TY - GEN
T1 - Managing Edge AI Cameras for Traffic Monitoring
AU - Chen, Guan Wen
AU - Lin, Yi Hsiu
AU - Sun, Min Te
AU - Ik, Tsi Ui
N1 - Publisher Copyright:
© 2022 IEICE.
PY - 2022
Y1 - 2022
N2 - AI cameras are edge devices that can execute lightweight deep learning models with embedded GPU devices. In traffic management applications, traffic flow and traffic incidents can be detected from roadside images by AI cameras, and only the detected high-level information needs to be sent back to the server to avoid network bandwidth consumption and spare server resources. However, due to limited hardware resources at edge devices, the models should be optimized for specific AI cameras before they are deployed. In addition, the environment-related parameters need to be configured properly after model deployment. These tasks call for an AI camera management system. In this research, we design a management and deployment traffic monitoring system which can accomplish model optimization and parameter configuration with ease. Except for the camera hardware installation, other main functions can be called remotely from the management system, including 1) Automatic modeling and code transfer generation; 2) Remote deep learning model deployment; 3) Remote application configuration; 4) Analysis result presentation with a graphical user interface. To validate our proposed system, the embedded GPU devices, including NVIDIA Jetson TX2 and AGX Xavier combined with roadside cameras, are used as the prototype of the AI cameras, and the deployment of intersection flow analysis models and the visualized analysis results are conducted by the proposed system. The experiments validate that the proposed management system achieves all the design goals.
AB - AI cameras are edge devices that can execute lightweight deep learning models with embedded GPU devices. In traffic management applications, traffic flow and traffic incidents can be detected from roadside images by AI cameras, and only the detected high-level information needs to be sent back to the server to avoid network bandwidth consumption and spare server resources. However, due to limited hardware resources at edge devices, the models should be optimized for specific AI cameras before they are deployed. In addition, the environment-related parameters need to be configured properly after model deployment. These tasks call for an AI camera management system. In this research, we design a management and deployment traffic monitoring system which can accomplish model optimization and parameter configuration with ease. Except for the camera hardware installation, other main functions can be called remotely from the management system, including 1) Automatic modeling and code transfer generation; 2) Remote deep learning model deployment; 3) Remote application configuration; 4) Analysis result presentation with a graphical user interface. To validate our proposed system, the embedded GPU devices, including NVIDIA Jetson TX2 and AGX Xavier combined with roadside cameras, are used as the prototype of the AI cameras, and the deployment of intersection flow analysis models and the visualized analysis results are conducted by the proposed system. The experiments validate that the proposed management system achieves all the design goals.
KW - AI cameras
KW - embedded system
KW - management system
UR - http://www.scopus.com/inward/record.url?scp=85142072914&partnerID=8YFLogxK
U2 - 10.23919/APNOMS56106.2022.9919965
DO - 10.23919/APNOMS56106.2022.9919965
M3 - Conference contribution
AN - SCOPUS:85142072914
T3 - APNOMS 2022 - 23rd Asia-Pacific Network Operations and Management Symposium: Data-Driven Intelligent Management in the Era of beyond 5G
BT - APNOMS 2022 - 23rd Asia-Pacific Network Operations and Management Symposium
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 23rd Asia-Pacific Network Operations and Management Symposium, APNOMS 2022
Y2 - 28 September 2022 through 30 September 2022
ER -