https://github.com/kanugurajesh/fruit-rekog
Use this Tool to recognize various fruits
https://github.com/kanugurajesh/fruit-rekog
android-studio intelligent-app kotlin open-source tensorflow tflite xml
Last synced: 12 months ago
JSON representation
Use this Tool to recognize various fruits
- Host: GitHub
- URL: https://github.com/kanugurajesh/fruit-rekog
- Owner: kanugurajesh
- License: mit
- Created: 2023-11-27T10:31:43.000Z (over 2 years ago)
- Default Branch: main
- Last Pushed: 2023-11-27T13:18:34.000Z (over 2 years ago)
- Last Synced: 2024-01-12T04:54:48.064Z (over 2 years ago)
- Topics: android-studio, intelligent-app, kotlin, open-source, tensorflow, tflite, xml
- Language: Kotlin
- Homepage:
- Size: 5.34 MB
- Stars: 6
- Watchers: 1
- Forks: 0
- Open Issues: 0
-
Metadata Files:
- Readme: README.md
Awesome Lists containing this project
README
# 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:**
```bash
Fork the repository which will create a copy of this project in your github
```
2. **Clone the Repository:**
```bash
git clone https://github.com/user-name/Fruit-Rekog.git
```
3. **Open the Fruit-Rekog Folder with Android-Studio:**
```bash
Go to android studio and open the Fruit-Rekog folder
```
4. **Make your own changes:**
```bash
Brainstorm and make your own changes in the app
```
## Application Demo

## Application Screenshot

## 🔗 Links
[](https://rajeshportfolio.me/)
[](https://www.linkedin.com/in/rajesh-kanugu-aba8a3254/)
[](https://twitter.com/exploringengin1)
## Tech Stack
- Kotlin
- XML
- Android Studio
- Tensorflow
- Tensorflow Lite
## Authors
- [@kanugurajesh](https://www.github.com/kanugurajesh)
- [@rajesh604](https://www.github.com/rajesh604)
## Contributing
Contributions are always welcome!
See [`contributing.md`](https://github.com/kanugurajesh/Fruit-Rekog/blob/main/contributing.md) for ways to get started.
Please adhere to this project's [`code of conduct`](https://github.com/kanugurajesh/Fruit-Rekog/blob/main/code_of_conduct.md).
## Support
For support, you can buy me a coffee
## License
[](https://github.com/kanugurajesh/Cric-Quiz/blob/master/LICENSE.TXT)