TensorFlow Implementation of "Show, Attend and Tell"

Overview

Show, Attend and Tell

Update (December 2, 2016) TensorFlow implementation of Show, Attend and Tell: Neural Image Caption Generation with Visual Attention which introduces an attention based image caption generator. The model changes its attention to the relevant part of the image while it generates each word.


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References

Author's theano code: https://github.com/kelvinxu/arctic-captions

Another tensorflow implementation: https://github.com/jazzsaxmafia/show_attend_and_tell.tensorflow


Getting Started

Prerequisites

First, clone this repo and pycocoevalcap in same directory.

$ git clone https://github.com/yunjey/show-attend-and-tell-tensorflow.git
$ git clone https://github.com/tylin/coco-caption.git

This code is written in Python2.7 and requires TensorFlow 1.2. In addition, you need to install a few more packages to process MSCOCO data set. I have provided a script to download the MSCOCO image dataset and VGGNet19 model. Downloading the data may take several hours depending on the network speed. Run commands below then the images will be downloaded in image/ directory and VGGNet19 model will be downloaded in data/ directory.

$ cd show-attend-and-tell-tensorflow
$ pip install -r requirements.txt
$ chmod +x ./download.sh
$ ./download.sh

For feeding the image to the VGGNet, you should resize the MSCOCO image dataset to the fixed size of 224x224. Run command below then resized images will be stored in image/train2014_resized/ and image/val2014_resized/ directory.

$ python resize.py

Before training the model, you have to preprocess the MSCOCO caption dataset. To generate caption dataset and image feature vectors, run command below.

$ python prepro.py

Train the model

To train the image captioning model, run command below.

$ python train.py

(optional) Tensorboard visualization

I have provided a tensorboard visualization for real-time debugging. Open the new terminal, run command below and open http://localhost:6005/ into your web browser.

$ tensorboard --logdir='./log' --port=6005 

Evaluate the model

To generate captions, visualize attention weights and evaluate the model, please see evaluate_model.ipynb.


Results


Training data

(1) Generated caption: A plane flying in the sky with a landing gear down.

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(2) Generated caption: A giraffe and two zebra standing in the field.

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Validation data

(1) Generated caption: A large elephant standing in a dry grass field.

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(2) Generated caption: A baby elephant standing on top of a dirt field.

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Test data

(1) Generated caption: A plane flying over a body of water.

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(2) Generated caption: A zebra standing in the grass near a tree.

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Owner
Yunjey Choi
Yunjey Choi
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