我對媒體管道協調有疑問。我想要做的是裁剪檢測到的人臉框。
https://google.github.io/mediapipe/solutions/face_detection.html
程式示例
我在下面使用這段代碼:
mp_face_detection = mp.solutions.face_detection
# Setup the face detection function.
face_detection = mp_face_detection.FaceDetection(model_selection=0, min_detection_confidence=0.5)
# Initialize the mediapipe drawing class.
mp_drawing = mp.solutions.drawing_utils
# Read an image from the specified path.
sample_img = cv2.imread('12345.jpg')
# Specify a size of the figure.
plt.figure(figsize = [10, 10])
# Display the sample image, also convert BGR to RGB for display.
plt.title("Sample Image");plt.axis('off');plt.imshow(sample_img[:,:,::-1]);plt.show()
face_detection_results = face_detection.process(sample_img[:,:,::-1])
# Check if the face(s) in the image are found.
if face_detection_results.detections:
# Iterate over the found faces.
for face_no, face in enumerate(face_detection_results.detections):
# Display the face number upon which we are iterating upon.
print(f'FACE NUMBER: {face_no 1}')
print('---------------------------------')
# Display the face confidence.
print(f'FACE CONFIDENCE: {round(face.score[0], 2)}')
# Get the face bounding box and face key points coordinates.
face_data = face.location_data
# Display the face bounding box coordinates.
print(f'\nFACE BOUNDING BOX:\n{face_data.relative_bounding_box}')
# Iterate two times as we only want to display first two key points of each detected face.
for i in range(2):
# Display the found normalized key points.
print(f'{mp_face_detection.FaceKeyPoint(i).name}:')
print(f'{face_data.relative_keypoints[mp_face_detection.FaceKeyPoint(i).value]}')
所以結果是這種形式:
FACE NUMBER: 1
FACE CONFIDENCE: 0.89
FACE BOUNDING BOX:
xmin: 0.2784463167190552
ymin: 0.3503175973892212
width: 0.1538110375404358
height: 0.23071599006652832
RIGHT_EYE:
x: 0.3447018265724182
y: 0.4222590923309326
LEFT_EYE:
x: 0.39114508032798767
y: 0.3888365626335144
我想在 BOX 的坐標中裁剪影像。喜歡
face = Image.fromarray(image).crop(face_rect)
或任何其他作物程式。我的問題是我無法從 mediapipe 獲取檢測到的專案的坐標。
有任何想法嗎?
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import dlib
from PIL import Image
from skimage import io
h, w, c = sample_img.shape
print('width: ', w)
print('height: ', h)
xleft = data.xmin*w
xleft = int(xleft)
xtop = data.ymin*h
xtop = int(xtop)
xright = data.width*w xleft
xright = int(xright)
xbottom = data.height*h xtop
xbottom = int(xbottom)
detected_faces = [(xleft, xtop, xright, xbottom)]
for n, face_rect in enumerate(detected_faces):
face = Image.fromarray(image_c).crop(face_rect)
face_np = np.asarray(face)
plt.imshow(face_np)
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