n"\
.format(epoch, iteration_counter, running_photo_loss_lr.avg, \
running_photo_loss_ud.avg, running_depth_smooth_loss.avg, total_loss.avg))
plot_viz.append_loss(epoch + 1, iteration_counter, total_loss.avg, "avg")
plot_viz.append_loss(epoch + 1, iteration_counter, running_photo_loss_lr.avg, "photo_lr")
plot_viz.append_loss(epoch + 1, iteration_counter, running_photo_loss_ud.avg, "photo_ud")
plot_viz.append_loss(epoch + 1, iteration_counter, running_depth_smooth_loss.avg, "smooth")
total_loss.reset()
running_photo_loss_lr.reset()
running_photo_loss_ud.reset()
running_depth_smooth_loss.reset()
if args.visdom_iters > 0 and (iteration_counter + 1) % args.visdom_iters <= args.batch_size:
img_viz.show_separate_images(left_rgb, 'input')
img_viz.show_separate_images(right_rgb, 'right')
img_viz.show_separate_images(up_rgb, 'up')
img_viz.show_map(left_depth_pred, 'depth')
img_viz.show_separate_images(torch.clamp(right_rgb_t, min=0.0, max=1.0), 'recon_lr')
img_viz.show_separate_images(torch.clamp(up_rgb_t, min=0.0, max=1.0), 'recon_ud')
''' Save '''
print("Saving model @ epoch #" + str(epoch))
utils.checkpoint.save_network_state(model, optimizer, epoch,\
args.name + "_model_state", args.save_path)
''' Test '''
print("Testing model @ epoch #" + str(epoch))
model.eval()
with torch.no_grad():
rmse_avg = torch.tensor(0.0).float()
counter = torch.tensor(0.0).float()
for test_batch_id , test_batch in enumerate(test_data_iterator):
left_rgb = test_batch['leftRGB'].to(device)
b, c, h, w = left_rgb.size()
rads = sgrid.expand(b, -1, -1, -1)
uv = uvgrid.expand(b, -1, -1, -1)
left_depth_pred = torch.abs(model(left_rgb))
left_depth = test_batch['leftDepth'].to(device)
left_depth[torch.isnan(left_depth)] = 50.0
left_depth[torch.isinf(left_depth)] = 50.0
mse = (left_depth_pred ** 2) - (left_depth ** 2)
mse[torch.isnan(mse)] = 0.0
mse[torch.isinf(mse)] = 0.0
mask = (left_depth < args.depth_thres).float()
if torch.sum(mask) == 0:
continue
rmse = torch.sqrt(torch.sum(mse * mask) / torch.sum(mask).float())
if not torch.isnan(rmse):
rmse_avg += rmse.cpu().float()
counter += torch.tensor(b).float()
if counter < args.save_iters:
disp = torch.cat(
(
S360.derivatives.dphi_horizontal(rads, left_depth_pred, args.baseline),
S360.derivatives.dtheta_horizontal(rads, left_depth_pred, args.baseline)
), dim=1
)
right_render_coords = uv + disp
right_render_coords[:, 0, :, :] = torch.fmod(right_render_coords[:, 0, :, :] + width, width)
right_render_coords[torch.isnan(right_render_coords)] = 0.0
right_render_coords[torch.isinf(right_render_coords)] = 0.0
right_rgb_t, right_mask_t = L.splatting.render(left_rgb, left_depth_pred, right_render_coords, max_depth=args.depth_thres)
# save
IO.image.save_image(os.path.join(args.save_path,\
str(epoch) + "_" + str(counter) + "_#_left.png"), left_rgb)
IO.image.save_image(os.path.join(args.save_path,\
str(epoch) + "_" + str(counter) + "_#_right_t.png"), right_rgb_t)
IO.image.save_data(os.path.join(args.save_path,\
str(epoch) + "_" + str(counter) + "_#_depth.exr"), left_depth_pred, scale=1.0)
if (counter == 0) or (torch.isnan(rmse_avg) > 0):
print("Error calculating RMSE (val:%f , sum:%d)" % (rmse_avg, counter))
plot_viz.append_loss(epoch + 1, epoch + 1, torch.tensor(0.0), "rmse", mode='test')
else:
rmse_avg /= counter
print("Testing epoch {}: RMSE = {}".format(epoch+1, rmse_avg))
plot_viz.append_loss(epoch + 1, epoch + 1, rmse_avg, "rmse", mode='test')
torch.enable_grad()
model.train()