MTCNNModel
- class plugins.extract.detect.mtcnn.MTCNNModel(weights_path: list[str], device: device, input_size: int = 640, min_size: int = 20, threshold: list[float] | None = None, factor: float = 0.709)
Bases:
objectMTCNN Detector for face alignment
- Parameters:
weights_path (list[str]) – List of paths to the 3 MTCNN subnet weights
device (torch.device) – The device to run inference on
input_size (int) – The height, width input size to the model. Default: 640
min_size (int) – The minimum size of a face to accept as a detection. Default: 20
threshold (list[float] | None) – List of floats for the three steps, Default: [0.6, 0.7, 0.7]
factor (float) – The factor used to create a scaling pyramid of face sizes to detect in the image. Default: 0.709
Methods Summary
detect_faces(batch)Detects faces in an image, and returns bounding boxes and points for them.
Methods Documentation
- detect_faces(batch: ndarray) tuple[ndarray, tuple[ndarray]]
Detects faces in an image, and returns bounding boxes and points for them.
- Parameters:
batch (ndarray) – The input batch of images to detect face in
- Return type:
List of numpy arrays containing the bounding box and 5 point landmarks of detected faces
- detect_faces(batch: ndarray) tuple[ndarray, tuple[ndarray]]
Detects faces in an image, and returns bounding boxes and points for them.
- Parameters:
batch (ndarray) – The input batch of images to detect face in
- Return type:
List of numpy arrays containing the bounding box and 5 point landmarks of detected faces