22 results on '"Garcia, Nuno"'
Search Results
2. A Micro-interaction Tool for Online Text Analysis
- Author
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Correia, Rita Pessoa, Silva, Bruno M. C., Jerónimo, Pedro, Garcia, Nuno, Filipe, Joaquim, Editorial Board Member, Ghosh, Ashish, Editorial Board Member, Prates, Raquel Oliveira, Editorial Board Member, Zhou, Lizhu, Editorial Board Member, Guarda, Teresa, editor, Portela, Filipe, editor, and Augusto, Maria Fernanda, editor
- Published
- 2022
- Full Text
- View/download PDF
3. Approach for the Development of a System for COVID-19 Preliminary Test
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Capris, Ticiana, Melo, Pedro, Pereira, Pedro, Morgado, José, Garcia, Nuno M., Pires, Ivan Miguel, Akan, Ozgur, Editorial Board Member, Bellavista, Paolo, Editorial Board Member, Cao, Jiannong, Editorial Board Member, Coulson, Geoffrey, Editorial Board Member, Dressler, Falko, Editorial Board Member, Ferrari, Domenico, Editorial Board Member, Gerla, Mario, Editorial Board Member, Kobayashi, Hisashi, Editorial Board Member, Palazzo, Sergio, Editorial Board Member, Sahni, Sartaj, Editorial Board Member, Shen, Xuemin (Sherman), Editorial Board Member, Stan, Mircea, Editorial Board Member, Jia, Xiaohua, Editorial Board Member, Zomaya, Albert Y., Editorial Board Member, Paiva, Sara, editor, Lopes, Sérgio Ivan, editor, Zitouni, Rafik, editor, Gupta, Nishu, editor, Lopes, Sérgio F., editor, and Yonezawa, Takuro, editor
- Published
- 2021
- Full Text
- View/download PDF
4. A Review on the Artificial Intelligence Algorithms for the Recognition of Activities of Daily Living Using Sensors in Mobile Devices
- Author
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Pires, Ivan Miguel, Marques, Gonçalo, Garcia, Nuno M., Pombo, Nuno, Flórez-Revuelta, Francisco, Zdravevski, Eftim, Spinsante, Susanna, Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, Singh, Pradeep Kumar, editor, Bhargava, Bharat K., editor, Paprzycki, Marcin, editor, Kaushal, Narottam Chand, editor, and Hong, Wei-Chiang, editor
- Published
- 2020
- Full Text
- View/download PDF
5. Identification of Activities of Daily Living Using Sensors Available in off-the-shelf Mobile Devices: Research and Hypothesis
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Pires, Ivan Miguel, Garcia, Nuno M., Pombo, Nuno, Flórez-Revuelta, Francisco, Kacprzyk, Janusz, Series editor, Lindgren, Helena, editor, De Paz, Juan F., editor, Novais, Paulo, editor, Fernández-Caballero, Antonio, editor, Yoe, Hyun, editor, Jiménez Ramírez, Andres, editor, and Villarrubia, Gabriel, editor
- Published
- 2016
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6. Identification of Daily Activites and Environments Based on the AdaBoost Method Using Mobile Device Data
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Ferreira, José M., Pires, Ivan, Marques, Gonçalo, Garcia, Nuno M., Zdravevski, Eftim, Lameski, Petre, Flórez-Revuelta, Francisco, Spinsante, Susanna, and uBibliorum
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ComputingMethodologies_PATTERNRECOGNITION ,Sensors ,Ensemble learning ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Mobile devices ,Systematic review ,Environments ,Ensemble classifiers ,Daily activities recognition - Abstract
Using the AdaBoost method may increase the accuracy and reliability of a framework for daily activities and environment recognition. Mobile devices have several types of sensors, including motion, magnetic, and location sensors, that allow accurate identification of daily activities and environment. This paper focuses on the review of the studies that use the AdaBoost method with the sensors available in mobile devices. This research identified the research works written in English about the recognition of daily activities and environment recognition using the AdaBoost method with the data obtained from the sensors available in mobile devices that were published between 2012 and 2018. Thus, 13 studies were selected and analysed from 151 identified records in the searched databases. The results proved the reliability of the method for daily activities and environment recognition, highlighting the use of several features, including the mean, standard deviation, pitch, roll, azimuth, and median absolute deviation of the signal of motion sensors, and the mean of the signal of magnetic sensors. When reported, the analysed studies presented an accuracy higher than 80% in recognition of daily activities and environments with the Adaboost method.
