matlab_to_python_cl​assification_using_​DL

This project serves as a bridge between MATLAB and Python, focusing on deep learning techniques for the classification of fruit quality.
12 descargas
Actualizado 21 oct 2023

Bridge Between MATLAB and Python for Fruit Quality Classification

Description

This project serves as a bridge between MATLAB and Python, focusing on deep learning techniques for the classification of fruit quality. The project involves training a CNN model in MATLAB and further converting it into a TensorFlow model in Python. The trained model is integrated into a Flask web application using HTML and CSS.

Prerequisites

  • MATLAB and Python environments set up.
  • Understanding of deep learning concepts and CNN architectures.
  • Familiarity with MATLAB, TensorFlow, and Flask.

Installation

  1. Ensure that MATLAB and Python are properly installed on your system.
  2. Install the required packages for deep learning in MATLAB and Python.
  3. Set up a virtual environment for the Python Flask application.

work steps

  1. Train the CNN model in MATLAB using a comprehensive fruit quality dataset. Ensure the dataset is diverse and representative of various fruit quality characteristics.
  2. Convert the trained MATLAB model into a TensorFlow model for integration into the Python environment. Validate the model's performance and accuracy.
  3. Develop a Flask web application using HTML and CSS to provide a user-friendly interface for fruit quality classification.
  4. Incorporate the TensorFlow model into the Flask application to enable real-time fruit quality classification for users.

Result

Web Application Result

Provide an image that showcases the web application interface and the fruit quality classification results. Ensure that the image accurately represents the user experience and the classification accuracy.

Citar como

Vikas Chelluru (2024). matlab_to_python_classification_using_DL (https://github.com/Vikas-ABD/matlab_to_python_classification_using_DL/releases/tag/1.1.0), GitHub. Recuperado .

Compatibilidad con la versión de MATLAB
Se creó con R2023b
Compatible con cualquier versión
Compatibilidad con las plataformas
Windows macOS Linux
Etiquetas Añadir etiquetas

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!
Versión Publicado Notas de la versión
1.1.0

Para consultar o notificar algún problema sobre este complemento de GitHub, visite el repositorio de GitHub.
Para consultar o notificar algún problema sobre este complemento de GitHub, visite el repositorio de GitHub.