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import os | |
import torch | |
import numpy as np | |
from torch.utils.data import DataLoader | |
from os.path import join as pjoin | |
from models.mask_transformer.transformer import ResidualTransformer | |
from models.mask_transformer.transformer_trainer import ResidualTransformerTrainer | |
from models.vq.model import RVQVAE | |
from options.train_option import TrainT2MOptions | |
from utils.plot_script import plot_3d_motion | |
from utils.motion_process import recover_from_ric | |
from utils.get_opt import get_opt | |
from utils.fixseed import fixseed | |
from utils.paramUtil import t2m_kinematic_chain, kit_kinematic_chain | |
from data.t2m_dataset import Text2MotionDataset | |
from motion_loaders.dataset_motion_loader import get_dataset_motion_loader | |
from models.t2m_eval_wrapper import EvaluatorModelWrapper | |
def plot_t2m(data, save_dir, captions, m_lengths): | |
data = train_dataset.inv_transform(data) | |
# print(ep_curves.shape) | |
for i, (caption, joint_data) in enumerate(zip(captions, data)): | |
joint_data = joint_data[:m_lengths[i]] | |
joint = recover_from_ric(torch.from_numpy(joint_data).float(), opt.joints_num).numpy() | |
save_path = pjoin(save_dir, '%02d.mp4'%i) | |
# print(joint.shape) | |
plot_3d_motion(save_path, kinematic_chain, joint, title=caption, fps=20) | |
def load_vq_model(): | |
opt_path = pjoin(opt.checkpoints_dir, opt.dataset_name, opt.vq_name, 'opt.txt') | |
vq_opt = get_opt(opt_path, opt.device) | |
vq_model = RVQVAE(vq_opt, | |
dim_pose, | |
vq_opt.nb_code, | |
vq_opt.code_dim, | |
vq_opt.output_emb_width, | |
vq_opt.down_t, | |
vq_opt.stride_t, | |
vq_opt.width, | |
vq_opt.depth, | |
vq_opt.dilation_growth_rate, | |
vq_opt.vq_act, | |
vq_opt.vq_norm) | |
ckpt = torch.load(pjoin(vq_opt.checkpoints_dir, vq_opt.dataset_name, vq_opt.name, 'model', 'net_best_fid.tar'), | |
map_location=opt.device) | |
model_key = 'vq_model' if 'vq_model' in ckpt else 'net' | |
vq_model.load_state_dict(ckpt[model_key]) | |
print(f'Loading VQ Model {opt.vq_name}') | |
vq_model.to(opt.device) | |
return vq_model, vq_opt | |
if __name__ == '__main__': | |
parser = TrainT2MOptions() | |
opt = parser.parse() | |
fixseed(opt.seed) | |
opt.device = torch.device("cpu" if opt.gpu_id == -1 else "cuda:" + str(opt.gpu_id)) | |
torch.autograd.set_detect_anomaly(True) | |
opt.save_root = pjoin(opt.checkpoints_dir, opt.dataset_name, opt.name) | |
opt.model_dir = pjoin(opt.save_root, 'model') | |
# opt.meta_dir = pjoin(opt.save_root, 'meta') | |
opt.eval_dir = pjoin(opt.save_root, 'animation') | |
opt.log_dir = pjoin('./log/res/', opt.dataset_name, opt.name) | |
os.makedirs(opt.model_dir, exist_ok=True) | |
# os.makedirs(opt.meta_dir, exist_ok=True) | |
os.makedirs(opt.eval_dir, exist_ok=True) | |
os.makedirs(opt.log_dir, exist_ok=True) | |
if opt.dataset_name == 't2m': | |
opt.data_root = './dataset/HumanML3D' | |
opt.motion_dir = pjoin(opt.data_root, 'new_joint_vecs') | |
opt.joints_num = 22 | |
opt.max_motion_len = 55 | |
dim_pose = 263 | |
radius = 4 | |
fps = 20 | |
kinematic_chain = t2m_kinematic_chain | |
