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"""Converting legacy network pickle into the new format.""" |
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import click |
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import pickle |
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import re |
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import copy |
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import numpy as np |
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import torch |
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import dnnlib |
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from torch_utils import misc |
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def load_network_pkl(f, force_fp16=False): |
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data = _LegacyUnpickler(f).load() |
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if isinstance(data, tuple) and len(data) == 3 and all(isinstance(net, _TFNetworkStub) for net in data): |
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tf_G, tf_D, tf_Gs = data |
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G = convert_tf_generator(tf_G) |
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D = convert_tf_discriminator(tf_D) |
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G_ema = convert_tf_generator(tf_Gs) |
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data = dict(G=G, D=D, G_ema=G_ema) |
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if 'training_set_kwargs' not in data: |
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data['training_set_kwargs'] = None |
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if 'augment_pipe' not in data: |
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data['augment_pipe'] = None |
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assert isinstance(data['G'], torch.nn.Module) |
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assert isinstance(data['D'], torch.nn.Module) |
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assert isinstance(data['G_ema'], torch.nn.Module) |
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assert isinstance(data['training_set_kwargs'], (dict, type(None))) |
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assert isinstance(data['augment_pipe'], (torch.nn.Module, type(None))) |
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if force_fp16: |
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for key in ['G', 'D', 'G_ema']: |
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old = data[key] |
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kwargs = copy.deepcopy(old.init_kwargs) |
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fp16_kwargs = kwargs.get('synthesis_kwargs', kwargs) |
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fp16_kwargs.num_fp16_res = 4 |
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fp16_kwargs.conv_clamp = 256 |
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if kwargs != old.init_kwargs: |
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new = type(old)(**kwargs).eval().requires_grad_(False) |
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misc.copy_params_and_buffers(old, new, require_all=True) |
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data[key] = new |
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return data |
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class _TFNetworkStub(dnnlib.EasyDict): |
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pass |
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class _LegacyUnpickler(pickle.Unpickler): |
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def find_class(self, module, name): |
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if module == 'dnnlib.tflib.network' and name == 'Network': |
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return _TFNetworkStub |
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return super().find_class(module, name) |
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def _collect_tf_params(tf_net): |
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tf_params = dict() |
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def recurse(prefix, tf_net): |
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for name, value in tf_net.variables: |
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tf_params[prefix + name] = value |
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for name, comp in tf_net.components.items(): |
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recurse(prefix + name + '/', comp) |
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recurse('', tf_net) |
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return tf_params |
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def _populate_module_params(module, *patterns): |
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for name, tensor in misc.named_params_and_buffers(module): |
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found = False |
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value = None |
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for pattern, value_fn in zip(patterns[0::2], patterns[1::2]): |
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match = re.fullmatch(pattern, name) |
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if match: |
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found = True |
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if value_fn is not None: |
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value = value_fn(*match.groups()) |
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break |
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try: |
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assert found |
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if value is not None: |
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tensor.copy_(torch.from_numpy(np.array(value))) |
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except: |
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print(name, list(tensor.shape)) |
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raise |
