A Real-time Border Surveillance System using Deep Learning and Edge Computing

Abstract

Border security has always been one of the top priority obligations and responsibilities in protecting the peace of nations. Most nations have thousands of kilometers of long borders, where illegal activities occur frequently. To ensure safety, robust and timely border surveillance systems are in high demand. However, current border surveillance systems using cloud architecture have faced several problems with high latency, bandwidth consumption, and security risks. In this paper, we introduce a real-time border surveillance system based on edge computing that shifts computation tasks from cloud to edge, resulting in alleviating existing problems. In detail, we produce a lightweight human detection model based on the MobileNet architecture, namely BorderEdge, to operate on resource-constrained devices effectively. Our experiment results on Raspberry Pi 4 show that our system could achieve high accuracy with …

Publication
2022 RIVF International Conference on Computing and Communication Technologies (RIVF)
FieldDetails
Pages1-6
PublisherIEEE
Scholar articlesA Real-time Border Surveillance System using Deep Learning and Edge Computing - DK Luong-Huu, TA Ngo, HT Thai, KH Le - 2022 RIVF International Conference on Computing and …, 2022 - Cited by 1 Related articles All 2 versions