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import os, sys
import torch
import argparse
import numpy as np
import torch
import matplotlib.pyplot as plt
from PIL import Image
print(torch.__version__)
print(torch.version.cuda)
sys.path.append("./rome/")
sys.path.append('./DECA')
from rome.src.utils import args as args_utils
from rome.src.utils.processing import process_black_shape, tensor2image
# loading models ---- create model repo
from huggingface_hub import hf_hub_download
default_modnet_path = hf_hub_download('Pie31415/rome','modnet_photographic_portrait_matting.ckpt')
default_model_path = hf_hub_download('Pie31415/rome','rome.pth')
# parser configurations
from easydict import EasyDict as edict
args = edict({
"save_dir": ".",
"save_render": True,
"model_checkpoint": default_model_path,
"modnet_path": default_modnet_path,
"random_seed": 0,
"debug": False,
"verbose": False,
"model_image_size": 256,
"align_source": True,
"align_target": False,
"align_scale": 1.25,
"use_mesh_deformations": False,
"subdivide_mesh": False,
"renderer_sigma": 1e-08,
"renderer_zfar": 100.0,
"renderer_type": "soft_mesh",
"renderer_texture_type": "texture_uv",
"renderer_normalized_alphas": False,
"deca_path": "DECA",
"rome_data_dir": "rome/data",
"autoenc_cat_alphas": False,
"autoenc_align_inputs": False,
"autoenc_use_warp": False,
"autoenc_num_channels": 64,
"autoenc_max_channels": 512,
"autoenc_num_groups": 4,
"autoenc_num_bottleneck_groups": 0,
"autoenc_num_blocks": 2,
"autoenc_num_layers": 4,
"autoenc_block_type": "bottleneck",
"neural_texture_channels": 8,
"num_harmonic_encoding_funcs": 6,
"unet_num_channels": 64,
"unet_max_channels": 512,
"unet_num_groups": 4,
"unet_num_blocks": 1,
"unet_num_layers": 2,
"unet_block_type": "conv",
"unet_skip_connection_type": "cat",
"unet_use_normals_cond": True,
"unet_use_vertex_cond": False,
"unet_use_uvs_cond": False,
"unet_pred_mask": False,
"use_separate_seg_unet": True,
"norm_layer_type": "gn",
"activation_type": "relu",
"conv_layer_type": "ws_conv",
"deform_norm_layer_type": "gn",
"deform_activation_type": "relu",
"deform_conv_layer_type": "ws_conv",
"unet_seg_weight": 0.0,
"unet_seg_type": "bce_with_logits",
"deform_face_tightness": 0.0001,
"use_whole_segmentation": False,
"mask_hair_for_neck": False,
"use_hair_from_avatar": False,
"use_scalp_deforms": True,
"use_neck_deforms": True,
"use_basis_deformer": False,
"use_unet_deformer": True,
"pretrained_encoder_basis_path": "",
"pretrained_vertex_basis_path": "",
"num_basis": 50,
"basis_init": "pca",
"num_vertex": 5023,
"train_basis": True,
"path_to_deca": "DECA",
"path_to_linear_hair_model": "data/linear_hair.pth", # N/A
"path_to_mobile_model": "data/disp_model.pth", # N/A
"n_scalp": 60,
"use_distill": False,
"use_mobile_version": False,
"deformer_path": "data/rome.pth",
"output_unet_deformer_feats": 32,
"use_deca_details": False,
"use_flametex": False,
"upsample_type": "nearest",
"num_frequencies": 6,
"deform_face_scale_coef": 0.0,
"device": "cpu"
})
# download FLAME and DECA pretrained
generic_model_path = hf_hub_download('Pie31415/rome','generic_model.pkl')
deca_model_path = hf_hub_download('Pie31415/rome','deca_model.tar')
import pickle
with open(generic_model_path, 'rb') as f:
ss = pickle.load(f, encoding='latin1')
with open('./DECA/data/generic_model.pkl', 'wb') as out:
pickle.dump(ss, out)
with open(deca_model_path, "rb") as input:
with open('./DECA/data/deca_model.tar', "wb") as out:
for line in input:
out.write(line)
# load ROME inference model
from rome.infer import Infer
infer = Infer(args)
def predict(source_img, driver_img):
out = infer.evaluate(source_img, driver_img, crop_center=False)
res = tensor2image(torch.cat([out['source_information']['data_dict']['source_img'][0].cpu(),
out['source_information']['data_dict']['target_img'][0].cpu(),
out['render_masked'].cpu(), out['pred_target_shape_img'][0].cpu()], dim=2))
return res[..., ::-1]
import gradio as gr
gr.Interface(
fn=predict,
inputs=[
gr.Image(type="pil"),
gr.Image(type="pil")
],
outputs=gr.Image(),
examples=[]).launch() |