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A calculator that uses handwritten Kannada digits and operators to calculate the result, using contour detection and CNN model predictions. Made using PyTorch, OpenCV, PIL and CustomTkinter.

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ShettySach/Kannada-Handwriting-Calculator

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Kannada-Handwriting-Calculator

Demo

Contour boxes (green), predicted classes (blue) and prediction probabilities (red)

Contours

A calculator that uses handwritten ಕನ್ನಡ (Kannada) digits and operators to calculate the result, using contour detection and ConvNet (Convolutional Neural Network) model prediction.

  • PyTorch is used to create, train and load the state of the neural network model used for predictions.
  • OpenCV and Pillow (PIL) are used to read input from the GUI canvas and to obtain contours for individual digits/operators.
  • CustomTKinter is used to provide the GUI.
  • The individual digits/operators are detected and their most probable target classes are predicted. The predictions are combined into a string and evaluated to get the result.
  • src/ConvNet.ipynb consists of processing the data, creating the CNN model architecture and then training the model.
  • src/Main.ipynb consists of loading the trained model state and using it to make predictions for the calculator app.

Requirements -

For Linux

conda create --name <env> --file requirements.txt
conda activate <env>
pip install customtkinter

For Linux / others

conda create -c conda-forge -c pytorch --name <env> --file reqs.txt
conda activate <env>
pip install customtkinter
  • python 3.9.18
  • pytorch 2.3.1
  • opencv 4.10.0
  • numpy 2.0.0
  • pillow 10.3.0
  • customtkinter 5.2.2
  • pandas 2.2.2 [ Training only ]
  • torchvision 0.18.1 [ Training only ]

Instructions -

  • Clone the repo and run the Jupyter Notebook, src/Main.ipynb, or run src/Main.py.

  • You can use Kannada digits ೦ ೧ ೨ ೩ ೪ ೫ ೬ ೭ ೮ ೯, operators + - × /, decimal point . and parentheses ().

  • You can also use ×× for exponentiation and // for floor division.

  • To train the model yourself, download the data, unzip, move it into the datasets directory, and then run the Jupyter Notebook src/ConvNet.ipynb.

    NOTE: Depending on your screen resolution, you may need to change canvas size, brush delta/displacement and brush thickness to get more accurate results.

Data