dataset_opt_path = './checkpoints/t2m/Comp_v6_KLD005/opt.txt' | |
elif opt.dataset_name == 'kit': #TODO | |
opt.data_root = './dataset/KIT-ML' | |
opt.motion_dir = pjoin(opt.data_root, 'new_joint_vecs') | |
opt.joints_num = 21 | |
radius = 240 * 8 | |
fps = 12.5 | |
dim_pose = 251 | |
opt.max_motion_len = 55 | |
kinematic_chain = kit_kinematic_chain | |
dataset_opt_path = './checkpoints/kit/Comp_v6_KLD005/opt.txt' | |
else: | |
raise KeyError('Dataset Does Not Exist') | |
opt.text_dir = pjoin(opt.data_root, 'texts') | |
vq_model, vq_opt = load_vq_model() | |
clip_version = 'ViT-B/32' | |
opt.num_tokens = vq_opt.nb_code | |
opt.num_quantizers = vq_opt.num_quantizers | |
# if opt.is_v2: | |
res_transformer = ResidualTransformer(code_dim=vq_opt.code_dim, | |
cond_mode='text', | |
latent_dim=opt.latent_dim, | |
ff_size=opt.ff_size, | |
num_layers=opt.n_layers, | |
num_heads=opt.n_heads, | |
dropout=opt.dropout, | |
clip_dim=512, | |
shared_codebook=vq_opt.shared_codebook, | |
cond_drop_prob=opt.cond_drop_prob, | |
# codebook=vq_model.quantizer.codebooks[0] if opt.fix_token_emb else None, | |
share_weight=opt.share_weight, | |
clip_version=clip_version, | |
opt=opt) | |
# else: | |
# res_transformer = ResidualTransformer(code_dim=vq_opt.code_dim, | |
# cond_mode='text', | |
# latent_dim=opt.latent_dim, | |
# ff_size=opt.ff_size, | |
# num_layers=opt.n_layers, | |
# num_heads=opt.n_heads, | |
# dropout=opt.dropout, | |
# clip_dim=512, | |
# shared_codebook=vq_opt.shared_codebook, | |
# cond_drop_prob=opt.cond_drop_prob, | |
# # codebook=vq_model.quantizer.codebooks[0] if opt.fix_token_emb else None, | |
# clip_version=clip_version, | |
# opt=opt) | |
all_params = 0 | |
pc_transformer = sum(param.numel() for param in res_transformer.parameters_wo_clip()) | |
print(res_transformer) | |
# print("Total parameters of t2m_transformer net: {:.2f}M".format(pc_transformer / 1000_000)) | |
all_params += pc_transformer | |
print('Total parameters of all models: {:.2f}M'.format(all_params / 1000_000)) | |
mean = np.load(pjoin(opt.checkpoints_dir, opt.dataset_name, opt.vq_name, 'meta', 'mean.npy')) | |
std = np.load(pjoin(opt.checkpoints_dir, opt.dataset_name, opt.vq_name, 'meta', 'std.npy')) | |
train_split_file = pjoin(opt.data_root, 'train.txt') | |
val_split_file = pjoin(opt.data_root, 'val.txt') | |
train_dataset = Text2MotionDataset(opt, mean, std, train_split_file) | |
val_dataset = Text2MotionDataset(opt, mean, std, val_split_file) | |
train_loader = DataLoader(train_dataset, batch_size=opt.batch_size, num_workers=4, shuffle=True, drop_last=True) | |
val_loader = DataLoader(val_dataset, batch_size=opt.batch_size, num_workers=4, shuffle=True, drop_last=True) | |
eval_val_loader, _ = get_dataset_motion_loader(dataset_opt_path, 32, 'val', device=opt.device) | |
wrapper_opt = get_opt(dataset_opt_path, torch.device('cuda')) | |
eval_wrapper = EvaluatorModelWrapper(wrapper_opt) | |
trainer = ResidualTransformerTrainer(opt, res_transformer, vq_model) | |
trainer.train(train_loader, val_loader, eval_val_loader, eval_wrapper=eval_wrapper, plot_eval=plot_t2m) |