26 results on '"Doulamis, Nikolaos"'
Search Results
2. C2A-DC: A context-aware adaptive data cube framework for environmental monitoring and climate change crisis management
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Temenos, Anastasios, Temenos, Nikos, Tzortzis, Ioannis N., Rallis, Ioannis, Doulamis, Anastasios, and Doulamis, Nikolaos
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- 2024
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3. Enhancing Internet of Medical Things security with artificial intelligence: A comprehensive review
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Messinis, Sotirios, Temenos, Nikos, Protonotarios, Nicholas E., Rallis, Ioannis, Kalogeras, Dimitrios, and Doulamis, Nikolaos
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- 2024
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4. A self-sustained EV charging framework with N-step deep reinforcement learning
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Sykiotis, Stavros, Menos-Aikateriniadis, Christoforos, Doulamis, Anastasios, Doulamis, Nikolaos, and Georgilakis, Pavlos S.
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- 2023
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5. Simultaneous Precise Localization And Classification of metal rust defects for robotic-driven maintenance and prefabrication using residual attention U-Net
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Katsamenis, Iason, Doulamis, Nikolaos, Doulamis, Anastasios, Protopapadakis, Eftychios, and Voulodimos, Athanasios
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- 2022
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6. The Plegma dataset: Domestic appliance-level and aggregate electricity demand with metadata from Greece.
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Athanasoulias, Sotirios, Guasselli, Fernanda, Doulamis, Nikolaos, Doulamis, Anastasios, Ipiotis, Nikolaos, Katsari, Athina, Stankovic, Lina, and Stankovic, Vladimir
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SMART meters ,CONSUMPTION (Economics) ,ELECTRIC power consumption ,AGGREGATE demand ,ENERGY consumption ,SMART power grids - Abstract
The growing availability of smart meter data has facilitated the development of energy-saving services like demand response, personalized energy feedback, and non-intrusive-load-monitoring applications, all of which heavily rely on advanced machine learning algorithms trained on energy consumption datasets. To ensure the accuracy and reliability of these services, real-world smart meter data collection is crucial. The Plegma dataset described in this paper addresses this need bfy providing whole- house aggregate loads and appliance-level consumption measurements at 10-second intervals from 13 different households over a period of one year. It also includes environmental data such as humidity and temperature, building characteristics, demographic information, and user practice routines to enable quantitative as well as qualitative analysis. Plegma is the first high-frequency electricity measurements dataset in Greece, capturing the consumption behavior of people in the Mediterranean area who use devices not commonly included in other datasets, such as AC and electric-water boilers. The dataset comprises 218 million readings from 88 installed meters and sensors. The collected data are available in CSV format. [ABSTRACT FROM AUTHOR]
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- 2024
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7. Differentially Private Client Selection and Resource Allocation in Federated Learning for Medical Applications Using Graph Neural Networks.
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Messinis, Sotirios C., Protonotarios, Nicholas E., and Doulamis, Nikolaos
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GRAPH neural networks ,MACHINE learning ,FEDERATED learning ,DATA privacy ,RESOURCE allocation - Abstract
Federated learning (FL) has emerged as a pivotal paradigm for training machine learning models across decentralized devices while maintaining data privacy. In the healthcare domain, FL enables collaborative training among diverse medical devices and institutions, enhancing model robustness and generalizability without compromising patient privacy. In this paper, we propose DPS-GAT, a novel approach integrating graph attention networks (GATs) with differentially private client selection and resource allocation strategies in FL. Our methodology addresses the challenges of data heterogeneity and limited communication resources inherent in medical applications. By employing graph neural networks (GNNs), we effectively capture the relational structures among clients, optimizing the selection process and ensuring efficient resource distribution. Differential privacy mechanisms are incorporated, to safeguard sensitive information throughout the training process. Our extensive experiments, based on the Regensburg pediatric appendicitis open dataset, demonstrated the superiority of our approach, in terms of model accuracy, privacy preservation, and resource efficiency, compared to traditional FL methods. The ability of DPS-GAT to maintain a high and stable number of client selections across various rounds and differential privacy budgets has significant practical implications, indicating that FL systems can achieve strong privacy guarantees without compromising client engagement and model performance. This balance is essential for real-world applications where both privacy and performance are paramount. This study suggests a promising direction for more secure and efficient FL medical applications, which could improve patient care through enhanced predictive models and collaborative data utilization. [ABSTRACT FROM AUTHOR]
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- 2024
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8. Ensemble Learning for Blending Gridded Satellite and Gauge-Measured Precipitation Data.
