Unmanned aerial vehicles (UAVs) or drones are versatile innovations that can capture pictures and videos and even collect air or soil samples. Natural disaster drones are especially critical, which help with understanding the damage after a disaster, locating people who need help, distributing resources and preparing for the next event. Computer vision, deep learning (DL), and drones can augment the existing sensors, thereby increasing the accuracy of natural disasters detector, and most importantly, allow people to take precautions, stay safe, and reduce the number of deaths and injuries that happens due to these disasters. Therefore, in this paper we propose a novel lightweight convolutional neural network (CNN) based framework to detect natural disasters including cyclone, flood, earthquake, and wildfire. The proposed CNN model is obtained by fine-tuning the MobileNetV2 that can be deployed on drones. Furthermore, the model is trained and evaluated using a publicly available natural disasters dataset by obtaining 83.4% accuracy. Similarly, the framework has ability to broad cast the notification in alarming situations, which makes our proposed framework a best fit for natural disasters detection in realworld surveillance settings.
목차
Abstract I. INTRODUCTION II. LITERATURE REVIEW III. PROPOSED NATURAL DISASTERS DETECTION FRAMEWORK IV. EXPERIMENTAL RESULTS A. Dataset B. System Configuration C. Resutls and Discussions V. CONCLUSION ACKNOWLEDGMENT REFERENCES
저자
Noman Khan [ Sejong University Seoul, Republic of Korea ]
Samee Ullah Khan [ Sejong University Seoul, Republic of Korea ]
Mi Young Lee [ Sejong University Seoul, Republic of Korea ]
Sung Wook Baik [ Sejong University Seoul, Republic of Korea ]