Knowledge Agora



Similar Articles

Title Detecting Abnormal and Dangerous Activities Using Artificial Intelligence on The Edge for Smart City Application
ID_Doc 38055
Authors Huu, NNT; Mai, L; Minh, TV
Title Detecting Abnormal and Dangerous Activities Using Artificial Intelligence on The Edge for Smart City Application
Year 2021
Published
Abstract Artificial Intelligence (AI) and Internet of Things (IoT) technologies have developed rapidly in recent years. AI on the Edge technology combined with IoT technology are very potential for smart city applications, the security protection is one of the very important problem in smart city. This study proposes a solution for detecting abnormal and dangerous activities using AI on the edge which can be applied in smart city applications. This project aims at developing a system which can detect abnormal and dangerous activities using Deep learning model on the edge computer. The video signal from the camera will be processed by embedded computer Jetson Nano, which is implemented with deep learning models to detect some abnormal and dangerous activities such as human without facemask in the SARS-CoV-2 pandemic areas or man with gun and knife in the city public areas..., the information of detected abnormal activities will be sent to cloud server through the IoT system. YOLOv5 deep learning model is selected to implement in this system, thousands of abnormal activities have been collected to train the model. A prototype abnormal and dangerous activities detection system has been designed and implemented in practical testing areas, which has very high accuracy detection result. Based on these initial results of the proposed solution we can develop some practical applications for smart city to detect and track different kinds of abnormal human activities in smart city for security issues.
PDF

Similar Articles

ID Score Article
38723 Rehman, A; Saba, T; Khan, MZ; Damasevicius, R; Bahaj, SA Internet-of-Things-Based Suspicious Activity Recognition Using Multimodalities of Computer Vision for Smart City Security(2022)
35921 Ragab, M; Sabir, MFS Arithmetic Optimization with Deep Learning Enabled Anomaly Detection in Smart City(2022)Cmc-Computers Materials & Continua, 73, 1
42284 Janakiramaiah, B; Kalyani, G; Jayalakshmi, A RETRACTED: Automatic alert generation in a surveillance systems for smart city environment using deep learning algorithm (Retracted Article)(2021)Evolutionary Intelligence, 14, 2
44676 Bian, CL; Xu, YM; Wang, L; Gu, HF; Zhou, FJ Abnormal behavior recognition based on edge feature and 3D convolutional neural network(2020)
36161 Islam, M; Dukyil, AS; Alyahya, S; Habib, S An IoT Enable Anomaly Detection System for Smart City Surveillance(2023)Sensors, 23, 4
39713 Khalifa, OO; Roubleh, A; Esgiar, A; Abdelhaq, M; Alsaqour, R; Abdalla, A; Ali, ES; Saeed, R An IoT-Platform-Based Deep Learning System for Human Behavior Recognition in Smart City Monitoring Using the Berkeley MHAD Datasets(2022)Systems, 10, 5
37235 Nayak, R; Behera, MM; Pati, UC; Das, SK Video-based Real-time Intrusion Detection System using Deep-Learning for Smart City Applications(2019)
Scroll