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Papacharalampous, Georgia, Tyralis, Hristos, Doulamis, Nikolaos, and Doulamis, Anastasios
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BOOSTING algorithms ,MACHINE learning ,ARTIFICIAL neural networks ,INDEPENDENT variables ,RANDOM forest algorithms ,DATABASES - Abstract
Regression algorithms are regularly used for improving the accuracy of satellite precipitation products. In this context, satellite precipitation and topography data are the predictor variables, and gauged-measured precipitation data are the dependent variables. Alongside this, it is increasingly recognised in many fields that combinations of algorithms through ensemble learning can lead to substantial predictive performance improvements. Still, a sufficient number of ensemble learners for improving the accuracy of satellite precipitation products and their large-scale comparison are currently missing from the literature. In this study, we work towards filling in this specific gap by proposing 11 new ensemble learners in the field and by extensively comparing them. We apply the ensemble learners to monthly data from the PERSIANN (Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks) and IMERG (Integrated Multi-satellitE Retrievals for GPM) gridded datasets that span over a 15-year period and over the entire contiguous United States (CONUS). We also use gauge-measured precipitation data from the Global Historical Climatology Network monthly database, version 2 (GHCNm). The ensemble learners combine the predictions of six machine learning regression algorithms (base learners), namely the multivariate adaptive regression splines (MARS), multivariate adaptive polynomial splines (poly-MARS), random forests (RF), gradient boosting machines (GBM), extreme gradient boosting (XGBoost) and Bayesian regularized neural networks (BRNN), and each of them is based on a different combiner. The combiners include the equal-weight combiner, the median combiner, two best learners and seven variants of a sophisticated stacking method. The latter stacks a regression algorithm on top of the base learners to combine their independent predictions. Its seven variants are defined by seven different regression algorithms, specifically the linear regression (LR) algorithm and the six algorithms also used as base learners. The results suggest that sophisticated stacking performs significantly better than the base learners, especially when applied using the LR algorithm. It also beats the simpler combination methods. [ABSTRACT FROM AUTHOR]
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- 2023
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9. Interpretable Deep Learning Framework for Land Use and Land Cover Classification in Remote Sensing Using SHAP.
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Temenos, Anastasios, Temenos, Nikos, Kaselimi, Maria, Doulamis, Anastasios, and Doulamis, Nikolaos
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An interpretable deep learning framework for land use and land cover (LULC) classification in remote sensing using Shapley additive explanations (SHAPs) is introduced. It utilizes a compact convolutional neural network (CNN) model for the classification of satellite images and then feeds the results to a SHAP deep explainer so as to strengthen the classification results. The proposed framework is applied to Sentinel-2 satellite images containing 27000 images of pixel size $64 \times 64$ and operates on three-band combinations, reducing the model’s input data by 77% considering that 13 channels are available, while at the same time investigating on how different spectrum bands affect predictions on the dataset’s classes. Experimental results on the EuroSAT dataset demonstrate the CNN’s accurate classification with an overall accuracy of 94.72 %, whereas the classification accuracy on three-band combinations on each of the dataset’s classes highlights its improvement when compared to standard approaches with larger number of trainable parameters. The SHAP explainable results of the proposed framework shield the network’s predictions by showing correlation values that are relevant to the predicted class, thereby improving the classifications occurring in urban and rural areas with different land uses in the same scene. [ABSTRACT FROM AUTHOR]
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- 2023
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10. Comparison of Machine Learning Algorithms for Merging Gridded Satellite and Earth-Observed Precipitation Data.