- Published
- 2020
7. Activities of Daily Living and Environment Recognition Using Mobile Devices
- Author
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Ferreira, José M., Pires, Ivan, Marques, Gonçalo, Garcia, Nuno M., Zdravevski, Eftim, Lameski, Petre, Flórez-Revuelta, Francisco, Spinsante, Susanna, Xu, Lina, and uBibliorum
- Subjects
Artificial neural networks ,AdaBoost ,Deep neural networks ,Activities of daily living ,Mobile devices - Abstract
Submitted by Nuno Garcia (nmgs@ubi.pt) on 2020-01-24T13:57:44Z No. of bitstreams: 1 2020 - Activities of Daily Living and Environment Recognition Using Mobile Devices A Comparative Study.pdf: 261493 bytes, checksum: d0d7bd634352d3d47cf054db90d7e5bd (MD5) Approved for entry into archive by Pessoa (pfep@ubi.pt) on 2020-01-24T15:40:43Z (GMT) No. of bitstreams: 1 2020 - Activities of Daily Living and Environment Recognition Using Mobile Devices A Comparative Study.pdf: 261493 bytes, checksum: d0d7bd634352d3d47cf054db90d7e5bd (MD5) Approved for entry into archive by Pessoa (pfep@ubi.pt) on 2020-01-24T15:45:23Z (GMT) No. of bitstreams: 1 2020 - Activities of Daily Living and Environment Recognition Using Mobile Devices A Comparative Study.pdf: 261493 bytes, checksum: d0d7bd634352d3d47cf054db90d7e5bd (MD5) Made available in DSpace on 2020-01-24T15:45:23Z (GMT). No. of bitstreams: 1 2020 - Activities of Daily Living and Environment Recognition Using Mobile Devices A Comparative Study.pdf: 261493 bytes, checksum: d0d7bd634352d3d47cf054db90d7e5bd (MD5) Previous issue date: 2020 info:eu-repo/semantics/publishedVersion
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- 2020
8. Mobile application for Inclusive Tourism.
- Author
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Ponciano, Vasco, Reinaldo Ribeiro, Fernando, Pires, Ivan Miguel, and Garcia, Nuno M.
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MOBILE app development ,PACKAGE tours ,TOURISM economics ,DIGITAL technology ,GLOBAL Positioning System ,MAGNETOMETERS - Abstract
Tourism is one of the most important economic sectors for Portugal and many countries in the world. With the emergence of low-cost aviation companies, this sector's growth has been exponential. Hence, operators, municipalities, and governments have to adapt to this new world order. A part of the world population that intends to visit has some type of disabilities. On the other hand, as the development of digital platforms, namely at the level of mobile devices, here opens many opportunities to be explored in this binomial between people with disabilities, their willingness to practice tourism, and the use of mobile devices for this purpose. This article intends to present a mobile application developed that allows the practice of inclusive tourism, using google maps and using an algorithm that helps classify the level of accessibility of each point of tourist interest. Finally, it allows the person with disabilities to know at the outset whether that point is inaccessible to its characteristics. [ABSTRACT FROM AUTHOR]
- Published
- 2021
9. Android Library for Recognition of Activities of Daily Living: Implementation Considerations, Challenges, and Solutions
- Author
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Pires, Ivan, Teixeira, Maria Cristina Canavarro, Pombo, Nuno, Garcia, Nuno M., Flórez-Revuelta, Francisco, Spinsante, Susanna, Goleva, Rossitza, Zdravevski, Eftim, Universidad de Alicante. Departamento de Tecnología Informática y Computación, Informática Industrial y Redes de Computadores, and uBibliorum
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Activities of daily living ,Computer science ,Biomedical Engineering ,Health Informatics ,02 engineering and technology ,computer.software_genre ,Android library ,Pattern recognition ,0202 electrical engineering, electronic engineering, information engineering ,Computer Science (miscellaneous) ,Cost action ,Android (operating system) ,Multimedia ,Artificial neural network ,Artificial neural networks ,Sensors ,020206 networking & telecommunications ,Data fusion ,Sensor fusion ,Recognition ,Mobile devices ,020201 artificial intelligence & image processing ,computer ,Mobile device ,Arquitectura y Tecnología de Computadores - Abstract
