101 research outputs found

    Intelligent multimedia flow transmission through heterogeneous networks using cognitive software defined networks

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    [ES] La presente tesis aborda el problema del encaminamiento en las redes definidas por software (SDN). Específicamente, aborda el problema del diseño de un protocolo de encaminamiento basado en inteligencia artificial (AI) para garantizar la calidad de servicio (QoS) en transmisiones multimedia. En la primera parte del trabajo, el concepto de SDN es introducido. Su arquitectura, protocolos y ventajas son comentados. A continuación, el estado del arte es presentado, donde diversos trabajos acerca de QoS, encaminamiento, SDN y AI son detallados. En el siguiente capítulo, el controlador SDN, el cual juega un papel central en la arquitectura propuesta, es presentado. Se detalla el diseño del controlador y se compara su rendimiento con otro controlador comúnmente utilizado. Más tarde, se describe las propuestas de encaminamiento. Primero, se aborda la modificación de un protocolo de encaminamiento tradicional. Esta modificación tiene como objetivo adaptar el protocolo de encaminamiento tradicional a las redes SDN, centrado en las transmisiones multimedia. A continuación, la propuesta final es descrita. Sus mensajes, arquitectura y algoritmos son mostrados. Referente a la AI, el capítulo 5 detalla el módulo de la arquitectura que la implementa, junto con los métodos inteligentes usados en la propuesta de encaminamiento. Además, el algoritmo inteligente de decisión de rutas es descrito y la propuesta es comparada con el protocolo de encaminamiento tradicional y con su adaptación a las redes SDN, mostrando un incremento de la calidad final de la transmisión. Finalmente, se muestra y se describe algunas aplicaciones basadas en la propuesta. Las aplicaciones son presentadas para demostrar que la solución presentada en la tesis está diseñada para trabajar en redes heterogéneas.[CA] La present tesi tracta el problema de l'encaminament en les xarxes definides per programari (SDN). Específicament, tracta el problema del disseny d'un protocol d'encaminament basat en intel·ligència artificial (AI) per a garantir la qualitat de servici (QoS) en les transmissions multimèdia. En la primera part del treball, s'introdueix les xarxes SDN. Es comenten la seva arquitectura, els protocols i els avantatges. A continuació, l'estat de l'art és presentat, on es detellen els diversos treballs al voltant de QoS, encaminament, SDN i AI. Al següent capítol, el controlador SDN, el qual juga un paper central a l'arquitectura proposta, és presentat. Es detalla el disseny del controlador i es compara el seu rendiment amb altre controlador utilitzat comunament. Més endavant, es descriuen les propostes d'encaminament. Primer, s'aborda la modificació d'un protocol d'encaminament tradicional. Aquesta modificació té com a objectiu adaptar el protocol d'encaminament tradicional a les xarxes SDN, centrat a les transmissions multimèdia. A continuació, la proposta final és descrita. Els seus missatges, arquitectura i algoritmes són mostrats. Pel que fa a l'AI, el capítol 5 detalla el mòdul de l'arquitectura que la implementa, junt amb els mètodes intel·ligents usats en la proposta d'encaminament. A més a més, l'algoritme intel·ligent de decisió de rutes és descrit i la proposta és comparada amb el protocol d'encaminament tradicional i amb la seva adaptació a les xarxes SDN, mostrant un increment de la qualitat final de la transmissió. Finalment, es mostra i es descriuen algunes aplicacions basades en la proposta. Les aplicacions són presentades per a demostrar que la solució presentada en la tesi és dissenyada per a treballar en xarxes heterogènies.[EN] This thesis addresses the problem of routing in Software Defined Networks (SDN). Specifically, the problem of designing a routing protocol based on Artificial Intelligence (AI) for ensuring Quality of Service (QoS) in multimedia transmissions. In the first part of the work, SDN is introduced. Its architecture, protocols and advantages are discussed. Then, the state of the art is presented, where several works regarding QoS, routing, SDN and AI are detailed. In the next chapter, the SDN controller, which plays the central role in the proposed architecture, is presented. The design of the controller is detailed and its performance compared to another common controller. Later, the routing proposals are described. First, a modification of a traditional routing protocol is discussed. This modification intends to adapt a traditional routing protocol to SDN, focused on multimedia transmissions. Then, the final proposal is described. Its messages, architecture and algorithms are depicted. As regards AI, chapter 5 details the module of the architecture that implements it, along with all the intelligent methods used in the routing proposal. Furthermore, the intelligent route decision algorithm is described and the final proposal is compared to the traditional routing protocol and its adaptation to SDN, showing an increment of the end quality of the transmission. Finally, some applications based on the routing proposal are described. The applications are presented to demonstrate that the proposed solution can work with heterogeneous networks.Rego Máñez, A. (2020). Intelligent multimedia flow transmission through heterogeneous networks using cognitive software defined networks [Tesis doctoral]. Universitat Politècnica de València. https://doi.org/10.4995/Thesis/10251/160483TESI