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def convert_tf_generator(tf_G): |
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if tf_G.version < 4: |
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raise ValueError('TensorFlow pickle version too low') |
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tf_kwargs = tf_G.static_kwargs |
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known_kwargs = set() |
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def kwarg(tf_name, default=None, none=None): |
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known_kwargs.add(tf_name) |
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val = tf_kwargs.get(tf_name, default) |
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return val if val is not None else none |
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from training import networks_stylegan2 |
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network_class = networks_stylegan2.Generator |
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kwargs = dnnlib.EasyDict( |
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z_dim = kwarg('latent_size', 512), |
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c_dim = kwarg('label_size', 0), |
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w_dim = kwarg('dlatent_size', 512), |
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img_resolution = kwarg('resolution', 1024), |
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img_channels = kwarg('num_channels', 3), |
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channel_base = kwarg('fmap_base', 16384) * 2, |
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channel_max = kwarg('fmap_max', 512), |
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num_fp16_res = kwarg('num_fp16_res', 0), |
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conv_clamp = kwarg('conv_clamp', None), |
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architecture = kwarg('architecture', 'skip'), |
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resample_filter = kwarg('resample_kernel', [1,3,3,1]), |
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use_noise = kwarg('use_noise', True), |
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activation = kwarg('nonlinearity', 'lrelu'), |
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mapping_kwargs = dnnlib.EasyDict( |
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num_layers = kwarg('mapping_layers', 8), |
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embed_features = kwarg('label_fmaps', None), |
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layer_features = kwarg('mapping_fmaps', None), |
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activation = kwarg('mapping_nonlinearity', 'lrelu'), |
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lr_multiplier = kwarg('mapping_lrmul', 0.01), |
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w_avg_beta = kwarg('w_avg_beta', 0.995, none=1), |
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), |
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) |
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kwarg('truncation_psi') |
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kwarg('truncation_cutoff') |
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kwarg('style_mixing_prob') |
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kwarg('structure') |
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kwarg('conditioning') |
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kwarg('fused_modconv') |
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unknown_kwargs = list(set(tf_kwargs.keys()) - known_kwargs) |
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if len(unknown_kwargs) > 0: |
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raise ValueError('Unknown TensorFlow kwarg', unknown_kwargs[0]) |
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tf_params = _collect_tf_params(tf_G) |
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for name, value in list(tf_params.items()): |
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match = re.fullmatch(r'ToRGB_lod(\d+)/(.*)', name) |
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if match: |
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r = kwargs.img_resolution // (2 ** int(match.group(1))) |
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tf_params[f'{r}x{r}/ToRGB/{match.group(2)}'] = value |
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kwargs.synthesis.kwargs.architecture = 'orig' |
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G = network_class(**kwargs).eval().requires_grad_(False) |
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_populate_module_params(G, |
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r'mapping\.w_avg', lambda: tf_params[f'dlatent_avg'], |
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r'mapping\.embed\.weight', lambda: tf_params[f'mapping/LabelEmbed/weight'].transpose(), |
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r'mapping\.embed\.bias', lambda: tf_params[f'mapping/LabelEmbed/bias'], |
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r'mapping\.fc(\d+)\.weight', lambda i: tf_params[f'mapping/Dense{i}/weight'].transpose(), |
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r'mapping\.fc(\d+)\.bias', lambda i: tf_params[f'mapping/Dense{i}/bias'], |
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r'synthesis\.b4\.const', lambda: tf_params[f'synthesis/4x4/Const/const'][0], |
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r'synthesis\.b4\.conv1\.weight', lambda: tf_params[f'synthesis/4x4/Conv/weight'].transpose(3, 2, 0, 1), |
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r'synthesis\.b4\.conv1\.bias', lambda: tf_params[f'synthesis/4x4/Conv/bias'], |
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r'synthesis\.b4\.conv1\.noise_const', lambda: tf_params[f'synthesis/noise0'][0, 0], |
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r'synthesis\.b4\.conv1\.noise_strength', lambda: tf_params[f'synthesis/4x4/Conv/noise_strength'], |
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r'synthesis\.b4\.conv1\.affine\.weight', lambda: tf_params[f'synthesis/4x4/Conv/mod_weight'].transpose(), |
