ModelBase
- class plugins.train.model._base.model.ModelBase(model_dir: str, arguments: argparse.Namespace, predict: bool = False)
Bases:
objectBase class that all model plugins should inherit from.
- Parameters:
model_dir (str) – The full path to the model save location
arguments (argparse.Namespace) – The arguments that were passed to the train or convert process as generated from Faceswap’s command line arguments
predict (bool) –
Trueif the model is being loaded for inference,Falseif the model is being loaded for training. Default:False
Attributes Summary
The ratio of the training image to crop out and train on as defined in user configuration options.
Override to set plugin specific layers that can be frozen.
A flattened list corresponding to all of the inputs to the model.
Input/Output operations for the model
The total number of iterations that the model has trained.
Override to set plugin specific layers that can be loaded.
The compiled model for this plugin.
The name of the keras model.
The name of this model based on the plugin name.
A flattened list corresponding to all of the outputs of the model.
The state settings for the current plugin.
Methods Summary
add_history(loss)Add the current iteration's loss history to
_io.history.build()Build the model and assign to
model.build_model(inputs)Override for Model Specific autoencoder builds.
Attributes Documentation
- coverage_ratio
The ratio of the training image to crop out and train on as defined in user configuration options.
NB: The coverage ratio is a raw float, but will be applied to integer pixel images.
To ensure consistent rounding and guaranteed even image size, the calculation for coverage should always be: \((original_size * coverage_ratio // 2) * 2\)
- freeze_layers
Override to set plugin specific layers that can be frozen. Defaults to [“encoder”]
- input_shapes
A flattened list corresponding to all of the inputs to the model.
- io
Input/Output operations for the model
- iterations
The total number of iterations that the model has trained.
- load_layers
Override to set plugin specific layers that can be loaded. Defaults to [“encoder”]
- model
The compiled model for this plugin.
- model_name
The name of the keras model. Generally this will be the same as
namebut some plugins will override this when they contain multiple architectures
- name
The name of this model based on the plugin name.
- output_shapes
A flattened list corresponding to all of the outputs of the model.
- state
The state settings for the current plugin.
Methods Documentation
- add_history(loss: np.ndarray) None
Add the current iteration’s loss history to
_io.history.Called from the trainer after each iteration, for tracking loss drop over time between save iterations.
- Parameters:
loss (np.ndarray) – The loss values for the A and B side for the current iteration. This should be the collated loss values for each side.
- Return type:
None
- build() None
Build the model and assign to
model.Within the defined strategy scope, either builds the model from scratch or loads an existing model if one exists.
If running inference, then the model is built only for the required side to perform the swap function, otherwise the model is then compiled with the optimizer and chosen loss function(s).
Finally, a model summary is outputted to the logger at verbose level.
- Return type:
None
- build_model(inputs: list[Input]) Model
Override for Model Specific autoencoder builds.
- Parameters:
inputs (list[Input]) – A list of
keras.layers.Inputtensors. This will be a list of 2 tensors (one for each side) each of shapesinput_shape.- Returns:
See Keras documentation for the correct structure, but note that parameter
nameis a required rather than an optional argument in Faceswap. You should assign this to
the attribute
self.namethat is automatically generated from the plugin’s filename.
- Return type:
Model
- add_history(loss: np.ndarray) None
Add the current iteration’s loss history to
_io.history.Called from the trainer after each iteration, for tracking loss drop over time between save iterations.
- Parameters:
loss (np.ndarray) – The loss values for the A and B side for the current iteration. This should be the collated loss values for each side.
- Return type:
None
- build() None
Build the model and assign to
model.Within the defined strategy scope, either builds the model from scratch or loads an existing model if one exists.
If running inference, then the model is built only for the required side to perform the swap function, otherwise the model is then compiled with the optimizer and chosen loss function(s).
Finally, a model summary is outputted to the logger at verbose level.
- Return type:
None
- build_model(inputs: list[Input]) Model
Override for Model Specific autoencoder builds.
- Parameters:
inputs (list[Input]) – A list of
keras.layers.Inputtensors. This will be a list of 2 tensors (one for each side) each of shapesinput_shape.- Returns:
See Keras documentation for the correct structure, but note that parameter
nameis a required rather than an optional argument in Faceswap. You should assign this to
the attribute
self.namethat is automatically generated from the plugin’s filename.
- Return type:
Model
- property coverage_ratio: float
The ratio of the training image to crop out and train on as defined in user configuration options.
NB: The coverage ratio is a raw float, but will be applied to integer pixel images.
To ensure consistent rounding and guaranteed even image size, the calculation for coverage should always be: \((original_size * coverage_ratio // 2) * 2\)
- property freeze_layers: list[str]
Override to set plugin specific layers that can be frozen. Defaults to [“encoder”]
- input_shape: tuple[int, ...]
A tuple of ints defining the shape of the faces that the model takes as input. This should be overridden by model plugins in their
__init__()function. If the input size is the same for both sides of the model, then this can be a single 3 dimensional tuple. If the inputs have different sizes for “A” and “B” this should be a list of 2 3 dimensional shape tuples, 1 for each side respectively.
- property input_shapes: list[tuple[None, int, int, int]]
A flattened list corresponding to all of the inputs to the model.
- property iterations: int
The total number of iterations that the model has trained.
- property load_layers: list[str]
Override to set plugin specific layers that can be loaded. Defaults to [“encoder”]
- property model: Model
The compiled model for this plugin.
- property model_name: str
The name of the keras model. Generally this will be the same as
namebut some plugins will override this when they contain multiple architectures
- property name: str
The name of this model based on the plugin name.
- property output_shapes: list[tuple[None, int, int, int]]
A flattened list corresponding to all of the outputs of the model.