Please use this identifier to cite or link to this item:
https://elib.vku.udn.vn/handle/123456789/2683
Title: | Research and Evaluate some Deep Learning Methods to Detect Forest Fire based on Images from Camera |
Authors: | Dinh, Cong Tung Nguyen, Thu Huong Do, Thi Huyen Bui, Nam Anh |
Keywords: | Xception Inception-V3 VGG-19 ResNet152-V2 forest fire detection |
Issue Date: | Jun-2023 |
Publisher: | Vietnam-Korea University of Information and Communication Technology |
Series/Report no.: | CITA; |
Abstract: | Forest fires cause great consequences such as ecosystem imbalance, air quality deterioration, as well as direct impacts on human life. Early detection of a forest fire can help prevent and prevent the impact of this natural disaster and have timely remedial methods. Therefore, early forest fire detection is necessary. To accomplish this, many methods have been proposed and tested. In recent years, methods based on deep learning techniques with image data sources have been interesting and applied diversely because they can achieve optimal efficiency as well as cost savings in actual installation and operation. However, not all models give highly accurate results. In this paper, we study and evaluate four popular deep learning models (Xception, Inception-V3, VGG-19 and ResNet152-V2) that apply to forest fire detection based on images collected from cameras. With each model, we design deep learning networks to detect fires. The models were made on the dataset of 1900 images, including fire and no-fire cases. The experimental results show that all four of the above deep learning models can be applied to forest fire detection with high accuracy. In particular, the model using ResNet152-V2 gives the best results, with a fire detection capacity of 95.53%. |
Description: | Proceeding of The 12th Conference on Information Technology and It's Applications (CITA 2023); pp: 181-191. |
URI: | http://elib.vku.udn.vn/handle/123456789/2683 |
ISBN: | 978-604-80-8083-9 |
Appears in Collections: | CITA 2023 (National) |
Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.