    A new proposal for trust management in wireless sensor networks based on validation

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    [EN] Due to their many advantages, WSNs are getting more and more important in the field of monitoring and control systems. Despite their many advantages WSNs have some disadvantages that need to be solved. Trust-based networking can be applied to WSNs in order to get better their performance. In this paper, we proposed a new model for trust management between sensor nodes in a WSN based on false alarms they produced. The existence of validators in the WSN supports the node to determine if the alarm is a false positive. A communication model is proposed and its messages are described. Furthermore, we have performed several tests to validate the benefits of our proposal, measuring the energy consumed by the network and each individual node in the network in five scenarios. They showed us that not trusting all of the nodes in a WSN, can have better results in the total energy consumption of the network. However, having a high number of malicious nodes causes an increment of energy consumption in the rest of the nodesRego Mañez, A.; Gkountis, C.; García-García, L.; Lloret, J. (2017). A new proposal for trust management in wireless sensor networks based on validation. International Journal of Trust Management in Computing and Communications. 4(1):1-16. doi:10.1504/IJTMCC.2017.089588S1164

    Dynamic Metric OSPF-Based Routing Protocol for Software Defined Networks

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    [EN] Routing protocols are needed in networking to find the optimal path to reach the destination. However, networks are changing both their use finality and their technology. Paradigms like Software Defined Networks (SDNs) introduce the possibility and the necessity to improve the routing protocols. In this paper, a modification of the Open Shortest Path First (OSPF) routing protocol is proposed in order to allow the protocol to change the metric calculation dynamically according to the network requirements. Experiments, which compare our proposal against the OSPF protocol, are performed in five different scenarios. In these scenarios, the performance of the multimedia traffic has been increased 33% in terms of bandwidth utilization, 80% of loss rate reduction and delay reduction on VoIP communications.This work has been partially supported by the "Ministerio de Educacion, Cultura y Deporte", through the "Ayudas para contratos predoctorales de Formacion del Profesorado Universitario FPU (Convocatoria 2015)". Grant No. FPU15/06837, by the "Ministerio de Economia y Competitividad", through the "Convocatoria 2014. Proyectos I+D - Programa Estatal de Investigacion Cientifica y Tecnica de Excelencia" in the "Subprograma Estatal de Generacion de Conocimiento", project TIN2014-57991-C3-1-P, through the "Convocatoria 2016 - Proyectos I+D+I - Programa Estatal De Investigacion, Desarrollo e Innovacion Orientada a los retos de la sociedad" (Project TEC2016-76795-C6-4-R) and through the "Convocatoria 2017 - Proyectos I+D+I - Programa Estatal de Investigacion, Desarrollo e Innovacion, convocatoria excelencia" (Project TIN2017-84802-C2-1-P).Rego Mañez, A.; Sendra, S.; Jimenez, JM.; Lloret, J. (2019). Dynamic Metric OSPF-Based Routing Protocol for Software Defined Networks. Cluster Computing. 22(3):705-720. https://doi.org/10.1007/s10586-018-2875-7S705720223Coltun, R., Ferguson, D., Moy, J.: OSPF for IPv6, RFC 5340. https://doi.org/10.17487/rfc5340 , July 2008. https://rfc-editor.org/rfc/rfc5340.txtSoftware-Defined Networking (SDN) Definition. https://www.opennetworking.org/sdn-definition/ . Accessed 15 Dec 2017Jimenez, J.M., Romero, O., Rego, A., Dilendra, A., Lloret, J.: Study of multimedia delivery over software defined networks. Netw. Protoc. Algorithms 7(4), 37–62 (2015). https://doi.org/10.5296/npa.v7i4.8794Egea, S., Rego, A., Carro, B., Sanchez-Esguevillas, A., Lloret, J.: Intelligent IoT traffic classification using novel search strategy for fast based-correlation feature selection in industrial environments. IEEE Internet Things J. 5(3), 1616–1624 (2018). https://doi.org/10.1109/JIOT.2017.2787959Rego, A., Sendra, S., Jimenez, J.M., Lloret J.: OSPF routing protocol performance in software defined networks. In: Fourth International Conference on Software Defined Systems (SDS 2017), 8–11 May 2017, Valencia, Spain, https://doi.org/10.1109/SDS.2017.7939153Sendra, S., Fernández, P.A., Quilez, M.A., Lloret, J.: Study and performance of interior gateway IP routing protocols. Netw. Protoc. Algorithms 2(4), 88–117 (2010). https://doi.org/10.5296/npa.v2i4.547Rakheja, P., Kaour, P., Gupta, A., Sharma, A.: Performance analysis of RIP, OSPF, IGRP