CV2DNNAlign
- class plugins.extract.align.cv2_dnn.CV2DNNAlign
Bases:
ExtractPluginCV2 DNN Plugin for face alignment
Attributes Summary
The selected device to run torch ops on
Methods Summary
from_torch(batch)Run inference on a PyTorch model.
Load the CV2 DNN Aligner Model
load_torch_model(model, weights_path[, ...])Load a PyTorch model, apply the weights and pass a warmup batch through
post_process(batch)Override to perform post-processing
pre_process(batch)Format the ROI faces detection boxes for prediction
process(batch)Predict the 68 point landmarks
Attributes Documentation
- device
The selected device to run torch ops on
Methods Documentation
- from_torch(batch: ndarray) ndarray
Run inference on a PyTorch model.
This function does not need to be used, however it handles torch backend for better throughput, so it is recommended. Must have used self.load_torch_model to load the Torch model to use this function.
- Parameters:
batch (ndarray) – The batch array to feed to the PyTorch model
- Return type:
The result from the PyTorch model
- load_model() Net
Load the CV2 DNN Aligner Model
- Return type:
The loaded cv2-DNN model
- load_torch_model(model: Module, weights_path: str, return_indices: list[int] | None = None) Module
Load a PyTorch model, apply the weights and pass a warmup batch through
This function does not need to be used, but some default Faceswap optimizations are performed here, so without using this function you will either need to apply them yourself or not have them applied
- Parameters:
model (Module) – The Torch model to load
weights_path (str) – Full path to the weights file to load
return_indices (list[int] | None) – If the model outputs multiple items, but you only require some of them, the indices of the required items can be placed here so that when calling from_torch any extra data is not copied from the GPU. Default:
None(return all data)
- Return type:
The loaded model ready for inference
- post_process(batch: ndarray) ndarray[tuple[Any, ...], dtype[float32]]
Override to perform post-processing
- Parameters:
batch (ndarray) – This will be the output from the previous ‘process’ step
- Returns:
For detect plugins this must be an (N, M, left, top, right, bottom) bounding boxes for
detected faces scaled to model input size as float32. N is the batch size, M is the number
of detections per batch
For align plugins this must be an (N, 68, 2) float32 array for each (x, y) landmark point
for each face in the batch. co-ordinates should be normalized to 0.0 to 1.0 range
For mask plugins this must be an (N, size, size) float32 image in range 0. - 1.0 for each
face in the batch
For identity plugins this must be an (N, M) float32 identity embedding
- Return type:
ndarray[tuple[Any, …], dtype[float32]]
- pre_process(batch: ndarray) ndarray
Format the ROI faces detection boxes for prediction
- Parameters:
batch (ndarray) – The batch of face detection bounding boxes as (bs, l, t, r, b)
- Return type:
The face detection bounding boxes formatted to take an image patch for prediction
- process(batch: ndarray) ndarray
Predict the 68 point landmarks
- Parameters:
feed – The batch to feed into the aligner
batch (ndarray)
- Return type:
The predictions from the aligner
- load_model() Net
Load the CV2 DNN Aligner Model
- Return type:
The loaded cv2-DNN model
- pre_process(batch: ndarray) ndarray
Format the ROI faces detection boxes for prediction
- Parameters:
batch (ndarray) – The batch of face detection bounding boxes as (bs, l, t, r, b)
- Return type:
The face detection bounding boxes formatted to take an image patch for prediction
- process(batch: ndarray) ndarray
Predict the 68 point landmarks
- Parameters:
feed – The batch to feed into the aligner
batch (ndarray)
- Return type:
The predictions from the aligner