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Investigating response time and accuracy in online classifier learning for multimedia publish-subscribe systems

机译:对多媒体发布 - 订阅系统的在线分类器学习中的响应时间和准确性

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摘要

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 response time of the multimedia event processing paradigm. In this paper, we describe a classifier construction approach for the training of online classifiers, that can handle dynamic subscriptions with low response time and provide reasonable accuracy for the multimedia event processing. We find that the current object detection methods can be configured dynamically for the construction of classifiers in real-time, by tuning hyperparameters even when training from scratch. Our experiments demonstrate that deep neural network-based object detection models, with hyperparameter tuning, can improve the performance within less training time for the answering of previously unknown user subscriptions. The results from this study show that the proposed online classifier training based model can achieve accuracy of 79.00% with 15-min of training and 84.28% with 1-hour training from scratch on a single GPU for the processing of multimedia events.
机译:多媒体内容在物联网(IOT)导致互联网上处理多媒体的挑战领域的巨大增长,实时流。基于事件的系统构造过程的事件流。它们本身不能消耗由多媒体事(IoMT)产生的数据的互联网产生的基于多媒体回答用户订阅的多媒体事件类型。基于机器学习技术已经能够在解决现实世界的问题和需要多媒体事件处理模式的低响应时间进行优化,进展迅速。在本文中,我们描述了在线分类的培训,可以处理低响应时间的动态订阅和提供多媒体事件处理合理准确分类进场施工。我们发现,目前的目标检测方法可以动态地实时分类建设从无到有训练,即使配置,通过调整超参数。我们的实验表明,深基于神经网络的目标检测模型,用超参数调教,可提高以前未知的用户订阅的应答训练时间以内的性能。从这项研究结果表明,所提出的在线分类培训的基于模型可以训练15分钟,并用从头在单GPU为多媒体事件的处理1小时的培训84.28%,达到79.00%的准确率的结果。

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