iClassify -> Image Classification to recognize the shape of the hand that forms scissors, rock, or paper.
To be updated soon.
- [The dataset is divided into train sets and validation sets.]
- [The size of the validation set must be 40% of the total dataset (the training data has 1314 samples, and the validation data is 874 samples).]
- [Implements image augmentation.]
- [Using image data generator.]
- [Model training < 30 minutes.]
- [Using Google Colaboratory.]
- [The accuracy is 98%.]
- [Can predict images]
- Install the modules required based on the type of implementation.
- Download the dataset you want to train and predict your system with. (https://dicodingacademy.blob.core.windows.net/picodiploma/ml_pemula_academy/rockpaperscissors.zip)
- Train your data using Google Colab (https://colab.research.google.com/)
I highly encourage the community to step forward and improve this code further. You can fix any reported bug, propose or implement new features, write tests, etc.
Here is a quick list of things to remember -
- Check the open issues before creating a new one,
- Help me in reducing the number of open issues by fixing any existing bugs,
- Check the roadmap to see if you can help in implementing any new feature,
- You can contribute by writing unit and integration tests for this library,
- If you have any new idea that aligns with the goal of this library, feel free to raise a feature request and discuss it.
Skilled Android, DevOps and IoT Engineer with 3+ years of hands-on experience supporting, automating, and optimizing mission critical deployments in AWS, leveraging configuration management, CI/CD, and DevOps processes.
Copyright 2021 ksatriow
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