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Papacharalampous, Georgia, Tyralis, Hristos, Doulamis, Anastasios, and Doulamis, Nikolaos
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MACHINE learning ,ARTIFICIAL neural networks ,INDEPENDENT variables ,RANDOM forest algorithms ,ERROR functions ,BOOSTING algorithms - Abstract
Gridded satellite precipitation datasets are useful in hydrological applications as they cover large regions with high density. However, they are not accurate in the sense that they do not agree with ground-based measurements. An established means for improving their accuracy is to correct them by adopting machine learning algorithms. This correction takes the form of a regression problem, in which the ground-based measurements have the role of the dependent variable and the satellite data are the predictor variables, together with topography factors (e.g., elevation). Most studies of this kind involve a limited number of machine learning algorithms and are conducted for a small region and for a limited time period. Thus, the results obtained through them are of local importance and do not provide more general guidance and best practices. To provide results that are generalizable and to contribute to the delivery of best practices, we here compare eight state-of-the-art machine learning algorithms in correcting satellite precipitation data for the entire contiguous United States and for a 15-year period. We use monthly data from the PERSIANN (Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks) gridded dataset, together with monthly earth-observed precipitation data from the Global Historical Climatology Network monthly database, version 2 (GHCNm). The results suggest that extreme gradient boosting (XGBoost) and random forests are the most accurate in terms of the squared error scoring function. The remaining algorithms can be ordered as follows, from the best to the worst: Bayesian regularized feed-forward neural networks, multivariate adaptive polynomial splines (poly-MARS), gradient boosting machines (gbm), multivariate adaptive regression splines (MARS), feed-forward neural networks and linear regression. [ABSTRACT FROM AUTHOR]
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- 2023
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11. Comparison of Tree-Based Ensemble Algorithms for Merging Satellite and Earth-Observed Precipitation Data at the Daily Time Scale.
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Papacharalampous, Georgia, Tyralis, Hristos, Doulamis, Anastasios, and Doulamis, Nikolaos
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MACHINE learning ,STATISTICAL learning ,RANDOM forest algorithms ,ALGORITHMS ,DATABASES - Abstract
Merging satellite products and ground-based measurements is often required for obtaining precipitation datasets that simultaneously cover large regions with high density and are more accurate than pure satellite precipitation products. Machine and statistical learning regression algorithms are regularly utilized in this endeavor. At the same time, tree-based ensemble algorithms are adopted in various fields for solving regression problems with high accuracy and low computational costs. Still, information on which tree-based ensemble algorithm to select for correcting satellite precipitation products for the contiguous United States (US) at the daily time scale is missing from the literature. In this study, we worked towards filling this methodological gap by conducting an extensive comparison between three algorithms of the category of interest, specifically between random forests, gradient boosting machines (gbm) and extreme gradient boosting (XGBoost). We used daily data from the PERSIANN (Precipitation Estimation from Remotely Sensed Information using Artificial Neural Networks) and the IMERG (Integrated Multi-satellitE Retrievals for GPM) gridded datasets. We also used earth-observed precipitation data from the Global Historical Climatology Network daily (GHCNd) database. The experiments referred to the entire contiguous US and additionally included the application of the linear regression algorithm for benchmarking purposes. The results suggest that XGBoost is the best-performing tree-based ensemble algorithm among those compared. Indeed, the mean relative improvements that it provided with respect to linear regression (for the case that the latter algorithm was run with the same predictors as XGBoost) are equal to 52.66%, 56.26% and 64.55% (for three different predictor sets), while the respective values are 37.57%, 53.99% and 54.39% for random forests, and 34.72%, 47.99% and 62.61% for gbm. Lastly, the results suggest that IMERG is more useful than PERSIANN in the context investigated. [ABSTRACT FROM AUTHOR]
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- 2023
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12. A Low-Cost Gamified Urban Planning Methodology Enhanced with Co-Creation and Participatory Approaches.
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Kavouras, Ioannis, Sardis, Emmanuel, Protopapadakis, Eftychios, Rallis, Ioannis, Doulamis, Anastasios, and Doulamis, Nikolaos
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Targeted nature-based small-scale interventions is an approach commonly adopted by urban developers. The public acceptance of their implementation could be improved by participation, emphasizing residents or shopkeepers located close to the areas of interest. In this work, we propose a methodology that combines 3D technology, based on open data sources, user-generated content, 3D software and game engines for both minimizing the time and cost of the whole planning process and enhancing citizen participation. The proposed schemes are demonstrated in Piraeus (Greece) and Gladsaxe (Denmark). The core findings can be summarized as follows: (a) the time and cost are minimized by using online databases, (b) the gamification of the planning process enhances the decision making process and (c) the interactivity provided by the game engine inspired the participation of non-experts in the planning process (co-creation and co-evaluation), which decentralizes and democratizes the final planning solution. [ABSTRACT FROM AUTHOR]
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- 2023
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13. A Prototype Machine Learning Tool Aiming to Support 3D Crowdsourced Cadastral Surveying of Self-Made Cities.
