Rice Leaf Disease Prediction System using Deep Learning Flask Web App

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Rice Leaf Disease Identification is a deep learning project aimed at detecting and classifying diseases in rice leaves using computer vision techniques. The project utilizes transfer learning with the ResNet152V2 model, incorporating an attention layer to focus on important parts of the image. The dataset used for training the model contains approximately 2600 images belonging to six different classes.

Dataset

The dataset used for training the model is sourced from Kaggle and contains images of rice leaves affected by different diseases. You can access the dataset here.

Model Training

The deep learning model is trained using transfer learning techniques with the ResNet152V2 architecture. Transfer learning allows leveraging pre-trained models on large datasets and fine-tuning them for specific tasks. In this project, the ResNet152V2 model is fine-tuned on the rice leaf disease dataset to classify different types of diseases.

Classes

The model is trained to classify rice leaf images into the following disease classes:

  • Healthy
  • Brown spot
  • Leaf blast
  • Bacterial leaf blight
  • Leaf scald
  • Narrow brown spot

Deployment

The trained model is deployed using Flask, a lightweight Python web framework. It accepts images of rice leaves as input and identifies the disease present in the leaf.

How to Install

To use the deployed model:

  1. Download Code .
  2. Install the required dependencies specified in the requirements.txt file.
  3. Run the Flask application.
  4. Upload an image of a rice leaf to the application.
  5. The application will predict the disease present in the leaf and display the result.

Plant Disease Prediction using CNN Flask Web App

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Buy Now Project Report ₹1001

The plant disease prediction Flask project is a web application that utilizes machine learning algorithms to predict whether a plant is healthy or diseased based on an image of the plant. The project involves building a machine learning model that can classify plant images as healthy or diseased and integrating this model into a Flask web application.

The project generally consists of the following steps:

  1. Data collection: Collect images of healthy plants and plants with different types of diseases.
  2. Data preprocessing: Clean and prepare the image data for use in the machine learning model.
  3. Model training: Train a machine learning model using the preprocessed image data.
  4. Model evaluation: Evaluate the performance of the machine learning model to ensure it can accurately classify plant images.
  5. Flask app development: Develop a Flask web application that allows users to upload images of plants and get a prediction of whether the plant is healthy or diseased.
  6. Deployment: Deploy the web application to a server so that it can be accessed by users.

Overall, the plant disease prediction Flask project is an innovative solution to the problem of identifying plant diseases and can be a valuable tool for farmers and researchers.

Overview of the CNN algorithm:

Convolutional Neural Networks (CNNs) are a type of deep learning algorithm that are well-suited for image classification tasks. The key idea behind CNNs is to learn a set of filters that can be used to extract meaningful features from the input image. These filters are learned automatically during the training process.

Here are the main steps involved in a CNN algorithm:

  1. Convolution: The input image is convolved with a set of learnable filters. The filters are applied to small patches of the image and slide across the entire image to produce a set of feature maps.
  2. ReLU Activation: The feature maps are passed through a Rectified Linear Unit (ReLU) activation function, which applies a non-linear transformation to the output of each convolutional layer.
  3. Pooling: The feature maps are downsampled using a pooling operation, which reduces the spatial dimensionality of the feature maps while retaining the most important features.
  4. Fully Connected Layers: The output of the convolutional and pooling layers is flattened and passed through one or more fully connected layers, which compute the final classification scores.
  5. Softmax Activation: The final layer uses a softmax activation function to produce a probability distribution over the possible classes.
  6. Training: During training, the CNN is fed a set of labeled images and adjusts the weights of its filters to minimize the difference between the predicted output and the actual output.
  7. Evaluation: After training, the CNN is evaluated on a separate set of images to measure its performance. This involves computing metrics such as accuracy, precision, recall, and F1 score.

Overall, CNNs have achieved state-of-the-art performance on a wide range of image classification tasks, including plant disease prediction.

Technology Used in the project :-

  1. We have developed this project using the below technology
  2. HTML : Page layout has been designed in HTML
  3. CSS : CSS has been used for all the desigining part
  4. JavaScript : All the validation task and animations has been developed by JavaScript
  5. Python : All the business logic has been implemented in Python
  6. Flask: Project has been developed over the Flask Framework

Supported Operating System :-

  1. We can configure this project on following operating system.
  2. Windows : This project can easily be configured on windows operating system. For running this project on Windows system, you will have to install
  3. Python 3.6.10, PIP, Django.
  4. Linux : We can run this project also on all versions of Linux operating systemMac : We can also easily configured this project on Mac operating system.

Installation Step : -

  1. python 3.6.8
  2. command 1 - python -m pip install --user -r requirements.txt
  3. command 2 - python app.py