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Rexnet1 3x

Developed by pyronear
An image classification model based on the ReXNet architecture pre-trained on a wildfire binary classification dataset, utilizing a customized Squeeze-Excitation layer to eliminate channel redundancy issues
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Release Time : 7/17/2022

Model Overview

This model is specifically designed for wildfire detection tasks, employing the ReXNet architecture to optimize feature representation capabilities, suitable for binary image classification scenarios

Model Features

Channel Redundancy Optimization
Effectively eliminates feature channel redundancy issues through a customized Squeeze-Excitation layer
Lightweight Architecture
The ReXNet architecture reduces computational resource consumption while maintaining accuracy
Domain-Specific Pre-training
Targeted pre-training based on wildfire detection datasets

Model Capabilities

Image Classification
Wildfire Recognition
Binary Classification Task Handling

Use Cases

Environmental Monitoring
Early Wildfire Detection
Real-time wildfire detection through satellite or surveillance camera images
Can be integrated into early warning systems to reduce fire risks
Fire Risk Assessment
Analyzes historical image data to assess regional fire risk levels
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