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Potsiou, Chryssy, Doulamis, Nikolaos, Bakalos, Nikolaos, Gkeli, Maria, Ioannidis, Charalabos, and Markouizou, Selena
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REAL property ,MACHINE learning ,INDOOR positioning systems ,DATA modeling ,MACHINE tools ,BLUETOOTH technology - Abstract
Land administration and management systems (LAMSs) have already made progress in the field of 3D Cadastre and the visualization of complex urban properties to support property markets and provide geospatial information for the sustainable management of smart cities. However, in less developed economies, with informally developed urban areas—the so-called self-made cities—the 2D LAMSs are left behind. Usually, they are less effective and mainly incomplete since a large number of informal constructions remain unregistered. This paper presents the latest results of an innovative on-going research aiming to structure, test and propose a low-cost but reliable enough methodology to support the simultaneous and fast implementation of both 2D land parcel and 3D property unit registration of informal, multi-story and unregistered constructions. An Indoor Positioning System (IPS) built upon low-cost Bluetooth technology combined with an innovative machine learning algorithm and connected with a 3D LADM-based cadastral mapping mobile application are the two key components of the technical solution under investigation. The proposed solution is tested for the first floor of a multi-room office building. The main conclusions concern the potential, usability and reliability of the method. [ABSTRACT FROM AUTHOR]
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- 2023
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14. A review of non-invasive sensors and artificial intelligence models for diabetic foot monitoring.
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Kaselimi, Maria, Protopapadakis, Eftychios, Doulamis, Anastasios, and Doulamis, Nikolaos
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DIABETIC foot ,ARTIFICIAL intelligence ,OPTICAL sensors ,DETECTORS ,TRUST - Abstract
Diabetic foot complications have multiple adverse effects in a person's quality of life. Yet, efficient monitoring schemes can mitigate or postpone any disorders, mainly by early detecting regions of interest. Nowadays, optical sensors and artificial intelligence (AI) tools can contribute efficiently to such monitoring processes. In this work, we provide information on the adopted imaging schemes and related optical sensors on this topic. The analysis considers both the physiology of the patients and the characteristics of the sensors. Currently, there are multiple approaches considering both visible and infrared bands (multiple ranges), most of them coupled with various AI tools. The source of the data (sensor type) can support different monitoring strategies and imposes restrictions on the AI tools that should be used with. This review provides a comprehensive literature review of AI-assisted DFU monitoring methods. The paper presents the outcomes of a large number of recently published scholarly articles. Furthermore, the paper discusses the highlights of these methods and the challenges for transferring these methods into a practical and trustworthy framework for sufficient remote management of the patients. [ABSTRACT FROM AUTHOR]
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- 2022
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15. Tensor-Based Learning for Detecting Abnormalities on Digital Mammograms.
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Tzortzis, Ioannis N., Davradou, Agapi, Rallis, Ioannis, Kaselimi, Maria, Makantasis, Konstantinos, Doulamis, Anastasios, and Doulamis, Nikolaos
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MAMMOGRAMS ,GENERAL Data Protection Regulation, 2016 ,ARTIFICIAL intelligence ,DEEP learning ,COMPUTER-aided diagnosis - Abstract
In this study, we propose a tensor-based learning model to efficiently detect abnormalities on digital mammograms. Due to the fact that the availability of medical data is limited and often restricted by GDPR (general data protection regulation) compliance, the need for more sophisticated and less data-hungry approaches is urgent. Accordingly, our proposed artificial intelligence framework utilizes the canonical polyadic decomposition to decrease the trainable parameters of the wrapped Rank-R FNN model, leading to efficient learning using small amounts of data. Our model was evaluated on the open source digital mammographic database INBreast and compared with state-of-the-art models in this domain. The experimental results show that the proposed solution performs well in comparison with the other deep learning models, such as AlexNet and SqueezeNet, achieving 90% ± 4% accuracy and an F1 score of 84% ± 5%. Additionally, our framework tends to attain more robust performance with small numbers of data and is computationally lighter for inference purposes, due to the small number of trainable parameters. [ABSTRACT FROM AUTHOR]
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- 2022
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16. Towards Trustworthy Energy Disaggregation: A Review of Challenges, Methods, and Perspectives for Non-Intrusive Load Monitoring.
