Reducing Response Time for Multimedia Event Processing using Domain Adaptation

Asra Aslam, E. Curry
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引用次数: 6

Abstract

The Internet of Multimedia Things (IoMT) is an emerging concept due to the large amount of multimedia data produced by sensing devices. Existing event-based systems mainly focus on scalar data, and multimedia event-based solutions are domain-specific. Multiple applications may require handling of numerous known/unknown concepts which may belong to the same/different domains with an unbounded vocabulary. Although deep neural network-based techniques are effective for image recognition, the limitation of having to train classifiers for unseen concepts will lead to an increase in the overall response-time for users. Since it is not practical to have all trained classifiers available, it is necessary to address the problem of training of classifiers on demand for unbounded vocabulary. By exploiting transfer learning based techniques, evaluations showed that the proposed framework can answer within ~0.01 min to ~30 min of response-time with accuracy ranges from 95.14% to 98.53%, even when all subscriptions are new/unknown.
利用领域自适应减少多媒体事件处理的响应时间
多媒体物联网(Internet of Multimedia Things, IoMT)是由于传感设备产生大量多媒体数据而产生的一个新兴概念。现有的基于事件的系统主要关注标量数据,而基于多媒体事件的解决方案是特定于领域的。多个应用程序可能需要处理许多已知/未知的概念,这些概念可能属于具有无限词汇表的相同/不同领域。尽管基于深度神经网络的技术对于图像识别是有效的,但是必须为未见概念训练分类器的限制将导致用户的总体响应时间增加。因为让所有训练过的分类器都可用是不现实的,所以有必要根据无界词汇的需求来解决分类器的训练问题。通过利用基于迁移学习的技术,评估表明,即使所有订阅都是新的/未知的,所提出的框架也可以在0.01分钟至30分钟的响应时间内回答,准确率范围为95.14%至98.53%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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