Mask
- class plugins.convert.mask.mask_blend.Mask(mask_type: str, output_size: int, coverage_ratio: float, config_file: str | None = None)
Bases:
objectManipulations to perform to the mask that is to be applied to the output of the Faceswap model.
- Parameters:
mask_type (str) – The mask type to use for this plugin
output_size (int) – The size of the output from the Faceswap model.
coverage_ratio (float) – The coverage ratio that the Faceswap model was trained at.
config_file (str, Optional) – Optional location of custom configuration
inifile. IfNonethen use the default config location. Default:None
Methods Summary
run(detected_face, source_offset, ...[, ...])Obtain the requested mask type and perform any defined mask manipulations.
Methods Documentation
- run(detected_face: DetectedFace, source_offset: ndarray, target_offset: ndarray, centering: Literal['legacy', 'face', 'head'], landmarks_mask: LandmarksMask | None = None, predicted_mask: ndarray | None = None) tuple[ndarray, ndarray]
Obtain the requested mask type and perform any defined mask manipulations.
- Parameters:
detected_face (
lib.align.detected_face.DetectedFace) – The DetectedFace object as returned fromscripts.convert.Predictor.source_offset (
numpy.ndarray) – The (x, y) offset for the mask at its stored centeringtarget_offset (
numpy.ndarray) – The (x, y) offset for the mask at the requested target centeringcentering ([“legacy”, “face”, “head”]) – The centering to obtain the mask for
landmarks_mask (
lib.align.aligned_mask.LandmarksMask| None, optional) – The landmarks mask object, if requested orNone. Default:Nonepredicted_mask (
numpy.ndarray| None, optional) – The predicted mask as output from the Faceswap Model, if the model was trained with a mask, otherwiseNone. Default:None.
- Returns:
mask (
numpy.ndarray) – The mask with all requested manipulations appliedraw_mask (
numpy.ndarray) – The mask with no erosion/dilation applied
- Return type:
tuple[ndarray, ndarray]
- run(detected_face: DetectedFace, source_offset: ndarray, target_offset: ndarray, centering: Literal['legacy', 'face', 'head'], landmarks_mask: LandmarksMask | None = None, predicted_mask: ndarray | None = None) tuple[ndarray, ndarray]
Obtain the requested mask type and perform any defined mask manipulations.
- Parameters:
detected_face (
lib.align.detected_face.DetectedFace) – The DetectedFace object as returned fromscripts.convert.Predictor.source_offset (
numpy.ndarray) – The (x, y) offset for the mask at its stored centeringtarget_offset (
numpy.ndarray) – The (x, y) offset for the mask at the requested target centeringcentering ([“legacy”, “face”, “head”]) – The centering to obtain the mask for
landmarks_mask (
lib.align.aligned_mask.LandmarksMask| None, optional) – The landmarks mask object, if requested orNone. Default:Nonepredicted_mask (
numpy.ndarray| None, optional) – The predicted mask as output from the Faceswap Model, if the model was trained with a mask, otherwiseNone. Default:None.
- Returns:
mask (
numpy.ndarray) – The mask with all requested manipulations appliedraw_mask (
numpy.ndarray) – The mask with no erosion/dilation applied
- Return type:
tuple[ndarray, ndarray]