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Kaselimi, Maria, Protopapadakis, Eftychios, Voulodimos, Athanasios, Doulamis, Nikolaos, and Doulamis, Anastasios
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TRUST ,SIGNAL processing ,MACHINE learning ,SCIENTIFIC community ,SCHOLARLY publishing - Abstract
Non-intrusive load monitoring (NILM) is the task of disaggregating the total power consumption into its individual sub-components. Over the years, signal processing and machine learning algorithms have been combined to achieve this. Many publications and extensive research works are performed on energy disaggregation or NILM for the state-of-the-art methods to reach the desired performance. The initial interest of the scientific community to formulate and describe mathematically the NILM problem using machine learning tools has now shifted into a more practical NILM. Currently, we are in the mature NILM period where there is an attempt for NILM to be applied in real-life application scenarios. Thus, the complexity of the algorithms, transferability, reliability, practicality, and, in general, trustworthiness are the main issues of interest. This review narrows the gap between the early immature NILM era and the mature one. In particular, the paper provides a comprehensive literature review of the NILM methods for residential appliances only. The paper analyzes, summarizes, and presents the outcomes of a large number of recently published scholarly articles. Furthermore, the paper discusses the highlights of these methods and introduces the research dilemmas that should be taken into consideration by researchers to apply NILM methods. Finally, we show the need for transferring the traditional disaggregation models into a practical and trustworthy framework. [ABSTRACT FROM AUTHOR]
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- 2022
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17. Novel Insights in Spatial Epidemiology Utilizing Explainable AI (XAI) and Remote Sensing.
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Temenos, Anastasios, Tzortzis, Ioannis N., Kaselimi, Maria, Rallis, Ioannis, Doulamis, Anastasios, and Doulamis, Nikolaos
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REMOTE sensing ,EPIDEMIOLOGY ,VIRAL transmission ,REMOTE-sensing images ,COVID-19 pandemic ,MULTIDIMENSIONAL databases ,URBAN planning - Abstract
The COVID-19 pandemic has affected many aspects of human life around the world, due to its tremendous outcomes on public health and socio-economic activities. Policy makers have tried to develop efficient responses based on technologies and advanced pandemic control methodologies, to limit the wide spreading of the virus in urban areas. However, techniques such as social isolation and lockdown are short-term solutions that minimize the spread of the pandemic in cities and do not invert long-term issues that derive from climate change, air pollution and urban planning challenges that enhance the spreading ability. Thus, it seems crucial to understand what kind of factors assist or prevent the wide spreading of the virus. Although AI frameworks have a very efficient predictive ability as data-driven procedures, they often struggle to identify strong correlations among multidimensional data and provide robust explanations. In this paper, we propose the fusion of a heterogeneous, spatio-temporal dataset that combine data from eight European cities spanning from 1 January 2020 to 31 December 2021 and describe atmospheric, socio-economic, health, mobility and environmental factors all related to potential links with COVID-19. Remote sensing data are the key solution to monitor the availability on public green spaces between cities in the study period. So, we evaluate the benefits of NIR and RED bands of satellite images to calculate the NDVI and locate the percentage in vegetation cover on each city for each week of our 2-year study. This novel dataset is evaluated by a tree-based machine learning algorithm that utilizes ensemble learning and is trained to make robust predictions on daily cases and deaths. Comparisons with other machine learning techniques justify its robustness on the regression metrics RMSE and MAE. Furthermore, the explainable frameworks SHAP and LIME are utilized to locate potential positive or negative influence of the factors on global and local level, with respect to our model's predictive ability. A variation of SHAP, namely treeSHAP, is utilized for our tree-based algorithm to make fast and accurate explanations. [ABSTRACT FROM AUTHOR]
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- 2022
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18. Using mHealth Technologies to Promote Public Health and Well-Being in Urban Areas with Blue-Green Solutions.
