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Showing papers by "Antonio Sánchez-Esguevillas published in 2018"


Journal ArticleDOI
01 Jun 2018
TL;DR: A modification of one of the most popular algorithms for feature selection, fast-based-correlation feature (FCBF), to split the feature space in fragments with the same size so as to improve the correlation and, therefore, the machine learning applications that are operating on each node.
Abstract: Internet of Things (IoT) can be combined with machine learning in order to provide intelligent applications to the network nodes. Furthermore, IoT expands these advantages and technologies to the industry. In this paper, we propose a modification of one of the most popular algorithms for feature selection, fast-based-correlation feature (FCBF). The key idea is to split the feature space in fragments with the same size. By introducing this division, we can improve the correlation and, therefore, the machine learning applications that are operating on each node. This kind of IoT applications for industry allows us to separate and prioritize the sensor data from the multimedia-related traffic. With this separation, the sensors are able to detect efficiently emergency situations and avoid both material and human damage. The results show the performance of the three FCBF-based algorithms for different problems and different classifiers, confirming the improvements achieved by our approach in terms of model accuracy and execution time.

65 citations


Journal ArticleDOI
TL;DR: The first attempt to predict video QoE based on information directly extracted from the network packets using a deep learning model is presented, based on a combination of a convolutional neural network (CNN), recurrent neural network, and Gaussian process classifier.
Abstract: Quality of experience (QoE) is the overall acceptability of an application or service, as perceived subjectively by the end user. In particular, for video quality the QoE is dependent of video transmission parameters. To monitor and control these parameters is critical in modern network management systems, but it would be better to be able to monitor the QoE itself (in terms of both interpretation and accuracy) rather than the parameters on which it depends. In this article we present the first attempt to predict video QoE based on information directly extracted from the network packets using a deep learning model. The QoE detector is based on a binary classifier (good or bad quality) for seven common classes of anomalies when watching videos (blur, ghost, etc.). Our classifier can detect anomalies at the current time instant and predict them at the next immediate instant. This classifier faces two major challenges: first, a highly unbalanced dataset with a low proportion of samples with video anomaly, and second, a small amount of training data, since it must be obtained from individual viewers under a controlled experimental setup. The proposed classifier is based on a combination of a convolutional neural network (CNN), recurrent neural network, and Gaussian process classifier. Image processing, which is the common domain for a CNN, has been expanded to QoE detection. Based on a detailed comparison, the proposed model offers better performance metrics than alternative machine learning algorithms, and can be used as a QoE monitoring function in edge computing.

38 citations


Journal ArticleDOI
TL;DR: The development of a complete case that utilises a framework to characterise emerging technologies included in the well-known Hype Cycle for Emerging Technologies, in this case the 2015 release and to analyze patterns of dissemination of these technologies on the Internet.
Abstract: This paper considers the Web as a big data container that can be used by Technology Observatories and administrations to track emerging issues and more specifically emerging technologies. It consid...

11 citations