Background:Off-the-shelf-mobile devices have several sensors available onboard that may be used for the recognition of Activities of Daily Living (ADL) and the environments where they are performed. This research is focused on the development of Ambient Assisted Living (AAL) systems, using mobile devices for the acquisition of the different types of data related to the physical and physiological conditions of the subjects and the environments. Mobile devices with the Android Operating Systems are the least expensive and exhibit the biggest market while providing a variety of models and onboard sensors.Objective:This paper describes the implementation considerations, challenges and solutions about a framework for the recognition of ADL and the environments, provided as an Android library. The framework is a function of the number of sensors available in different mobile devices and utilizes a variety of activity recognition algorithms to provide a rapid feedback to the user.Methods:The Android library includes data fusion, data processing, features engineering and classification methods. The sensors that may be used are the accelerometer, the gyroscope, the magnetometer, the Global Positioning System (GPS) receiver and the microphone. The data processing includes the application of data cleaning methods and the extraction of features, which are used with Deep Neural Networks (DNN) for the classification of ADL and environment. Throughout this work, the limitations of the mobile devices were explored and their effects have been minimized.Results:The implementation of the Android library reported an overall accuracy between 58.02% and 89.15%, depending on the number of sensors used and the number of ADL and environments recognized. Compared with the results available in the literature, the performance of the library reported a mean improvement of 2.93%, and they do not differ at the maximum found in prior work, that based on the Student’s t-test.Conclusion:This study proves that ADL like walking, going upstairs and downstairs, running, watching TV, driving, sleeping and standing activities, and the bedroom, cooking/kitchen, gym, classroom, hall, living room, bar, library and street environments may be recognized with the sensors available in off-the-shelf mobile devices. Finally, these results may act as a preliminary research for the development of a personal digital life coach with a multi-sensor mobile device commonly used daily.
- Published
- 2018
10. Identification of Activities of Daily Living through Artificial Intelligence: an accelerometry-based approach.
- Author
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Pires, Ivan Miguel, Marques, Gonçalo, Garcia, Nuno M., and Zdravevski, Eftim
- Subjects
ACTIVITIES of daily living ,ARTIFICIAL intelligence ,PATTERN recognition systems ,SUPPORT vector machines ,MAXIMA & minima ,K-nearest neighbor classification - Abstract
The accelerometer is available on most of these mobile devices. It allows the acquisition and calculation of different physical parameters. Due to the use of pattern recognition, it also enables the identification of several Activities of Daily Living (ADL), such as walking, running, going downstairs, going upstairs, and standing. The feature extraction step performs the extraction of the five most significant distances between peaks, the average, standard deviation, variance and median of extracted peaks and raw data, and the maximum and minimum of raw data. The focus of this paper is the implementation of multiple artificial intelligence methods for the recognition of ADL, including Logistic Regression, Combined nomenclature rule inducer, Neural Network, Naive Bayes, Support Vector Machine, Decision Tree, Stochastic Gradient Descent, and k-Nearest Neighbor. The Decision tree reported the average accuracy of 85.22% between classes. This method also presents an F1-score value of 85,13% and a precision value of 85,08%. Nevertheless, the study has limitations associated with the use of mobile devices. The position and location of the device in the data collection phase need further investigation, and the system architecture demands higher energy consumption. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
