Luis Miguel Soria Morillo
University of Seville
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Luis Miguel Soria Morillo.
Sensors | 2015
Luis Miguel Soria Morillo; Luis Gonzalez-Abril; Juan Antonio Ortega Ramírez; Miguel Ángel Álvarez de la Concepción
An innovative approach to physical activity recognition based on the use of discrete variables obtained from accelerometer sensors is presented. The system first performs a discretization process for each variable, which allows efficient recognition of activities performed by users using as little energy as possible. To this end, an innovative discretization and classification technique is presented based on the χ2 distribution. Furthermore, the entire recognition process is executed on the smartphone, which determines not only the activity performed, but also the frequency at which it is carried out. These techniques and the new classification system presented reduce energy consumption caused by the activity monitoring system. The energy saved increases smartphone usage time to more than 27 h without recharging while maintaining accuracy.An innovative approach to physical activity recognition based on the use of discrete variables obtained from accelerometer sensors is presented. The system first performs a discretization process for each variable, which allows efficient recognition of activities performed by users using as little energy as possible. To this end, an innovative discretization and classification technique is presented based on the χ2 distribution. Furthermore, the entire recognition process is executed on the smartphone, which determines not only the activity performed, but also the frequency at which it is carried out. These techniques and the new classification system presented reduce energy consumption caused by the activity monitoring system. The energy saved increases smartphone usage time to more than 27 h without recharging while maintaining accuracy.
Pervasive and Mobile Computing | 2017
Miguel Ángel Álvarez de la Concepción; Luis Miguel Soria Morillo; Juan Antonio Alvarez García; Luis Gonzalez-Abril
Abstract Currently, the lifestyle of elderly people is regularly monitored in order to establish guidelines for rehabilitation processes or ensure the welfare of this segment of the population. In this sense, activity recognition is essential to detect an objective set of behaviors throughout the day. This paper describes an accurate, comfortable and efficient system, which monitors the physical activity carried out by the user. An extension to an awarded activity recognition system that participated in the EvAAL 2012 and EvAAL 2013 competitions is presented. This approach uses data retrieved from accelerometer sensors to generate discrete variables and it is tested in a non-controlled environment. In order to achieve the goal, the core of the algorithm Ameva is used to develop an innovative selection, discretization and classification technique for activity recognition. Moreover, with the purpose of reducing the cost and increasing user acceptance and usability, the entire system uses only a smartphone to recover all the information required.
Archive | 2015
Juan Antonio Álvarez-García; Luis Miguel Soria Morillo; Miguel Ángel Álvarez de la Concepción; Alejandro Fernández-Montes; Juan Antonio Ortega Ramírez
Activity recognition (AR) and fall detection (FD) research areas are very related in assistance scenarios but evolve independently. Evaluate them is not trivial and the lack of FD real-world datasets implies a big issue. A protocol that fuses AR and FD is proposed to achieve a large, open and growing dataset that could, potentially, provide an enhanced understanding of the activities and fall process and the information needed to design and evaluate high-performance systems.
International Competition on Evaluating AAL Systems through Competitive Benchmarking | 2013
Miguel Ángel Álvarez de la Concepción; Luis Miguel Soria Morillo; Luis González Abril; Juan Antonio Ortega Ramírez
This paper aims to develop a cheap, comfortable and, specially, efficient system which controls the physical activity carried out by the user. For this purpose an extended approach to physical activity recognition is presented, based on the use of discrete variables which employ data from accelerometer sensors. To this end, an innovative selection, discretization and classification technique to make the recognition process in an efficient way and at low energy cost, is presented in this work based on Ameva discretization. Entire process is executed on the smartphone and on a wireless health monitoring system is used when the smartphone is not used taking into account the system energy consumption.
international conference on bioinformatics and biomedical engineering | 2015
Luis Miguel Soria Morillo; Juan Antonio Alvarez García; Luis Gonzalez-Abril; J.A. Ortega Ramírez
In this paper a new neuroscience technique is applied into Marketing, which is becoming commonly known as the field of Neuromarketing. The aim of this paper is to recognize how brain responds during the visualization of short advertising movies. Using low cost electroencephalography (EEG), brain regions used during the presentation have been studied. We may wonder about how useful it is to use neuroscience knowledge in marketing, what can neuroscience add to marketing, or why use this specific technique. By using discrete techniques over EEG frequency bands of a generated labeled dataset, C4.5 and ANN learning methods have been applied to obtain the score assigned to each ads by the user. This techniques allows to reach more than 82% of accuracy, which is an excellent result taking into account the kind of low-cost EEG sensors used.
International Competition on Evaluating AAL Systems through Competitive Benchmarking | 2012
Luis Miguel Soria Morillo; Luis Gonzalez-Abril; Miguel Ángel Álvarez de la Concepción; Juan Antonio Ortega Ramírez
This article aims to develop a minimally intrusive system of care and monitoring. Furthermore, the goal is to get a cheap, comfortable and, especially, efficient system which controls the physical activity carried out by the user. For this purpose an innovative approach to physical activity recognition is presented, based on the use of discrete variables which employ data from accelerometer sensors. To this end, an innovative discretization and classification technique to make the recognition process in an efficient way and at low energy cost, is presented in this work based on the χ 2 distribution. Entire process is executed on the smartphone, by means of taking the system energy consumption into account, thereby increasing the battery lifetime and minimizing the device recharging frequency.
Archive | 2016
W. Daniel Scherz; Luis Miguel Soria Morillo; Ralf Seepold
Stress is a recognized as a predominant disease with growing costs of treatment. The approach presented here is aimed to detect stress using a light weighted, mobile, cheap and easy to use system. The result shows that stress can be detected even in case a person’s natural bio vital data is out of the main range. The system enables storage of measured data, while maintaining communication channels of online and post-processing.
Archive | 2016
Luis Miguel Soria Morillo; Luis Gonzalez-Abril; Juan Antonio Ortega Ramírez
A methodology to quantify the dependence between features using the Ameva discretization algorithm and the advantages of qualitative models is presented in this paper. This approach will be applied over medical data sets. A comparison among Ameva and other related works has been done. The results, as will be depth explained in this paper, show that Ameva-based methodology can be used to determine the dependence between features in a fast and understandable way from data sets with a high number of attributes and low number of instances. This is a quite important feature in genomic environments among others. This methodology has been applied to some well-known medical data sets and the results obtained shown that is a good alternative to other established algorithms in terms of clarity and computational cost.
Artificial Intelligence Review | 2013
Miguel Ángel Álvarez de la Concepción; Luis González Abril; Luis Miguel Soria Morillo; Juan Antonio Ortega Ramírez
A lot of significant data describing the behavior or/and actions of systems can be collected in several domains. These data define some aspects, called features, that can be clustered in several classes. A qualitative or quantitative value for each feature is stored from measurements or observations. In this paper, the problem of finding independent features for getting the best accuracy on classification problems is considered. Obtaining these features is the main objective of this work, where an automatic method to select features is proposed. The method extends the functionality of Ameva coefficient to use it in other tasks of machine learning where it has not been defined.
Biomedical Engineering Online | 2016
Luis Miguel Soria Morillo; Juan Antonio Álvarez-García; Luis Gonzalez-Abril; Juan Antonio Ortega Ramírez