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r'synthesis\.b4\.conv1\.affine\.bias', lambda: tf_params[f'synthesis/4x4/Conv/mod_bias'] + 1, |
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r'synthesis\.b(\d+)\.conv0\.weight', lambda r: tf_params[f'synthesis/{r}x{r}/Conv0_up/weight'][::-1, ::-1].transpose(3, 2, 0, 1), |
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r'synthesis\.b(\d+)\.conv0\.bias', lambda r: tf_params[f'synthesis/{r}x{r}/Conv0_up/bias'], |
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r'synthesis\.b(\d+)\.conv0\.noise_const', lambda r: tf_params[f'synthesis/noise{int(np.log2(int(r)))*2-5}'][0, 0], |
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r'synthesis\.b(\d+)\.conv0\.noise_strength', lambda r: tf_params[f'synthesis/{r}x{r}/Conv0_up/noise_strength'], |
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r'synthesis\.b(\d+)\.conv0\.affine\.weight', lambda r: tf_params[f'synthesis/{r}x{r}/Conv0_up/mod_weight'].transpose(), |
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r'synthesis\.b(\d+)\.conv0\.affine\.bias', lambda r: tf_params[f'synthesis/{r}x{r}/Conv0_up/mod_bias'] + 1, |
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r'synthesis\.b(\d+)\.conv1\.weight', lambda r: tf_params[f'synthesis/{r}x{r}/Conv1/weight'].transpose(3, 2, 0, 1), |
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r'synthesis\.b(\d+)\.conv1\.bias', lambda r: tf_params[f'synthesis/{r}x{r}/Conv1/bias'], |
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r'synthesis\.b(\d+)\.conv1\.noise_const', lambda r: tf_params[f'synthesis/noise{int(np.log2(int(r)))*2-4}'][0, 0], |
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r'synthesis\.b(\d+)\.conv1\.noise_strength', lambda r: tf_params[f'synthesis/{r}x{r}/Conv1/noise_strength'], |
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r'synthesis\.b(\d+)\.conv1\.affine\.weight', lambda r: tf_params[f'synthesis/{r}x{r}/Conv1/mod_weight'].transpose(), |
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r'synthesis\.b(\d+)\.conv1\.affine\.bias', lambda r: tf_params[f'synthesis/{r}x{r}/Conv1/mod_bias'] + 1, |
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r'synthesis\.b(\d+)\.torgb\.weight', lambda r: tf_params[f'synthesis/{r}x{r}/ToRGB/weight'].transpose(3, 2, 0, 1), |
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r'synthesis\.b(\d+)\.torgb\.bias', lambda r: tf_params[f'synthesis/{r}x{r}/ToRGB/bias'], |
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r'synthesis\.b(\d+)\.torgb\.affine\.weight', lambda r: tf_params[f'synthesis/{r}x{r}/ToRGB/mod_weight'].transpose(), |
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r'synthesis\.b(\d+)\.torgb\.affine\.bias', lambda r: tf_params[f'synthesis/{r}x{r}/ToRGB/mod_bias'] + 1, |
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r'synthesis\.b(\d+)\.skip\.weight', lambda r: tf_params[f'synthesis/{r}x{r}/Skip/weight'][::-1, ::-1].transpose(3, 2, 0, 1), |
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r'.*\.resample_filter', None, |
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r'.*\.act_filter', None, |
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) |
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return G |
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def convert_tf_discriminator(tf_D): |
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if tf_D.version < 4: |
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raise ValueError('TensorFlow pickle version too low') |
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tf_kwargs = tf_D.static_kwargs |
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known_kwargs = set() |
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def kwarg(tf_name, default=None): |
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known_kwargs.add(tf_name) |
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return tf_kwargs.get(tf_name, default) |
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kwargs = dnnlib.EasyDict( |
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c_dim = kwarg('label_size', 0), |
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img_resolution = kwarg('resolution', 1024), |
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img_channels = kwarg('num_channels', 3), |
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architecture = kwarg('architecture', 'resnet'), |
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channel_base = kwarg('fmap_base', 16384) * 2, |
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channel_max = kwarg('fmap_max', 512), |
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num_fp16_res = kwarg('num_fp16_res', 0), |
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conv_clamp = kwarg('conv_clamp', None), |
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cmap_dim = kwarg('mapping_fmaps', None), |
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block_kwargs = dnnlib.EasyDict( |
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activation = kwarg('nonlinearity', 'lrelu'), |
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resample_filter = kwarg('resample_kernel', [1,3,3,1]), |
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freeze_layers = kwarg('freeze_layers', 0), |
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), |
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mapping_kwargs = dnnlib.EasyDict( |
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num_layers = kwarg('mapping_layers', 0), |
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embed_features = kwarg('mapping_fmaps', None), |
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layer_features = kwarg('mapping_fmaps', None), |
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activation = kwarg('nonlinearity', 'lrelu'), |
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lr_multiplier = kwarg('mapping_lrmul', 0.1), |
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), |
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epilogue_kwargs = dnnlib.EasyDict( |
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mbstd_group_size = kwarg('mbstd_group_size', None), |
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mbstd_num_channels = kwarg('mbstd_num_features', 1), |
