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

 
 
 

Contributors 2

  •  
  •  

Languages