Skip to content

kanugurajesh/Fruit-Rekog

Fruit Rekog

"🍎🍌🍇 An intelligent application with the power to accurately classify fruits! 🍏🍊 Utilizing state-of-the-art TensorFlow Lite models for predictions, this advanced system ensures superior accuracy, making fruit identification a seamless and delightful experience.

Fruit Classifier 🍏🍊🍌

An intelligent application for accurately classifying fruits using TensorFlow Lite models, with the added convenience of offline functionality.

Features:

  1. Offline Capability 📡🔒:

    • The application works seamlessly without requiring an internet connection, ensuring reliable performance anytime, anywhere.
  2. High Accuracy Predictions 🎯🔍:

    • Powered by TensorFlow Lite models, the classifier delivers precise and reliable fruit classifications, enhancing the user experience.
  3. User-Friendly Interface 🖥️🤖:

    • The application boasts an intuitive and easy-to-use interface, making fruit identification a simple and enjoyable process.
  4. Wide Range of Fruits 🍎🍇🍑:

    • Capable of identifying a diverse range of fruits, providing comprehensive support for various fruit types.
  5. Fast and Efficient 🚀⚡:

    • Swift prediction times ensure a seamless user experience, making the fruit classification process quick and efficient.
  6. Open Source 🛠️📂:

    • The source code is available for exploration and modification, promoting transparency and community collaboration.

Getting Started:

  1. Fork the Repository:
    Fork the repository which will create a copy of this project in your github
  2. Clone the Repository:
    git clone https://github.com/user-name/Fruit-Rekog.git
  3. Open the Fruit-Rekog Folder with Android-Studio:
    Go to android studio and open the Fruit-Rekog folder
  4. Make your own changes:
    Brainstorm and make your own changes in the app

Application Demo

fruit-recognizer

Application Screenshot

🔗 Links

portfolio linkedin twitter

Tech Stack

  • Kotlin
  • XML
  • Android Studio
  • Tensorflow
  • Tensorflow Lite

Authors

Contributing

Contributions are always welcome!

See contributing.md for ways to get started.

Please adhere to this project's code of conduct.

Support

For support, you can buy me a coffee

Buy Me A Coffee

License

MIT License

About

Use this Tool to recognize various fruits

Topics

Resources

License

Code of conduct

Contributing

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 2

  •  
  •  

Languages