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Simplification du code
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59
code/Interface_Lounes/determinationGenre.py
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59
code/Interface_Lounes/determinationGenre.py
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@@ -0,0 +1,59 @@
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import cv2
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import mediapipe as mp
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mp_drawing = mp.solutions.drawing_utils
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mp_face_mesh = mp.solutions.face_mesh
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drawing_spec = mp_drawing.DrawingSpec(thickness=1, circle_radius=1)
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cap = cv2.VideoCapture(0)
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with mp_face_mesh.FaceMesh(
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max_num_faces=1,
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refine_landmarks=True,
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min_detection_confidence=0.5,
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min_tracking_confidence=0.5) as face_mesh:
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while cap.isOpened():
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success, image = cap.read()
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if not success:
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print("Ignoring empty camera frame.")
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continue
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# Initialize the face mesh model
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face_mesh = mp_face_mesh.FaceMesh(static_image_mode=False, max_num_faces=1, min_detection_confidence=0.5)
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# Load the input image
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# lecture de la vidéo
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ret, frame = cap.read()
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# conversion de l'image en RGB
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image = cv2.cvtColor(frame, cv2.COLOR_BGR2RGB)
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# Process the image and extract the landmarks
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results = face_mesh.process(image)
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if results.multi_face_landmarks:
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landmarks = results.multi_face_landmarks[0]
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# Define the landmark indices for the corners of the eyes and the tip of the nose
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left_eye = [33, 133, 246, 161, 160, 159, 158, 157, 173, 133]
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right_eye = [362, 263, 373, 380, 381, 382, 384, 385, 386, 362]
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nose_tip = 4
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# Calculate the distance between the eyes and the nose tip
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left_eye_x = landmarks.landmark[left_eye[0]].x * image.shape[1]
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right_eye_x = landmarks.landmark[right_eye[0]].x * image.shape[1]
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nose_x = landmarks.landmark[nose_tip].x * image.shape[1]
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eye_distance = abs(left_eye_x - right_eye_x)
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nose_distance = abs(nose_x - (left_eye_x + right_eye_x) / 2)
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# Determine the gender based on the eye and nose distances
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if eye_distance > 1.5 * nose_distance:
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gender = "Female"
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else:
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gender = "Male"
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# Draw the landmarks on the image
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cv2.putText(image, gender, (10, 50),cv2.FONT_HERSHEY_SIMPLEX, 1, (0, 255, 0), 2)
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# affichage de la vidéo
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cv2.imshow('Video', cv2.cvtColor(image, cv2.COLOR_RGB2BGR))
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if cv2.waitKey(10) & 0xFF == ord('q'):
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break
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# libération de la caméra et des ressources
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cap.release()
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cv2.destroyAllWindows()
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@@ -13,16 +13,16 @@ def reconnaissancePouce(handLandmarks):
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i=0
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j=0
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for cpt in range (0,4):
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V1=[handLandmarks[(4*cpt)+6][0]-handLandmarks[(4*cpt)+5][0],handLandmarks[(4*cpt)+6][1]-handLandmarks[(4*cpt)+5][1]]
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V2=[handLandmarks[(4*cpt)+8][0]-handLandmarks[(4*cpt)+6][0],handLandmarks[(4*cpt)+8][1]-handLandmarks[(4*cpt)+6][1]]
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V1=[handLandmarks[(4*cpt)+6].x-handLandmarks[(4*cpt)+5].x,handLandmarks[(4*cpt)+6].y-handLandmarks[(4*cpt)+5].y]
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V2=[handLandmarks[(4*cpt)+8].x-handLandmarks[(4*cpt)+6].x,handLandmarks[(4*cpt)+8].y-handLandmarks[(4*cpt)+6].y]
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j=np.dot(V1,V2)
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if (j>0):
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return etatDuPouce[0]
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V1=[handLandmarks[4][0]-handLandmarks[1][0],handLandmarks[4][1]-handLandmarks[1][1]]
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V2=[handLandmarks[2][0]-handLandmarks[1][0],handLandmarks[2][1]-handLandmarks[1][1]]
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if((np.dot(V1,V2))>0 and (handLandmarks[4][1]>handLandmarks[2][1])):
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V1=[handLandmarks[4].x-handLandmarks[1].x,handLandmarks[4].y-handLandmarks[1].y]
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V2=[handLandmarks[2].x-handLandmarks[1].x,handLandmarks[2].y-handLandmarks[1].y]
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if((np.dot(V1,V2))>0 and (handLandmarks[4].y>handLandmarks[2].y)):
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i=1
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elif(np.dot(V1,V2)>0 and handLandmarks[4][1]<handLandmarks[2][1]):
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elif(np.dot(V1,V2)>0 and handLandmarks[4].y<handLandmarks[2].y):
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i=2
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return etatDuPouce[i]
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