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import gradio as gr |
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import pickle as pkl |
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from tensorflow.keras.applications.vgg16 import VGG16, preprocess_input |
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from tensorflow.keras.models import Model |
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import tensorflow as tf |
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from tensorflow.keras.preprocessing.text import Tokenizer |
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from tensorflow.keras.preprocessing.sequence import pad_sequences |
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vgg_model = VGG16() |
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vgg_model.trainable = False |
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img_model = Model(inputs=vgg_model.input, |
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outputs=vgg_model.layers[-2].output) |
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model = tf.keras.models.load_model('caption_genaration_model.h5') |
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with open('tokenizer.pkl','rb') as f: |
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tokenizer = pkl.load(f) |
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def index_to_word(word_idx): |
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return tokenizer.index_word[word_idx] |
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resize_img = tf.keras.layers.Resizing(height=224, width=224) |
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def img_preprocces(img): |
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img = tf.expand_dims(img,axis=0) |
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resized_image = resize_img(img) |
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img = preprocess_input(resized_image) |
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feature = vgg_model.predict(img,verbose=False) |
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return feature |
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def genarate_caption(img): |
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seq_in = 'startseq' |
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feature_img = img_preprocces(img) |
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for _ in range(30): |
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seq_in_sequence = tokenizer.texts_to_sequences([seq_in])[0] |
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seq_in_padded = pad_sequences([seq_in_sequence], padding='post',maxlen=30) |
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y_hat = model.predict([feature_img,seq_in_padded],verbose=False) |
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word_index = y_hat.argmax(axis=1) |
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predicted_word = index_to_word(word_index[0]) |
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if predicted_word == 'endseq': |
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break |
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seq_in = seq_in + ' ' + predicted_word |
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return seq_in[9:] |
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app = gr.Interface( |
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fn=genarate_caption, |
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inputs=['image'], |
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outputs=['text'] |
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) |
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app.launch() |