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activation = kwarg('nonlinearity', 'lrelu'), |
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), |
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) |
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kwarg('structure') |
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kwarg('conditioning') |
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unknown_kwargs = list(set(tf_kwargs.keys()) - known_kwargs) |
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if len(unknown_kwargs) > 0: |
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raise ValueError('Unknown TensorFlow kwarg', unknown_kwargs[0]) |
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tf_params = _collect_tf_params(tf_D) |
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for name, value in list(tf_params.items()): |
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match = re.fullmatch(r'FromRGB_lod(\d+)/(.*)', name) |
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if match: |
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r = kwargs.img_resolution // (2 ** int(match.group(1))) |
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tf_params[f'{r}x{r}/FromRGB/{match.group(2)}'] = value |
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kwargs.architecture = 'orig' |
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from training import networks_stylegan2 |
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D = networks_stylegan2.Discriminator(**kwargs).eval().requires_grad_(False) |
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_populate_module_params(D, |
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r'b(\d+)\.fromrgb\.weight', lambda r: tf_params[f'{r}x{r}/FromRGB/weight'].transpose(3, 2, 0, 1), |
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r'b(\d+)\.fromrgb\.bias', lambda r: tf_params[f'{r}x{r}/FromRGB/bias'], |
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r'b(\d+)\.conv(\d+)\.weight', lambda r, i: tf_params[f'{r}x{r}/Conv{i}{["","_down"][int(i)]}/weight'].transpose(3, 2, 0, 1), |
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r'b(\d+)\.conv(\d+)\.bias', lambda r, i: tf_params[f'{r}x{r}/Conv{i}{["","_down"][int(i)]}/bias'], |
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r'b(\d+)\.skip\.weight', lambda r: tf_params[f'{r}x{r}/Skip/weight'].transpose(3, 2, 0, 1), |
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r'mapping\.embed\.weight', lambda: tf_params[f'LabelEmbed/weight'].transpose(), |
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r'mapping\.embed\.bias', lambda: tf_params[f'LabelEmbed/bias'], |
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r'mapping\.fc(\d+)\.weight', lambda i: tf_params[f'Mapping{i}/weight'].transpose(), |
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r'mapping\.fc(\d+)\.bias', lambda i: tf_params[f'Mapping{i}/bias'], |
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r'b4\.conv\.weight', lambda: tf_params[f'4x4/Conv/weight'].transpose(3, 2, 0, 1), |
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r'b4\.conv\.bias', lambda: tf_params[f'4x4/Conv/bias'], |
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r'b4\.fc\.weight', lambda: tf_params[f'4x4/Dense0/weight'].transpose(), |
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r'b4\.fc\.bias', lambda: tf_params[f'4x4/Dense0/bias'], |
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r'b4\.out\.weight', lambda: tf_params[f'Output/weight'].transpose(), |
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r'b4\.out\.bias', lambda: tf_params[f'Output/bias'], |
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r'.*\.resample_filter', None, |
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) |
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return D |
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@click.command() |
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@click.option('--source', help='Input pickle', required=True, metavar='PATH') |
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@click.option('--dest', help='Output pickle', required=True, metavar='PATH') |
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@click.option('--force-fp16', help='Force the networks to use FP16', type=bool, default=False, metavar='BOOL', show_default=True) |
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def convert_network_pickle(source, dest, force_fp16): |
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"""Convert legacy network pickle into the native PyTorch format. |
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The tool is able to load the main network configurations exported using the TensorFlow version of StyleGAN2 or StyleGAN2-ADA. |
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It does not support e.g. StyleGAN2-ADA comparison methods, StyleGAN2 configs A-D, or StyleGAN1 networks. |
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Example: |
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\b |
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python legacy.py \\ |
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--source=https://nvlabs-fi-cdn.nvidia.com/stylegan2/networks/stylegan2-cat-config-f.pkl \\ |
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--dest=stylegan2-cat-config-f.pkl |
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""" |
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print(f'Loading "{source}"...') |
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with dnnlib.util.open_url(source) as f: |
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data = load_network_pkl(f, force_fp16=force_fp16) |
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print(f'Saving "{dest}"...') |
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with open(dest, 'wb') as f: |
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pickle.dump(data, f) |
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print('Done.') |
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if __name__ == "__main__": |
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convert_network_pickle() |
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