and EIGRP routing protocols in a network. Int. J. Comput. Appl. 48(18), 6–11 (2012). https://doi.org/10.5120/7446-0401Sendra, S., Rego, A., Lloret, J., Jimenez, J.M., Romero, O.: Including artificial intelligence in a routing protocol using software defined networks. In: IEEE International Conference on Communications Workshops (ICC Workshops 2017), 21–25 May 2017, Paris, France. https://doi.org/10.1109/ICCW.2017.7962735Barbancho, J., León, C., Molina, J., Barbancho, A., SIR: a new wireless sensor network routing protocol based on artificial intelligence. In: Advanced Web and Network Technologies, and Applications. APWeb 2006. Lecture Notes in Computer Science (LNCS), vol. 3842, pp. 271–275. https://doi.org/10.1007/11610496_35Barbancho, J., León, C., Molina, F.J., Barbancho, A.: Using artificial intelligence in wireless sensor routing protocols. In: Knowledge-Based Intelligent Information and Engineering Systems. (KES 2006). Lecture Notes in Computer Science, vol. 4251, pp. 475–482. Springer, New York. https://doi.org/10.1007/11892960_58Arabshahi, P., Gary, A., Kassabalidis, I., Das, A., Narayanan, S., Sharkawi, M.E., Marks, R.J.: Adaptive routing in wireless communication networks using swarm intelligence. In: AIAA 19th Annual Satellite Communications System Conference, Toulouse, France, April 17, 2001Gunes, M., Sorges, U., Bouazizi I.: ARA-the ant-colony based routing algorithm for MANETs. In: International Conference on Parallel Processing Workshops, Vancouver, BC, Canada, 21–21 Aug 2002. https://doi.org/10.1109/ICPPW.2002.1039715Ducatelle, F., Di Caro, G.A., Gambardella, L.M.: Principles and applications of swarm intelligence for adaptive routing in telecommunications networks. Swarm Intell. 4(3), 173–198 (2010). https://doi.org/10.1007/s11721-010-0040-xRajagopalan, S., Shen, C.: ANSI: a swarm intelligence-based unicast routing protocol for hybrid ad hoc networks. J. Syst. Archit. 52(8–9), 485–504 (2006). https://doi.org/10.1016/j.sysarc.2006.02.006RFC 3561 Ad hoc On-Demand Distance Vector (AODV) Routing, July 2003. https://www.rfc-editor.org/info/rfc3561 . Accessed 08 may 2018Zungeru, A.M., Ang, L., Seng, K.P.: Classical and swarm intelligence based routing protocols for wireless sensor networks: a survey and comparison. J. Netw. Comput. Appl. 35(5), 1508–1536 (2012). https://doi.org/10.1016/j.jnca.2012.03.004Karaboga, D., Okdem, S., Ozturk, C.: Cluster based wireless sensor network routing using artificial bee colony algorithm. Wirel. Netw. 18(7), 847–860 (2012). https://doi.org/10.1007/s11276-012-0438-zGinsberg, L., Litkowski, S., Previdi, S.: IS-IS route preference for extended IP and IPv6 reachability, RFC 7775. https://doi.org/10.17487/rfc7775 , February 2016. https://www.rfc-editor.org/rfc/rfc7775.txtRekhter, Y., Li, T., Hares, S.: A border gateway protocol 4 (BGP-4), RFC 4271. https://doi.org/10.17487/rfc4271 . Jan 2006. https://rfc-editor.org/rfc/rfc4271.txtCaria, M., Das, T., Jukan, A.: Divide and conquer: partitioning OSPF networks with SDN. In: IFIP/IEEE International Symposium on Integrated Network Management (IM 2015), 11–15 May, Ottawa (ON), Canada, 2015. https://doi.org/10.1109/INM.2015.7140324Rothenberg, C.E., Nascimento, M.R., Salvador, M.R., Corrêa, C.N.A., Cunha de Lucena, S., Raszuk, R.: Revisiting routing control platforms with the eyes and muscles of software-defined networking. In: HotSDN ‘12 Proceedings of the first workshop on Hot topics in software defined networks, August 13–17 (2012), Helsinki (Finland), pp. 13–18. https://doi.org/10.1145/2342441.2342445Zhu, M., Cao, J., Pang, D., He, Z., Xu, M.: SDN-based routing for efficient message propagation in VANET, In: Wireless Algorithms, Systems, and Applications (WASA 2015), Lecture Notes in Computer Science, vol. 9204, pp. 788–797. https://doi.org/10.1007/978-3-319-21837-3_77Ye, T., Hema, T.K., Kalyanaraman, S., Vastola, K.S, Yadav S.: Minimizing packet loss by optimizing OSPF weights using online simulation. Modeling, Analysis and Simulation of Computer Telecommunications Systems, 2003. MASCOTS 2003. In: 11th IEEE/ACM International Symposium on, Orlando, FL, USA, 27 Oct 2003. https://doi.org/10.1109/MASCOT.2003.1240645O’Halloran, C.: Dynamic adaptation of OSPF interface metrics based on network load. In: 26th Irish Signals and Systems Conference (ISSC), Ireland, Jun 2015. https://doi.org/10.1109/ISSC.2015.7163767Şimşek, M., Doğan, N., Akcayol, M.A.: A new packet scheduling algorithm for real-time multimedia streaming. Netw. Protoc. Algorithms 9(1–2), 28–47 (2017). https://doi.org/10.5296/npa.v9i1-2.12410Sanchez-Iborra, R., Cano, M.D., Garcia-Haro, J.: Revisiting VoIP QoE assessment methods: are they suitable for VoLTE? Netw. Protoc. Algorithms 8(2), 39–57 (2016). https://doi.org/10.5296/npa.v8i2.912

