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# !pip install transformers==4.37.2 gradio==4.25.0 | |
import gradio as gr | |
from transformers import pipeline | |
import numpy as np | |
from PIL import Image | |
age_classifier = pipeline("image-classification", model="nateraw/vit-age-classifier") | |
emotion_classifier = pipeline("image-classification", model="jhoppanne/Emotion-Image-Classification-V2") | |
def pred_age_emotion(input_image): | |
if isinstance(input_image,np.ndarray): | |
img = Image.fromarray(input_image) | |
#age classifier | |
age_result = age_classifier(img) | |
age_score = age_result[0].get('score') | |
age_label = age_result[0].get('label') | |
txt1 ='' | |
txt1 += f'The Model predict that the person in this image is around {age_label} years old.\n' | |
txt1 += f'with confident score : {age_score*100:.2f}%' | |
#emotion classifier | |
emotion_result = emotion_classifier(img) | |
emotion_score = emotion_result[0].get('score') | |
emotion_label = emotion_result[1].get('label') | |
txt2='' | |
txt2+= f'The Model predict that the emotion of person in this image is {emotion_label}.\n' | |
txt2+= f'with confident score : {emotion_score*100:.2f}% ' | |
else: | |
txt1,txt2 = "sorry, unable to process the image" | |
return txt1, txt2 | |
# return f"Data type of uploaded image: {type(img)}" | |
def pred_emotion(input_image): | |
return | |
iface = gr.Interface(fn=pred_age_emotion, inputs = gr.Image(), outputs = ["text", "text"]) | |
iface.launch(share=True) |