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GALLOS, Parisis, MENYCHTAS, Andreas, PANAGOPOULOS, Christos, KASELIMI, Maria, TEMENOS, Anastasios, RALLIS, Ioannis, DOULAMIS, Anastasios, DOULAMIS, Nikolaos, BIMPAS, Manthos, AGGELI, Aikaterini, PROTOPAPADAKIS, Eftychios, SARDIS, Emmanuel, and MAGLOGIANNIS, Ilias
- Abstract
European and International cities face crucial global geopolitical, economic, environmental, and other changes. All these intensify threats to and inequalities in citizens’ health. The implementation of Blue-Green Solutions in urban and rural areas have been broadly used to tackle the above challenges. The Mobile health (mHealth) technologies contribution in people’s well-being has found to be significant. In addition, several mHealth applications have been used to support patients with mental health or cardiovascular diseases with very promising results. The patients’ remote monitoring can be a valuable asset in chronic diseases management for patients suffering from diabetes, hypertension or arrhythmia, depression, asthma, allergies and others. The scope of this paper is to present the specifications, the design and the development of a mobile application which collects health-related and location data of users visiting areas with Blue-Green Solutions. The mobile application has been developed to record the citizens’ and patients’ physical activity and vital signs using wearable devices. The proposed application can also monitor patients physical, physiological, and emotional status as well as motivate them to engage in social and self-caring activities. Additional features include the analysis of the patients’ behavior to improve self-management. The “HEART by BioAsssist” application could be used as a health and other data collection tool as well as an “intelligent assistant” to monitor and promote patient’s physical activity. [ABSTRACT FROM AUTHOR]
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- 2022
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19. STAMINA: Bioinformatics Platform for Monitoring and Mitigating Pandemic Outbreaks.
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Bakalos, Nikolaos, Kaselimi, Maria, Doulamis, Nikolaos, Doulamis, Anastasios, Kalogeras, Dimitrios, Bimpas, Mathaios, Davradou, Agapi, Vlachostergiou, Aggeliki, Fotopoulos, Anaxagoras, Plakia, Maria, Karalis, Alexandros, Tsekeridou, Sofia, Anagnostopoulos, Themistoklis, Despotopoulou, Angela Maria, Bonavita, Ilaria, Petersen, Katrina, Pelepes, Leonidas, Voumvourakis, Lefteris, Anagnostou, Anastasia, and Groen, Derek
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PANDEMICS ,DATA warehousing ,BIOINFORMATICS ,PREDICTION models ,CUSTOMIZATION - Abstract
This paper presents the components and integrated outcome of a system that aims to achieve early detection, monitoring and mitigation of pandemic outbreaks. The architecture of the platform aims at providing a number of pandemic-response-related services, on a modular basis, that allows for the easy customization of the platform to address user's needs per case. This customization is achieved through its ability to deploy only the necessary, loosely coupled services and tools for each case, and by providing a common authentication, data storage and data exchange infrastructure. This way, the platform can provide the necessary services without the burden of additional services that are not of use in the current deployment (e.g., predictive models for pathogens that are not endemic to the deployment area). All the decisions taken for the communication and integration of the tools that compose the platform adhere to this basic principle. The tools presented here as well as their integration is part of the project STAMINA. [ABSTRACT FROM AUTHOR]
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- 2022
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20. COVID-19 Spatio-Temporal Evolution Using Deep Learning at a European Level.
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Kavouras, Ioannis, Kaselimi, Maria, Protopapadakis, Eftychios, Bakalos, Nikolaos, Doulamis, Nikolaos, and Doulamis, Anastasios
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DEEP learning ,SPATIOTEMPORAL processes ,BOX-Jenkins forecasting ,COVID-19 ,COVID-19 pandemic ,VIRAL transmission - Abstract
COVID-19 evolution imposes significant challenges for the European healthcare system. The heterogeneous spread of the pandemic within EU regions elicited a wide range of policies, such as school closure, transport restrictions, etc. However, the implementation of these interventions is not accompanied by the implementation of quantitative methods, which would indicate their effectiveness. As a result, the efficacy of such policies on reducing the spread of the virus varies significantly. This paper investigates the effectiveness of using deep learning paradigms to accurately model the spread of COVID-19. The deep learning approaches proposed in this paper are able to effectively map the temporal evolution of a COVID-19 outbreak, while simultaneously taking into account policy interventions directly into the modelling process. Thus, our approach facilitates data-driven decision making by utilizing previous knowledge to train models that predict not only the spread of COVID-19, but also the effect of specific policy measures on minimizing this spread. Global models at the EU level are proposed, which can be successfully applied at the national level. These models use various inputs in order to successfully model the spatio-temporal variability of the phenomenon and obtain generalization abilities. The proposed models are compared against the traditional epidemiological and Autoregressive Integrated Moving Average (ARIMA) models. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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21. ELECTRIcity: An Efficient Transformer for Non-Intrusive Load Monitoring.
