There are 7 repositories under image-caption-generator topic.
CLIPxGPT Captioner is Image Captioning Model based on OpenAI's CLIP and GPT-2.
📷 Deployed image captioning ML model using Flask and access via Flutter app
Automate Fashion Image Captioning using BLIP-2. Automatic generating descriptions of clothes on shopping websites, which can help customers without fashion knowledge to better understand the features (attributes, style, functionality etc.) of the items and increase online sales by enticing more customers.
pre-trained model and source code for generate description of images.
Image Caption Generator implemented using Tensorflow and Keras in a Python Jupyter Notebook. The goal is to describe the content of an image by using a CNN and RNN.
An Image captioning web application combines the power of React.js for front-end, Flask and Node.js for back-end, utilizing the MERN stack. Users can upload images and instantly receive automatic captions. Authenticated users have access to extra features like translating captions and text-to-speech functionality.
Image captioning using beam search heuristic on top of the encoder-decoder based architecture
Image captioning model with Resnet50 encoder and LSTM decoder
Inspired from the paper "Show Attend and Tell". This project's aim was to train a neural network which can provide descriptive text for a given image.
Automatically generates captions for an image using Image processing and NLP. Model was trained on Flickr30K dataset.
Deep learning-based image captioning with Flickr8k dataset. Code includes data prep, model training, and a Streamlit app.
Fabricating a Python application that generates a caption for a selected image. Involves the use of Deep Learning and NLP Frameworks in Tensorflow, Keras and NLTK modules for data processing and creation of deep learning models and their evaluation.
This is a Deep Learning model which uses Computer Vision and NLP to generate captions for images.
Successfully developed an image caption generation model which can precisely generate the text caption of any particular image based on a certain vocabulary of distinct words.
This module generate proper caption for given image in bengali.
Blip 2 Captioning, Mass Captioning, Question Answering, and other tools.
Simple image caption generator built upon Xception net using CNN and LSTM.
🚀 Image Caption Generator Project 🚀 🧠 Building Customized LSTM Neural Network Encoder model with Dropout, Dense, RepeatVector, and Bidirectional LSTM layers. Sequence feature layers with Embedding, Dropout, and Bidirectional LSTM layers. Attention mechanism using Dot product, Softmax attention scores,...
Image Captioning is the task of describing the content of an image in words. This task lies at the intersection of computer vision and natural language processing.
Fabricating a Python application that generates a caption for a selected image. Involves the use of Deep Learning and NLP Frameworks in Tensorflow, Keras and NLTK modules for data processing and creation of deep learning models and their evaluation.
This Streamlit app is designed for image captioning and tagging using the Google Gemini AI
This repository contains notebooks showcasing various generative models, including DCGAN and VAE for anime face generation, an Autoencoder for converting photos to sketches, a captioning model using an attention mechanism for an image caption generator, and more.
A model inspired from the famous Show and Tell Model is implemented for automatic image captioning.
Image caption generator using CNN as an encoder and RNN as an decoder.
Streamline the creation of supervised datasets to facilitate data augmentation for deep learning architectures focused on image captioning. The core framework leverages MiniGPT-4, complemented by the pre-trained Vicuna model, which boasts 13 billion parameters.
A neural image caption generator based on the "Show and Tell" paper.
This project Implements a combination of Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs) to generate descriptive captions for input images.
deep learning model for generate caption and Analysis Sentiment
Generates textual description of any given image. Use both Natural Language Processing (NLP) and Computer Vision to generate captions. The idea implemented is to replace the encoder (RNN layer) in an encoder-decoder architecture with a deep Convolutional Neural Network (CNN) trained to classify objects in images.
Giving short discription of Image using AI
BLIP-ImageCaption