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|
| | from itertools import product |
| |
|
| | import numpy as np |
| | import cv2 as cv |
| |
|
| | class YuNet: |
| | def __init__(self, modelPath, inputSize=[320, 320], confThreshold=0.6, nmsThreshold=0.3, topK=5000, backendId=0, targetId=0): |
| | self._modelPath = modelPath |
| | self._inputSize = tuple(inputSize) |
| | self._confThreshold = confThreshold |
| | self._nmsThreshold = nmsThreshold |
| | self._topK = topK |
| | self._backendId = backendId |
| | self._targetId = targetId |
| |
|
| | self._model = cv.FaceDetectorYN.create( |
| | model=self._modelPath, |
| | config="", |
| | input_size=self._inputSize, |
| | score_threshold=self._confThreshold, |
| | nms_threshold=self._nmsThreshold, |
| | top_k=self._topK, |
| | backend_id=self._backendId, |
| | target_id=self._targetId) |
| |
|
| | @property |
| | def name(self): |
| | return self.__class__.__name__ |
| |
|
| | def setBackendAndTarget(self, backendId, targetId): |
| | self._backendId = backendId |
| | self._targetId = targetId |
| | self._model = cv.FaceDetectorYN.create( |
| | model=self._modelPath, |
| | config="", |
| | input_size=self._inputSize, |
| | score_threshold=self._confThreshold, |
| | nms_threshold=self._nmsThreshold, |
| | top_k=self._topK, |
| | backend_id=self._backendId, |
| | target_id=self._targetId) |
| |
|
| | def setInputSize(self, input_size): |
| | self._model.setInputSize(tuple(input_size)) |
| |
|
| | def infer(self, image): |
| | |
| | faces = self._model.detect(image) |
| | return np.empty(shape=(0, 5)) if faces[1] is None else faces[1] |
| |
|