Real Time Detection Of Forest Fires Using Fire Net-CNN And Explainable AI Techniques

Project Code :TCPGPY1805

Objective

The primary objective of this project is to develop a real-time forest fire detection system using deep learning-based image classification techniques. The system aims to accurately classify forest images into two categories: Fire and No Fire, enabling early detection and rapid response to wildfire incidents.

Abstract

Forest fires are a major environmental hazard that cause devastating damage to ecosystems, wildlife, and human communities. Early and accurate detection is crucial to minimize their impact. This project focuses on real-time forest fire detection using image classification techniques based on deep learning. Inspired by the base paper titled "Real-Time Detection of Forest Fires Using FireNet-CNN and Explainable AI Techniques", we aim to classify forest images into two categories: Fire and No Fire. The existing FireNet-CNN model serves as the baseline for performance comparison. To improve accuracy and computational efficiency, we propose the use of two advanced convolutional neural networks: EfficientNetV2 and MobileNetV3. These models are trained on a publicly available wildfire image dataset from Kaggle, which includes a balanced set of fire and non-fire images. We evaluate model performance using metrics such as accuracy, precision, recall, and F1-score. To enhance transparency and interpretability, Explainable AI (XAI) methods like Grad-CAM are applied to visualize areas of focus in the input images during prediction. The objective is to develop a lightweight, robust, and interpretable system for early wildfire detection, which can be integrated into surveillance and monitoring systems for rapid response and prevention.

Keywords:
Forest Fire Detection, FireNet-CNN, EfficientNetV2, MobileNetV3, Deep Learning, Image Classification, Explainable AI, Grad-CAM, Wildfire, Real-Time Monitoring.

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

Software Requirements:

 

Operating System                               :  Windows 7/8/10

Server side Script                                :  HTML, CSS, Bootstrap & JS

Programming Language                     :  Python

Libraries                                              :  Flask, Pandas, Torch, Keras, Sklearn, Numpy , Seaborn

IDE/Workbench                                  :  VSCode

Server Deployment                             :  Xampp Server

Database                                             :  MySQL    

 

4.3 Hardware Requirements:

Processor                                   - I3/Intel Processor

RAM                                       - 8GB (min)

Hard Disk                                - 128 GB

Key Board                               - Standard Windows Keyboard

Mouse                                      - Two or Three Button Mouse

Monitor                                    - Any

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