11. AN EFFICIENT DATA IMPUTATION TECHNIQUE FOR HUMAN ACTIVITY RECOGNITION.
- Author
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Miguel Pires, Ivan, Hussain, Faisal, Garcia, Nuno M., and Zdravevski, Eftim
- Subjects
HUMAN activity recognition ,DETECTORS ,K-nearest neighbor classification ,MACHINE learning ,MOBILE apps - Abstract
The tremendous applications of human activity recognition are surging its span from health monitoring systems to virtual reality applications. Thus, the automatic recognition of daily life activities has become significant for numerous applications. In recent years, many datasets have been proposed to train the machine learning models for efficient monitoring and recognition of human daily living activities. However, the performance of machine learning models in activity recognition is crucially affected when there are incomplete activities in a dataset, i.e., having missing samples in dataset captures. Therefore, in this work, we propose a methodology for extrapolating the missing samples of a dataset to better recognize the human daily living activities. The proposed method efficiently pre-processes the data captures and utilizes the k-Nearest Neighbors (KNN) imputation technique to extrapolate the missing samples in dataset captures. The proposed methodology elegantly extrapolated a similar pattern of activities as they were in the real dataset. [ABSTRACT FROM AUTHOR]
- Published
- 2020
12. Validation of a method for the estimation of energy expenditure during physical activity using a mobile device accelerometer.
- Author
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Pires, Ivan Miguel, Felizardo, Virginie, Pombo, Nuno, Drobics, Mario, Garcia, Nuno M., and Flórez-Revuelta, Francisco
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ENERGY consumption ,PHYSICAL activity ,MOBILE operating systems ,ACCELEROMETERS ,SMARTPHONES - Abstract
The main goal of this paper consists on the adaption and validation of a method for the measurement of the energy expenditure during physical activities. Sensors available in a mobile device, e.g., a smartphone, a smartwatch, or others, allow the capture of several signals, which may be used to the estimation of the energy expenditure. The adaption consists in the comparison between the units of the data acquired by a tri-axial accelerometer and a mobile device accelerometer. The tests were performed by healthy people with ages between 12 and 50 years old that performed several activities, such as standing, gym (walking), climbing stairs, walking, jumping, running, playing tennis, and squatting, with a mobile device on the waist. The validation of the method showed that the energy expenditure is underestimated and super estimated in some cases, but with reliable results. The creation of a validated method for the measurement of energy expenditure during physical activities capable for the implementation in a mobile application is an important issue for increase the acceptance of the mobile applications in the market. As verified the results obtained are around 124.6 kcal/h, for walking activity, and 149.7 kcal/h, for running activity. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
13. Approach for the Development of a Framework for the Identification of Activities of Daily Living Using Sensors in Mobile Devices.
- Author
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Pires, Ivan Miguel, Garcia, Nuno M., Pombo, Nuno, Flórez-Revuelta, Francisco, and Spinsante, Susanna
- Subjects
- *
AUTOMATIC identification , *ACTIVITIES of daily living , *DATA acquisition systems , *MULTISENSOR data fusion , *PATTERN recognition systems , *CELL phones - Abstract
Sensors available on mobile devices allow the automatic identification of Activities of Daily Living (ADL). This paper describes an approach for the creation of a framework for the identification of ADL, taking into account several concepts, including data acquisition, data processing, data fusion, and pattern recognition. These concepts can be mapped onto different modules of the framework. The proposed framework should perform the identification of ADL without Internet connection, performing these tasks locally on the mobile device, taking in account the hardware and software limitations of these devices. The main purpose of this paper is to present a new approach for the creation of a framework for the recognition of ADL, analyzing the allowed sensors available in the mobile devices, and the existing methods available in the literature. [ABSTRACT FROM AUTHOR]
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- 2018
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14. A Systematic Investigation of Models for Color Image Processing in Wound Size Estimation.