    Software Defined Network-based control system for an efficient traffic management for emergency situations in smart cities

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    [EN] Smart cities provide new applications based on Internet of Things (loT) technology. Moreover, Software Defined Networks (SDNs) offer the possibility of controlling the network based on applications requirements. One of the main problems that arise when an emergency happens is minimizing the delay time in emergency resource forwarding so as to reduce both human and material damages. In this paper, a new control system based on the integration of SDN and loT in smart city environments is proposed. This control system actuates when an emergency happens and modifies dynamically the routes of normal and emergency urban traffic in order to reduce the time that the emergency resources need to get to the emergency area. The architecture is based on a set of loT networks composed by traffic lights, traffic cameras and an algorithm. The algorithm controls the request of resources and the modification of routes in order to ease the movement of emergency service units. Afterwards, the proposal is tested by emulating a Smart City as a SDN-utilizing Mininet. The experiments show that the delay of the emergency traffic improves in a 33% when the algorithm is running. Moreover, the energy consumed by the loT nodes is modeled and the obtained results display that it increases linearly with the number of nodes, therefore, the proposal is scalable. (C) 2018 Elsevier B.V. All rights reserved.This work has been partially supported by the " Ministerio de Educacion, Cultura y Deporte", through the "Ayudas para contratos predoctorales de Formacion del Profesorado Universitario FPU (Convocatoria 2015)". Grant number FPU15/06837, by the "Ministerio de Economia y Competitividad", through the "Convocatoria 2014. Proyectos I+D - P rograma Estatal de Investigacion Cientifica y Tecnica de Excelencia" in the "Subprograma Estatal de Generacion de Conocimiento", project TIN 2014-57991- C 3 - 1 - P and through the "Convocatoria 2016 - Proyectos I+D+I - P rograma Estatal De Investigacion, Desarrollo e Innovacion Orientada a los retos de la sociedad" (Project TEC 2016 - 76795 - C 6 - 4 - R). This work has also been partially supported by the "Ministerio de Economia y Competitividad" in the "Programa Estatal de Fomento de la Investigacion Cientifica y Tecnica de Excelencia, Subprograma Estatal de Generacion de Conocimiento" within the project under Grant TIN2017-84802-C2-1-P.Rego Mañez, A.; García-García, L.; Sendra, S.; Lloret, J. (2018). Software Defined Network-based control system for an efficient traffic management for emergency situations in smart cities. Future Generation Computer Systems. 88:243-253. https://doi.org/10.1016/j.future.2018.05.054S2432538

