find_my_pic / main.py
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import zipfile
import random
import pandas as pd
import numpy as np
import streamlit as st
import clip
import torch
import torchvision.transforms as transforms
from get_similiarty import get_similiarity
device = "cuda" if torch.cuda.is_available() else "cpu"
#load model -resnet50
model_resnet = torch.load("model.pt", device)
#load model - ViT-B/32
model_vit = torch.load("model_vit.pt", device)
#Распаковка ZIP-файла с фотографиями
zip_file_path = "sample.zip"
target_folder = "sample/"
with zipfile.ZipFile(zip_file_path, 'r') as zip_ref:
zip_ref.extractall(target_folder)
st.title('Find my pic!')
def find_image_disc(prompt, df):
img_descs = []
img_descs_vit = []
list_images_names, list_images_names_vit = get_similiarity(prompt, model_resnet, model_vit, 3)
for img in list_images_names:
img_descs.append(random.choice(df[df['image_name'] == img.split('/')[-1]]['comment'].values).replace('.', ''))
#vit
for img in list_images_names_vit:
img_descs_vit.append(random.choice(df[df['image_name'] == img.split('/')[-1]]['comment'].values).replace('.', ''))
return list_images_names, img_descs, list_images_names_vit, img_descs_vit
txt = st.text_area("Describe the picture you'd like to see")
df = pd.read_csv('results.csv',
sep = '|',
names = ['image_name', 'comment_number', 'comment'],
header=0)
if txt is not None:
if st.button('Find!'):
list_images, img_desc, list_images_vit, img_descs_vit = find_image_disc(txt, df)
col1, col2 = st.columns(2)
for ind, pic in enumerate(zip(list_images, list_images_vit)):
with col1:
st.image(pic[0])
st.write(img_desc[ind])
with col2:
st.image(pic[1])
st.write(img_desc[ind])