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Sykiotis, Stavros, Kaselimi, Maria, Doulamis, Anastasios, and Doulamis, Nikolaos
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DEEP learning ,VERNACULAR architecture ,ELECTRIC transformers ,HOUSEHOLD appliances ,CONSUMPTION (Economics) ,ELECTRICITY - Abstract
Non-Intrusive Load Monitoring (NILM) describes the process of inferring the consumption pattern of appliances by only having access to the aggregated household signal. Sequence-to-sequence deep learning models have been firmly established as state-of-the-art approaches for NILM, in an attempt to identify the pattern of the appliance power consumption signal into the aggregated power signal. Exceeding the limitations of recurrent models that have been widely used in sequential modeling, this paper proposes a transformer-based architecture for NILM. Our approach, called ELECTRIcity, utilizes transformer layers to accurately estimate the power signal of domestic appliances by relying entirely on attention mechanisms to extract global dependencies between the aggregate and the domestic appliance signals. Another additive value of the proposed model is that ELECTRIcity works with minimal dataset pre-processing and without requiring data balancing. Furthermore, ELECTRIcity introduces an efficient training routine compared to other traditional transformer-based architectures. According to this routine, ELECTRIcity splits model training into unsupervised pre-training and downstream task fine-tuning, which yields performance increases in both predictive accuracy and training time decrease. Experimental results indicate ELECTRIcity's superiority compared to several state-of-the-art methods. [ABSTRACT FROM AUTHOR]
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- 2022
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22. Fall Detection Using Multi-Property Spatiotemporal Autoencoders in Maritime Environments.
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Katsamenis, Iason, Bakalos, Nikolaos, Karolou, Eleni Eirini, Doulamis, Anastasios, and Doulamis, Nikolaos
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DEEP learning ,VIDEO surveillance ,STREAMING video & television ,ANOMALY detection (Computer security) ,COMPUTER vision - Abstract
Man overboard is an emergency in which fast and efficient detection of the critical event is the key factor for the recovery of the victim. Its severity urges the utilization of intelligent video surveillance systems that monitor the ship's perimeter in real time and trigger the relative alarms that initiate the rescue mission. In terms of deep learning analysis, since man overboard incidents occur rarely, they present a severe class imbalance problem, and thus, supervised classification methods are not suitable. To tackle this obstacle, we follow an alternative philosophy and present a novel deep learning framework that formulates man overboard identification as an anomaly detection task. The proposed system, in the absence of training data, utilizes a multi-property spatiotemporal convolutional autoencoder that is trained only on the normal situation. We explore the use of RGB video sequences to extract specific properties of the scene, such as gradient and saliency, and utilize the autoencoders to detect anomalies. To the best of our knowledge, this is the first time that man overboard detection is made in a fully unsupervised manner while jointly learning the spatiotemporal features from RGB video streams. The algorithm achieved 97.30% accuracy and a 96.01% F1-score, surpassing the other state-of-the-art approaches significantly. [ABSTRACT FROM AUTHOR]
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- 2022
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23. Deep Recurrent Neural Networks for Ionospheric Variations Estimation Using GNSS Measurements.