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Ferreira, Filipe, Pires, Ivan Miguel, Costa, Mónica, Ponciano, Vasco, Garcia, Nuno M., Zdravevski, Eftim, Chorbev, Ivan, Mihajlov, Martin, and Celesti, Antonio
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COLOR image processing ,IMAGE analysis ,WOUNDS & injuries - Abstract
In recent years, research in tracking and assessing wound severity using computerized image processing has increased. With the emergence of mobile devices, powerful functionalities and processing capabilities have provided multiple non-invasive wound evaluation opportunities in both clinical and non-clinical settings. With current imaging technologies, objective and reliable techniques provide qualitative information that can be further processed to provide quantitative information on the size, structure, and color characteristics of wounds. These efficient image analysis algorithms help determine the injury features and the progress of healing in a short time. This paper presents a systematic investigation of articles that specifically address the measurement of wounds' sizes with image processing techniques, promoting the connection between computer science and health. Of the 208 studies identified by searching electronic databases, 20 were included in the review. From the perspective of image processing color models, the most dominant model was the hue, saturation, and value (HSV) color space. We proposed that a method for measuring the wound area must implement different stages, including conversion to grayscale for further implementation of the threshold and a segmentation method to measure the wound area as the number of pixels for further conversion to metric units. Regarding devices, mobile technology is shown to have reached the level of reliable accuracy. [ABSTRACT FROM AUTHOR]
- Published
- 2021
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- View/download PDF
15. Homogeneous Data Normalization and Deep Learning: A Case Study in Human Activity Classification.
- Author
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Pires, Ivan Miguel, Hussain, Faisal, Garcia, Nuno M., Lameski, Petre, and Zdravevski, Eftim
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HUMAN activity recognition ,DEEP learning ,HUMAN experimentation ,OLDER people - Abstract
One class of applications for human activity recognition methods is found in mobile devices for monitoring older adults and people with special needs. Recently, many studies were performed to create intelligent methods for the recognition of human activities. However, the different mobile devices in the market acquire the data from sensors at different frequencies. This paper focuses on implementing four data normalization techniques, i.e., MaxAbsScaler, MinMaxScaler, RobustScaler, and Z-Score. Subsequently, we evaluate the impact of the normalization algorithms with deep neural networks (DNN) for the classification of the human activities. The impact of the data normalization was counterintuitive, resulting in a degradation of performance. Namely, when using the accelerometer data, the accuracy dropped from about 79% to only 53% for the best normalization approach. Similarly, for the gyroscope data, the accuracy without normalization was about 81.5%, whereas with the best normalization, it was only 60%. It can be concluded that data normalization techniques are not helpful in classification problems with homogeneous data. [ABSTRACT FROM AUTHOR]
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- 2020
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16. Improving Human Activity Monitoring by Imputation of Missing Sensory Data: Experimental Study.
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Pires, Ivan Miguel, Hussain, Faisal, Garcia, Nuno M., and Zdravevski, Eftim
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HUMAN activity recognition ,MULTIPLE imputation (Statistics) ,MISSING data (Statistics) ,ACQUISITION of data - Abstract
The automatic recognition of human activities with sensors available in off-the-shelf mobile devices has been the subject of different research studies in recent years. It may be useful for the monitoring of elderly people to present warning situations, monitoring the activity of sports people, and other possibilities. However, the acquisition of the data from different sensors may fail for different reasons, and the human activities are recognized with better accuracy if the different datasets are fulfilled. This paper focused on two stages of a system for the recognition of human activities: data imputation and data classification. Regarding the data imputation, a methodology for extrapolating the missing samples of a dataset to better recognize the human activities was proposed. The K-Nearest Neighbors (KNN) imputation technique was used to extrapolate the missing samples in dataset captures. Regarding the data classification, the accuracy of the previously implemented method, i.e., Deep Neural Networks (DNN) with normalized and non-normalized data, was improved in relation to the previous results without data imputation. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
