A real-time logo detection system using data offloading on mobile devices
Jiacheng Shang and
Jie Wu
Cyber-Physical Systems, 2018, vol. 4, issue 2, 99-115
Abstract:
In the past few years, mobile augmented reality (AR) has attracted a great deal of attention. It presents us a live, direct or indirect view of a real-world environment whose elements are augmented (or supplemented) by computer-generated sensory inputs such as sound, video, graphics or GPS data. Also, deep learning has the potential to improve the performance of current AR systems. In this paper, we propose a distributed mobile logo detection framework. Our system consists of mobile AR devices and a back-end server. Mobile AR devices can capture real-time videos and locally decide which frame should be sent to the back-end server for logo detection. The server schedules all detection jobs to minimise the maximum latency. We implement our system on the Google Nexus 5 and a desktop with a wireless network interface. Evaluation results show that our system can detect the view change activity with an accuracy of $$95.7\% $$95.7% and successfully process 40 image processing jobs before deadline.
Date: 2018
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DOI: 10.1080/23335777.2018.1499674
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