2023
DOI: 10.33851/jmis.2023.10.1.53
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Lifelong Learning Architecture of Video Surveillance System

Abstract: The learning capacity of general deep learning models for object detection would not be large enough to represent real-world scene dynamics, and thus such models would be weak to `unseen' data due to environmental changes. To address this issue, online or active learning methods use data samples obtained in new environments, where the new samples collected from false and/or miss detection cases are used to re-train the original model to enhance detection precision. However, it is inevitably degraded over time … Show more

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“…Scholars such as Jordi Conesa have discussed lifelong learning and the obstacles it faces [8]. Taewan Kim proposed a lifelong learning architecture for video surveillance systems [9]. Shuojin Yang and Zhangchuan Cai proposed a cross-domain lifelong learning method based on task similarity [10].…”
Section: Related Workmentioning
confidence: 99%
“…Scholars such as Jordi Conesa have discussed lifelong learning and the obstacles it faces [8]. Taewan Kim proposed a lifelong learning architecture for video surveillance systems [9]. Shuojin Yang and Zhangchuan Cai proposed a cross-domain lifelong learning method based on task similarity [10].…”
Section: Related Workmentioning
confidence: 99%