Dilshad737 / digit-recognizer

Handwritten digit recognition with Python

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Digit Recognizer

This is an implementation of a convolutional neural network for recognizing hand written digits using the MNIST dataset. This model attains a validation accuracy of about 99.2% is obtained after training for 12 epochs. The model architecture and weights are saved in the files model_architecture.json and model_weights.h5. Note that these weights are compatible only with the Tensorflow backed.

To train the model run train.py. The file test.py generates a file predictions.csv which contains the predicted labels to the images in the test set. This file can be used for submission at Kaggle. display_random.py displays 25 random images from the test set along with their predicted labels. Here is an example:

Requirements

Dataset

  • The model is trained on the MNIST dataset downloaded from Kaggle.

  • The file train.csv contains pixel intensity values as flattened vectors for 42000 images and their corresponding labels. Similarly, test.csv has pixel intensity values for 28000 unlabelled images.

The Model

About

Handwritten digit recognition with Python


Languages

Language:Python 100.0%