DEVELOPMENT OF TRESPASSING DETECTION SYSTEM ON SMART VIDEO SURVEILLANCE SYSTEM BASED ON EDGE COMPUTING FOR LEVEL CROSSING
A city needs innovative, efficient and integrated solutions. Safe and secure aspects are part of the development of a smart city. One of the problems that has a high potential for violations and accidents in a city is level crossings. The surveillance system applied at level crossings is currentl...
Saved in:
Main Author: | |
---|---|
Format: | Theses |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/70731 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | A city needs innovative, efficient and integrated solutions. Safe and secure aspects
are part of the development of a smart city. One of the problems that has a high
potential for violations and accidents in a city is level crossings. The surveillance
system applied at level crossings is currently still conventional. The smart video
surveillance system is part of the smart city development as a solution. The edge
computing approach is required to be implemented on systems that require real-
time processing characteristics. Aspects of computing accuracy and performance
are a challenge in implementing smart video surveillance systems on devices with
limited computing to achieve ideal conditions, so optimization is required to
develop effective and efficient solutions. This research will develop a prototype of
a smart video surveillance system by implementing offloading computing on limited
computing resource devices to improve system computing performance in
identifying and collecting data on violations at level crossings as a form of
implementing surveillance of potential accident locations at level crossings. The
results of tests carried out on system development resulted in an average increase
in the speed of the computing process of about 1.5 times faster with an accuracy
value of 89.4%. Meanwhile, the GPU temperature computational performance
results decreased by around 5.50 °C, decreased by 44.05% in the GPU utilization
process and decreased by around 301 Mb in the memory utilization process and
2.28 watts in power consumption. |
---|