Viana-Ferreira Carlos, Ribeiro Luís, Matos Sérgio, Costa Carlos
Department of Electronics, Telecommunications and Informatics and Institute of Electronics and Telematics Engineering of Aveiro, University of Aveiro, Campus Universitário de Santiago, 3810-193, Aveiro, Portugal.
Int J Comput Assist Radiol Surg. 2016 Feb;11(2):327-36. doi: 10.1007/s11548-015-1272-4. Epub 2015 Aug 5.
Traditionally, medical imaging repositories have been supported by indoor infrastructures with huge operational costs. This paradigm is changing thanks to cloud outsourcing which not only brings technological advantages but also facilitates inter-institutional workflows. However, communication latency is one main problem in this kind of approaches, since we are dealing with tremendous volumes of data. To minimize the impact of this issue, cache and prefetching are commonly used. The effectiveness of these mechanisms is highly dependent on their capability of accurately selecting the objects that will be needed soon.
This paper describes a pattern recognition system based on artificial neural networks with incremental learning to evaluate, from a set of usage pattern, which one fits the user behavior at a given time. The accuracy of the pattern recognition model in distinct training conditions was also evaluated.
The solution was tested with a real-world dataset and a synthesized dataset, showing that incremental learning is advantageous. Even with very immature initial models, trained with just 1 week of data samples, the overall accuracy was very similar to the value obtained when using 75% of the long-term data for training the models. Preliminary results demonstrate an effective reduction in communication latency when using the proposed solution to feed a prefetching mechanism.
The proposed approach is very interesting for cache replacement and prefetching policies due to the good results obtained since the first deployment moments.
传统上,医学影像存储库由室内基础设施支持,运营成本巨大。由于云外包,这种模式正在发生变化,云外包不仅带来技术优势,还促进了机构间的工作流程。然而,通信延迟是这类方法中的一个主要问题,因为我们处理的数据量巨大。为了最小化这个问题的影响,通常使用缓存和预取。这些机制的有效性高度依赖于它们准确选择即将需要的对象的能力。
本文描述了一种基于人工神经网络的模式识别系统,该系统具有增量学习功能,可从一组使用模式中评估在给定时间哪种模式适合用户行为。还评估了模式识别模型在不同训练条件下的准确性。
该解决方案在真实数据集和合成数据集上进行了测试,结果表明增量学习具有优势。即使初始模型非常不成熟,仅使用1周的数据样本进行训练,总体准确率也与使用75%的长期数据训练模型时获得的值非常相似。初步结果表明,使用所提出的解决方案为预取机制提供数据时,通信延迟有效降低。
由于自首次部署以来就取得了良好的效果,所提出的方法对于缓存替换和预取策略非常有意义。