2021
DOI: 10.1007/s11042-020-10277-x
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Investigating response time and accuracy in online classifier learning for multimedia publish-subscribe systems

Abstract: The enormous growth of multimedia content in the field of the Internet of Things (IoT) leads to the challenge of processing multimedia streams in real-time. Event-based systems are constructed to process event streams. They cannot natively consume multimedia event types produced by the Internet of Multimedia Things (IoMT) generated data to answer multimedia-based user subscriptions. Machine learning-based techniques have enabled rapid progress in solving real-world problems and need to be optimised for the low… Show more

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Cited by 4 publications
(2 citation statements)
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“…Primarily, they exhibited how a multi-channel User Datagram Protocol (UDP) communication strategy for PB systems enables transmitting high-volume data like images in a time frame fitted for the industry. Aslam et al [20] worked on adaptive methods to handle unknown subscriptions in a low-latency PB model for processing multimedia events. Their system achieved between 79% and 84% accuracy.…”
Section: Placements and Communication Strategies In Fog Architecturesmentioning
confidence: 99%
“…Primarily, they exhibited how a multi-channel User Datagram Protocol (UDP) communication strategy for PB systems enables transmitting high-volume data like images in a time frame fitted for the industry. Aslam et al [20] worked on adaptive methods to handle unknown subscriptions in a low-latency PB model for processing multimedia events. Their system achieved between 79% and 84% accuracy.…”
Section: Placements and Communication Strategies In Fog Architecturesmentioning
confidence: 99%
“…This system is based on a flexible architecture having the advantage to collect useful information gathered from road infrastructure, traffic tracking, etc., and to process and provide real-time congestion prediction using machine learning algorithms and in particular classification algorithms. The main reason for choosing classification algorithms is that their processing time is lower than deep learning algorithms according to [30], and they also meet the goal of reaching a fastest path.…”
Section: B Traffic Congestion Predictionmentioning
confidence: 99%