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Update app.py
Browse files
app.py
CHANGED
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@@ -124,17 +124,13 @@ def classify_zip_and_analyze_color(zip_file):
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face_info = ""
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try:
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img_cv2 = cv2.cvtColor(np.array(image), cv2.COLOR_RGB2BGR)
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faces = DeepFace.analyze(
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actions=["age", "gender", "emotion"],
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enforce_detection=False
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)
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if isinstance(faces, list):
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for f in faces:
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face_info += f"Age: {f['age']}, Gender: {f['gender']}, Gender Confidence: {f['gender_confidence']*100:.2f}, Emotion: {f['dominant_emotion']}; "
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else:
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face_info = f"Age: {faces['age']}, Gender: {faces['gender']}, Gender Confidence: {faces['gender_confidence']*100:.2f}, Emotion: {faces['dominant_emotion']}"
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except Exception:
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face_info = "No face detected"
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results.append((
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@@ -185,7 +181,7 @@ def classify_zip_and_analyze_color(zip_file):
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plot2_img = Image.open(buf2)
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# ---------------------------
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# Extract age and
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# ---------------------------
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ages = []
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gender_confidence = {"Man": 0, "Woman": 0}
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@@ -199,30 +195,30 @@ def classify_zip_and_analyze_color(zip_file):
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age_part = face_str.split(",")[0]
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age = int(age_part.replace("Age:", "").strip())
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ages.append(age)
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# Gender
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gender_part = face_str.split(",")[1]
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gender = gender_part.replace("Gender:", "").strip()
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# Extract confidence
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conf = 1.0
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for part in face_str.split(","):
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if "Gender Confidence:" in part:
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conf = float(part.split("Gender Confidence:")[1].strip()) / 100
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# Only include if confidence ≤ 0.
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if conf <= 0.
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if gender in gender_confidence:
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gender_confidence[gender] += conf
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else:
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gender_confidence[gender] = conf
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# ---------------------------
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# Plot 3: Gender distribution (
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# ---------------------------
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fig3, ax3 = plt.subplots()
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ax3.bar(gender_confidence.keys(), gender_confidence.values(), color=["lightblue", "pink"])
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ax3.set_title("Gender Distribution (
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ax3.set_ylabel("Sum of Confidence")
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buf3 = io.BytesIO()
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plt.savefig(buf3, format="png")
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@@ -257,7 +253,7 @@ demo = gr.Interface(
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gr.File(label="Download XLSX"),
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gr.Image(type="pil", label="Basic Color Frequency"),
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gr.Image(type="pil", label="Top Prediction Distribution"),
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gr.Image(type="pil", label="Gender Distribution (
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gr.Image(type="pil", label="Age Distribution"),
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],
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title="Image Classifier with Color & Face Analysis",
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@@ -266,3 +262,4 @@ demo = gr.Interface(
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if __name__ == "__main__":
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demo.launch(server_name="0.0.0.0", server_port=7860)
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face_info = ""
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try:
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img_cv2 = cv2.cvtColor(np.array(image), cv2.COLOR_RGB2BGR)
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faces = DeepFace.analyze(img_cv2, actions=["age", "gender", "emotion"], enforce_detection=False)
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if isinstance(faces, list): # multiple faces
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for f in faces:
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face_info += f"Age: {f['age']}, Gender: {f['gender']}, Gender Confidence: {f['gender_confidence']*100:.2f}, Emotion: {f['dominant_emotion']}; "
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else: # single face
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face_info = f"Age: {faces['age']}, Gender: {faces['gender']}, Gender Confidence: {faces['gender_confidence']*100:.2f}, Emotion: {faces['dominant_emotion']}"
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except Exception as e:
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face_info = "No face detected"
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results.append((
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plot2_img = Image.open(buf2)
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# ---------------------------
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# Extract age and gender (confidence ≤ 80%)
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# ---------------------------
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ages = []
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gender_confidence = {"Man": 0, "Woman": 0}
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age_part = face_str.split(",")[0]
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age = int(age_part.replace("Age:", "").strip())
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ages.append(age)
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# Gender and confidence
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gender_part = face_str.split(",")[1]
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gender = gender_part.replace("Gender:", "").strip()
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# Extract confidence
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conf = 1.0
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for part in face_str.split(","):
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if "Gender Confidence:" in part:
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conf = float(part.split("Gender Confidence:")[1].strip()) / 100 # convert % to 0-1
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# Only include if confidence ≤ 0.8
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if conf <= 0.8:
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if gender in gender_confidence:
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gender_confidence[gender] += conf
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else:
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gender_confidence[gender] = conf
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# ---------------------------
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# Plot 3: Gender distribution (confidence ≤ 80%)
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# ---------------------------
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fig3, ax3 = plt.subplots()
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ax3.bar(gender_confidence.keys(), gender_confidence.values(), color=["lightblue", "pink"])
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ax3.set_title("Gender Distribution (Confidence ≤ 80%)")
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ax3.set_ylabel("Sum of Confidence")
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buf3 = io.BytesIO()
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plt.savefig(buf3, format="png")
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gr.File(label="Download XLSX"),
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gr.Image(type="pil", label="Basic Color Frequency"),
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gr.Image(type="pil", label="Top Prediction Distribution"),
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gr.Image(type="pil", label="Gender Distribution (≤80% Confidence)"),
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gr.Image(type="pil", label="Age Distribution"),
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],
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title="Image Classifier with Color & Face Analysis",
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if __name__ == "__main__":
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demo.launch(server_name="0.0.0.0", server_port=7860)
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