    Adapting reinforcement learning for multimedia transmission on SDN

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    [EN] Multimedia transmissions require a high quantity of resources to ensure their quality. In the last years, some technologies that provide a better resource management have appeared. Software defined networks (SDNs) are presented as a solution to improve this management. Furthermore, combining SDN with artificial intelligence (AI) techniques, networks are able to provide a higher performance using the same resources. In this paper, a redefinition of reinforcement learning is proposed. This model is focused on multimedia transmission in a SDN environment. Moreover, the architecture needed and the algorithm of the reinforcement learning are described. Using the Openflow protocol, several sample actions are defined in the system. Results show that using the system users perceive an increase in the image quality three times better. Moreover, the loss rate is reduced more than half the value of losses recorded when the algorithm is not applied. Regarding bandwidth, the maximum throughput increases from 987.16 kbps to 24.73 Mbps while the average bandwidth improves from 412.42 kbps to 7.83 Mbps.Ayudas para contratos predoctorales de Formación del Profesorado Universitario FPU (Convocatoria 2015), Grant/Award Number: FPU15/06837; Programa Estatal de Investigación Científica y Técnica de Excelencia (Convocatoria 2017), Grant/Award Number: TIN2017-84802-C2-1-P; Programa Estatal De Investigación, Desarrollo e Innovación Orientada a los retos de la sociedad (Convocatoria 2016), Grant/Award Number: TEC2016-76795-C6-4-R; ERANETMED, Grant/Award Number: ERANETMED3-227 SMARTWATIRRego Mañez, A.; Sendra, S.; García-García, L.; Lloret, J. (2019). Adapting reinforcement learning for multimedia transmission on SDN. Transactions on Emerging Telecommunications Technologies. 30(9):1-15. https://doi.org/10.1002/ett.3643S11530

    Incorrect Facemask-Wearing Detection Using Convolutional Neural Networks with Transfer Learning

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    [EN] The COVID-19 pandemic has been a worldwide catastrophe. Its impact, not only economically, but also socially and in terms of human lives, was unexpected. Each of the many mechanisms to fight the contagiousness of the illness has been proven to be extremely important. One of the most important mechanisms is the use of facemasks. However, the wearing the facemasks incorrectly makes this prevention method useless. Artificial Intelligence (AI) and especially facial recognition techniques can be used to detect misuses and reduce virus transmission, especially indoors. In this paper, we present an intelligent method to automatically detect when facemasks are being worn incorrectly in real-time scenarios. Our proposal uses Convolutional Neural Networks (CNN) with transfer learning to detect not only if a mask is used or not, but also other errors that are usually not taken into account but that may contribute to the virus spreading. The main problem that we have detected is that there is currently no training set for this task. It is for this reason that we have requested the participation of citizens by taking different selfies through an app and placing the mask in different positions. Thus, we have been able to solve this problem. The results show that the accuracy achieved with transfer learning slightly improves the accuracy achieved with convolutional neural networks. Finally, we have also developed an Android-app demo that validates the proposal in real scenarios.Tomás Gironés, J.; Rego Mañez, A.; Viciano-Tudela, S.; Lloret, J. (2021). Incorrect Facemask-Wearing Detection Using Convolutional Neural Networks with Transfer Learning. Healthcare. 9(8):1-17. https://doi.org/10.3390/healthcare90810501179

    Artificial intelligent system for multimedia services in smart home environments

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    [EN] Internet of Things (IoT) has introduced new applications and environments. Smart Home provides new ways of communication and service consumption. In addition, Artificial Intelligence (AI) and deep learning have improved different services and tasks by automatizing them. In this field, reinforcement learning (RL) provides an unsupervised way to learn from the environment. In this paper, a new intelligent system based on RL and deep learning is proposed for Smart Home environments to guarantee good levels of QoE, focused on multimedia services. This system is aimed to reduce the impact on user experience when the classifying system achieves a low accuracy. The experiments performed show that the deep learning model proposed achieves better accuracy than the KNN algorithm and that the RL system increases the QoE of the user up to 3.8 on a scale of 10.This work has been partially supported by the "Ministerio de Economia y Competitividad" in the "Programa Estatal de Fomento de la Investigacion Cientifica y Tecnica de Excelencia, Subprograma Estatal de Generacion de Conocimiento" within the project under Grant TIN2017-84802-C2-1-P. This work has also been partially founded by the Universitat Polite`cnica de Vale`ncia through the postdoctoral PAID-10-20 program.Rego Mañez, A.; Gonzalez Ramirez, PL.; Jimenez, JM.; Lloret, J. (2022). Artificial intelligent system for multimedia services in smart home environments. Cluster Computing. 25(3):2085-2105. https://doi.org/10.1007/s10586-021-03350-zS2085210525

