AbstractThis work presents a real-time video-based fire and smoke detection using YOLOv2 Convolutional Neural Network (CNN) in antifire surveillance systems. YOLOv2 is designed with light-weight neural network architecture to account the requirements of embedded platforms. The training stage is processed off-line with indoor and outdoor fire and smoke image sets in different indoor and outdoor scenarios. Ground truth labeler app is used to generate the ground truth data from the training set. The trained model was tested and compared to the other state-of-the-art methods. We used a large scale of fire/smoke and negative videos in different environments, both indoor (e.g., a railway carriage, container, bus wagon, or home/office) or outdoor ...
Fire disasters usually cause significant damage to human lives and property. Thus, early fire detect...
From sprawling urbans to dense jungles, fire accidents pose a major threat to the world. These could...
Currently, sensor-based systems for fire detection are widely used worldwide. Further research has s...
This work presents a real-time video-based fire and smoke detection using YOLOv2 Convolutional Neura...
This work presents a video-camera-based fire/smoke sensing technique for early warning in antifire s...
This paper deals with the preliminary research of the fire detection in a video stream. Early fire d...
This paper deals with the preliminary research of the fire detection in a video stream. Early fire d...
PresentationFire that is one of the most serious accidents in chemical factories, may lead to consid...
This paper presents implementation of a centralized antifire surveillance management system based on...
Smoke detection represents a critical task for avoiding large scale fire disaster in industrial envi...
This paper proposes a video-based fire and smoke detection technique to be implemented as antifire s...
Fire and smoke detection in today’s world is a must, especially in clustered areas where a quick res...
In this work we explore different Convolutional Neural Network (CNN) architectures and their variant...
Convolutional neural networks (CNNs) have yielded state-of-The-Art performance in image classificati...
Convolutional Neural Networks (CNNs) have proven their worth in the field of image-based object reco...
Fire disasters usually cause significant damage to human lives and property. Thus, early fire detect...
From sprawling urbans to dense jungles, fire accidents pose a major threat to the world. These could...
Currently, sensor-based systems for fire detection are widely used worldwide. Further research has s...
This work presents a real-time video-based fire and smoke detection using YOLOv2 Convolutional Neura...
This work presents a video-camera-based fire/smoke sensing technique for early warning in antifire s...
This paper deals with the preliminary research of the fire detection in a video stream. Early fire d...
This paper deals with the preliminary research of the fire detection in a video stream. Early fire d...
PresentationFire that is one of the most serious accidents in chemical factories, may lead to consid...
This paper presents implementation of a centralized antifire surveillance management system based on...
Smoke detection represents a critical task for avoiding large scale fire disaster in industrial envi...
This paper proposes a video-based fire and smoke detection technique to be implemented as antifire s...
Fire and smoke detection in today’s world is a must, especially in clustered areas where a quick res...
In this work we explore different Convolutional Neural Network (CNN) architectures and their variant...
Convolutional neural networks (CNNs) have yielded state-of-The-Art performance in image classificati...
Convolutional Neural Networks (CNNs) have proven their worth in the field of image-based object reco...
Fire disasters usually cause significant damage to human lives and property. Thus, early fire detect...
From sprawling urbans to dense jungles, fire accidents pose a major threat to the world. These could...
Currently, sensor-based systems for fire detection are widely used worldwide. Further research has s...