TL;DR
EmergencyNet is a lightweight deep learning model designed for real-time aerial image classification on UAVs, enabling faster emergency response with minimal computational resources and high accuracy.
Contribution
The paper introduces EmergencyNet, a novel atrous convolution-based neural network architecture optimized for low-power UAV platforms for emergency monitoring.
Findings
EmergencyNet achieves up to 20x higher performance than existing models.
It maintains less than 1% accuracy drop compared to state-of-the-art models.
The model has minimal memory requirements suitable for embedded platforms.
Abstract
Deep learning-based algorithms can provide state-of-the-art accuracy for remote sensing technologies such as unmanned aerial vehicles (UAVs)/drones, potentially enhancing their remote sensing capabilities for many emergency response and disaster management applications. In particular, UAVs equipped with camera sensors can operating in remote and difficult to access disaster-stricken areas, analyze the image and alert in the presence of various calamities such as collapsed buildings, flood, or fire in order to faster mitigate their effects on the environment and on human population. However, the integration of deep learning introduces heavy computational requirements, preventing the deployment of such deep neural networks in many scenarios that impose low-latency constraints on inference, in order to make mission-critical decisions in real time. To this end, this article focuses on the…
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