17. Analysis of the Results of Heel-Rise Test with Sensors: A Systematic Review.
- Author
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Pires, Ivan Miguel, Ponciano, Vasco, Garcia, Nuno M., and Zdravevski, Eftim
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META-analysis ,PRESSURE sensors ,DETECTORS ,GYROSCOPES ,ACCELEROMETERS ,TESTING ,PHYSICAL therapists - Abstract
Strokes are a constant concern for people and pose a major health concern. Tests that allow detection and the rehabilitation of patients have started to become more important and essential. There are several tests used by physiotherapists to speed up the recovery process of patients. This article presents a systematic review of existing studies using the Heel-Rise Test and sensors (i.e., accelerometers, gyroscopes, pressure and tilt sensors) to estimate the different levels and health statuses of individuals. It was found that the most measured parameter was related to the number of repetitions, and the maximum number of repetitions for a healthy adult is 25 repetitions. As for future work, the implementation of these methods with a simple mobile device will facilitate the different measurements on this subject. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
18. Pattern Recognition Techniques for the Identification of Activities of Daily Living Using a Mobile Device Accelerometer.
- Author
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Pires, Ivan Miguel, Marques, Gonçalo, Garcia, Nuno M., Flórez-Revuelta, Francisco, Canavarro Teixeira, Maria, Zdravevski, Eftim, Spinsante, Susanna, and Coimbra, Miguel
- Subjects
ACTIVITIES of daily living ,PATTERN recognition systems ,ACCELEROMETERS ,ARTIFICIAL neural networks ,POWER resources ,ACQUISITION of data ,CALORIC expenditure - Abstract
The application of pattern recognition techniques to data collected from accelerometers available in off-the-shelf devices, such as smartphones, allows for the automatic recognition of activities of daily living (ADLs). This data can be used later to create systems that monitor the behaviors of their users. The main contribution of this paper is to use artificial neural networks (ANN) for the recognition of ADLs with the data acquired from the sensors available in mobile devices. Firstly, before ANN training, the mobile device is used for data collection. After training, mobile devices are used to apply an ANN previously trained for the ADLs' identification on a less restrictive computational platform. The motivation is to verify whether the overfitting problem can be solved using only the accelerometer data, which also requires less computational resources and reduces the energy expenditure of the mobile device when compared with the use of multiple sensors. This paper presents a method based on ANN for the recognition of a defined set of ADLs. It provides a comparative study of different implementations of ANN to choose the most appropriate method for ADLs identification. The results show the accuracy of 85.89% using deep neural networks (DNN). [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
19. Identification of Warning Situations in Road Using Cloud Computing Technologies and Sensors Available in Mobile Devices: A Systematic Review.
- Author
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Pires, Ivan Miguel and Garcia, Nuno M.
- Subjects
META-analysis ,CLOUD computing ,DETECTORS ,MAGNETIC sensors ,IMAGE sensors ,AUTOMOBILE driving simulators ,TRANSMISSION of sound - Abstract
The use of mobile devices connected continuously to the cloud is increasing, and the development of a cloud-based solution may power the function of these devices in mobility. Several types of sensors available in the mobile devices may allow the acquisition of different kinds of data, including inertial sensors, magnetic sensors, location sensors, acoustic sensors, and imaging sensors. The primary purpose of this study is to review the methods, features, and studies related to the identification of road conditions and warning situations. We performed systematic research to discover relevant studies written in English for the identification of different situations using the sensors available in the mobile devices, published between 2011 and 2019. After that, we analyzed the remaining studies to verify its reproducibility. The major part of the studies does not report the accuracy in the detection of warning situations. As future work, we intend to develop a system based on the Centre of Portugal for the detection of warning situations, road problems, and other issues verified during driving activities. As future work, we intend to develop a system using only a mobile device for the acquisition of sensors data in the centre of Portugal. We verified that the majority of the studies were performed in big lands, but in small areas, the number of accidents and road abnormalities is also high. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
20. Promotion of Healthy Nutrition and Physical Activity Lifestyles for Teenagers: A Systematic Literature Review of The Current Methodologies.