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Kaselimi, Maria, Voulodimos, Athanasios, Doulamis, Nikolaos, Doulamis, Anastasios, and Delikaraoglou, Demitris
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RECURRENT neural networks ,DEEP learning ,GLOBAL Positioning System ,FEATURE extraction - Abstract
Modeling ionospheric variability throughout a proper total electron content (TEC) parameter estimation is a demanding, however, crucial, process for achieving better accuracy and rapid convergence in precise point positioning (PPP). In particular, the single-frequency PPP (SF-PPP) method lacks accuracy due to the difficulty of dealing adequately with the ionospheric error sources. In order to apply ionosphere corrections in techniques, such as SF-PPP, external information of global ionosphere maps (GIMs) is crucial. In this article, we propose a deep learning model to efficiently predict TEC values and to replace the GIM-derived data that inherently have a global character, with equal or better in accuracy regional ones. The proposed model is suitable for predicting the ionosphere delay at different locations of receiver stations. The model is tested during different periods of time, under different solar and geomagnetic conditions and for stations in various latitudes, providing robust estimations of the ionospheric activity at the regional level. Our proposed model is a hybrid model comprising of a 1-D convolutional layer used for the optimal feature extraction and stacked recurrent layers used for temporal time series modeling. Thus, the model achieves good performance in TEC modeling compared to other state-of-the-art methods. [ABSTRACT FROM AUTHOR]
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- 2022
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24. Pervasive Monitoring of Public Health and Well-Being in Urban Areas with BlueGreen Solutions.
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GALLOS, Parisis, MENYCHTAS, Andreas, PANAGOPOULOS, Christos, KASELIMI, Maria, RALLIS, Ioannis, DOULAMIS, Anastasios, DOULAMIS, Nikolaos, BIMPAS, Manthos, AGGELI, Aikaterini, PROTOPAPADAKIS, Eftychios, SARDIS, Emmanuel, and MAGLOGIANNIS, Ilias
- Abstract
The urban environment seems to affect the citizens’ health. The implementation of Blue-Green Solutions (BGS) in urban areas have been used to promote public health and citizens well-being. The aim of this paper is to present the development of an mHealth app for monitoring patients and citizens health status in areas where BGS will be applied. The “HEART by BioAsssist” application could be used as a health and other data collection tool as well as an “intelligent assistant” to monitor and promote patient’s physical activity in areas with Blue-Green Solutions. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
25. On the Exploration of Automatic Building Extraction from RGB Satellite Images Using Deep Learning Architectures Based on U-Net.
- Author
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Temenos, Anastasios, Temenos, Nikos, Doulamis, Anastasios, and Doulamis, Nikolaos
- Subjects
DEEP learning ,REMOTE-sensing images ,CONVOLUTIONAL neural networks ,URBAN planning ,DATA mining ,FEATURE extraction - Abstract
Detecting and localizing buildings is of primary importance in urban planning tasks. Automating the building extraction process, however, has become attractive given the dominance of Convolutional Neural Networks (CNNs) in image classification tasks. In this work, we explore the effectiveness of the CNN-based architecture U-Net and its variations, namely, the Residual U-Net, the Attention U-Net, and the Attention Residual U-Net, in automatic building extraction. We showcase their robustness in feature extraction and information processing using exclusively RGB images, as they are a low-cost alternative to multi-spectral and LiDAR ones, selected from the SpaceNet 1 dataset. The experimental results show that U-Net achieves a 91.9 % accuracy, whereas introducing residual blocks, attention gates, or a combination of both improves the accuracy of the vanilla U-Net to 93.6 % , 94.0 % , and 93.7 % , respectively. Finally, the comparison between U-Net architectures and typical deep learning approaches from the literature highlights their increased performance in accurate building localization around corners and edges. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
26. Multiclass Confusion Matrix Reduction Method and Its Application on Net Promoter Score Classification Problem.
- Author
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Markoulidakis, Ioannis, Rallis, Ioannis, Georgoulas, Ioannis, Kopsiaftis, George, Doulamis, Anastasios, and Doulamis, Nikolaos
- Subjects
RECEIVER operating characteristic curves ,CLASSIFICATION algorithms ,CURVES ,MACHINE learning ,KEY performance indicators (Management) ,MATRICES (Mathematics) ,CUSTOMER experience - Abstract
The current paper presents a novel method for reducing a multiclass confusion matrix into a 2 × 2 version enabling the exploitation of the relevant performance metrics and methods such as the receiver operating characteristic and area under the curve for the assessment of different classification algorithms. The reduction method is based on class grouping and leads to a special type of matrix called the reduced confusion matrix. The developed method is then exploited for the assessment of state of the art machine learning algorithms applied on the net promoter score classification problem in the field of customer experience analytics indicating the value of the proposed method in real world classification problems. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
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