    Intelligent IoT Traffic Classification Using Novel Search Strategy for Fast Based-Correlation Feature Selection in Industrial Environments

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    [EN] 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.This paper was supported in part by the Ministerio de Economia y Competitividad del Gobierno de Espana and the Fondo de Desarrollo Regional within the project Inteligencia distribuida para el control y adaptacion de redes dinamicas definidas por software under Grant TIN2014-57991-C3-1-P, in part by the Ministerio de Educacion, Cultura y Deporte, through the Ayudas para contratos predoctorales de Formacion del Profesorado Universitario FPU (Convocatoria 2015) under Grant FPU15/06837, and in part by the Ministerio de Economia y Competitividad in the Programa Estatal de Fomento de la Investigacion Cientifica y Tecnica de Excelencia, Subprograma Estatal de Generacion de Conocimiento within the Project TIN2017-84802-C2-1-P. (Corresponding author: Jaime Lloret.)Egea, S.; Rego Mañez, A.; Carro, B.; Sánchez-Esguevillas, A.; Lloret, J. (2018). Intelligent IoT Traffic Classification Using Novel Search Strategy for Fast Based-Correlation Feature Selection in Industrial Environments. IEEE Internet of Things. 5(3):1616-1624. https://doi.org/10.1109/JIOT.2017.2787959S161616245

    A robust multimedia traffic SDN-Based management system using patterns and models of QoE estimation with BRNN

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    [EN] Nowadays, network infrastructures such as Software Defined Networks (SDN) achieve a huge computational power. This allows to add a high processing on the network nodes. In this paper, a multimedia traffic management system is presented. This system is based on estimation models of Quality of Experience (QoE) and also on the traffic patterns classification. In order to achieve this, a QoE estimation method has been modeled. This method allows for classifying the multimedia traffic from multimedia transmission patterns. In order to do this, the SDN controller gathers statistics from the network. The patterns used have been defined from a lineal combination of objective QoE measurements. The model has been defined by Bayesian regularized neural networks (BRNN). From this model, the system is able to classify several kind of traffic according to the quality perceived by the users. Then, a model has been developed to determine which video characteristics need to be changed to provide the user with the best possible quality in the critical moments of the transmission. The choice of these characteristics is based on the quality of service (QoS) parameters, such as delay, jitter, loss rate and bandwidth. Moreover, it is also based on subpatterns defined by clusters from the dataset and which represents network and video characteristics. When a critical network situation is given, the model selects, by using network parameters as entries, the subpattern with the most similar network condition. The minimum Euclidean distance between these entries and the network parameters of the subpatters is calculated to perform this selection. Both models work together to build a reliable multimedia traffic management system perfectly integrated into current network infrastructures, which is able to classify the traffic and solve critical situations changing the video characteristics, by using the SDN architecture.This work has been partially supported by the "Ministerio de Educacion, Cultura y Deporte", through the "Ayudas para contratos predoctorales de Formation del Profesorado Universitario FPU (Convocatoria 2015)", grant number FPU15/06837 and by the "Ministerio de Economia y Competitividad" in the "Programa Estatal de Fomento de la Investigation Cientffica y Tecnica de Excelencia, Subprograma Estatal de Generacion de Conocimiento" within the project under Grant TIN2017-84802-C2-1-P.Canovas Solbes, A.; Rego Mañez, A.; Romero Martínez, JO.; Lloret, J. (2020). A robust multimedia traffic SDN-Based management system using patterns and models of QoE estimation with BRNN. 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    A new system to detect coronavirus social distance violation

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    In this paper, a novel solution to avoid new infections is presented. Instead of tracing users’ locations, the presence of individuals is detected by analysing the voices, and people’s faces are detected by the camera. To do this, two different Android applications were implemented. The first one uses the camera to detect people’s faces whenever the user answers or performs a phone call. Firebase Platform will be used to detect faces captured by the camera and determine its size and estimate their distance to the phone terminal. The second application uses voice biometrics to differentiate the users’ voice from unknown speakers and creates a neural network model based on 5 samples of the user’s voice. This feature will only be activated whenever the user is surfing the Internet or using other applications to prevent undesired contacts. Currently, the patient’s tracking is performed by geolocation or by using Bluetooth connection. Although face detection and voice recognition are existing methods, this paper aims to use them and integrate both in a single device. Our application cannot violate privacy since it does not save the data used to carry out the detection and does not associate this data to people
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