- Author
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Villasana, María Vanessa, Pires, Ivan Miguel, Sá, Juliana, Garcia, Nuno M., Zdravevski, Eftim, Chorbev, Ivan, Lameski, Petre, and Flórez-Revuelta, Francisco
- Subjects
TEENAGERS ,PHYSICAL activity ,NUTRITION ,SMOKING cessation ,MOBILE apps - Abstract
Amid obesity problems in the young population and apparent trends of spending a significant amount of time in a stationary position, promoting healthy nutrition and physical activities to teenagers is becoming increasingly important. It can rely on different methodologies, including a paper diary and mobile applications. However, the widespread use of mobile applications by teenagers suggests that they could be a more suitable tool for this purpose. This paper reviews the methodologies for promoting physical activities to healthy teenagers explored in different studies, excluding the analysis of different diseases. We found only nine studies working with teenagers and mobile applications to promote active lifestyles, including the focus on nutrition and physical activity. Studies report using different techniques to captivate the teenagers, including questionnaires and gamification techniques. We identified the common features used in different studies, which are: paper diary, diet diary, exercise diary, notifications, diet plan, physical activity registration, gamification, smoking cessation, pictures, game, and SMS, among others. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
21. Identification of Daily Activites and Environments Based on the AdaBoost Method Using Mobile Device Data: A Systematic Review.
- Author
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Ferreira, José M., Pires, Ivan Miguel, Marques, Gonçalo, Garcia, Nuno M., Zdravevski, Eftim, Lameski, Petre, Flórez-Revuelta, Francisco, and Spinsante, Susanna
- Subjects
META-analysis ,MOTION detectors ,MAGNETIC sensors ,HUMAN activity recognition ,ECOLOGY ,IDENTIFICATION - Abstract
Using the AdaBoost method may increase the accuracy and reliability of a framework for daily activities and environment recognition. Mobile devices have several types of sensors, including motion, magnetic, and location sensors, that allow accurate identification of daily activities and environment. This paper focuses on the review of the studies that use the AdaBoost method with the sensors available in mobile devices. This research identified the research works written in English about the recognition of daily activities and environment recognition using the AdaBoost method with the data obtained from the sensors available in mobile devices that were published between 2012 and 2018. Thus, 13 studies were selected and analysed from 151 identified records in the searched databases. The results proved the reliability of the method for daily activities and environment recognition, highlighting the use of several features, including the mean, standard deviation, pitch, roll, azimuth, and median absolute deviation of the signal of motion sensors, and the mean of the signal of magnetic sensors. When reported, the analysed studies presented an accuracy higher than 80% in recognition of daily activities and environments with the Adaboost method. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
22. Non-invasive measurement of results of timed-up and go test: preliminary results
- Author
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Ponciano, Vasco, Ivan Miguel Pires, Ribeiro, Fernando Reinaldo, Garcia, Nuno M., and Pombo, Nuno
- Subjects
Timed-Up and Go test measurement ,Mobile devices ,Inertial sensors ,Physical exercises ,Elderly people ,Physiotherapy - Abstract
Submitted by Fernando Ribeiro (fribeiro@ipcb.pt) on 2019-12-08T17:41:45Z No. of bitstreams: 1 2019_Ageing_congress.pdf: 469795 bytes, checksum: 24c6461504d9a895a876bcc90542421b (MD5) Approved for entry into archive by Lurdes Grilo (lurdesgrilo@ipcb.pt) on 2019-12-09T15:43:43Z (GMT) No. of bitstreams: 1 2019_Ageing_congress.pdf: 469795 bytes, checksum: 24c6461504d9a895a876bcc90542421b (MD5) Made available in DSpace on 2019-12-16T12:11:56Z (GMT). No. of bitstreams: 1 2019_Ageing_congress.pdf: 469795 bytes, checksum: 24c6461504d9a895a876bcc90542421b (MD5) Previous issue date: 2019-05-25 info:eu-repo/semantics/publishedVersion
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