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Search Results (284)

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28 pages, 3056 KB  
Article
Development of a Mobile Application for Visualizing the Hazard Zone During a Fire at an Industrial Enterprise Based on Cellular Automata
by Fares Abu-Abed, Yuri Matveev, Ruslan Fedyakin, Olga Zhironkina and Sergey Zhironkin
Fire 2026, 9(6), 232; https://doi.org/10.3390/fire9060232 - 1 Jun 2026
Viewed by 533
Abstract
Accurate simulation modeling of the danger zone and real-time visualization of the toxic cloud spread during a fire and explosion at an industrial facility in a nearby urban area are in demand by rescue services conducting evacuation. Using a cellular automaton method allows [...] Read more.
Accurate simulation modeling of the danger zone and real-time visualization of the toxic cloud spread during a fire and explosion at an industrial facility in a nearby urban area are in demand by rescue services conducting evacuation. Using a cellular automaton method allows us to create an optimal predictive model of the danger zone spread, combine modeling accuracy with computational speed, and consider multiple input variables and the cascading nature of an accident during visualization. The objective of this study was to develop a mobile application for calculating the parameters of the danger zone during an accident at an industrial facility caused by a toxic cloud spreading into an urban area, based on the selection of a cellular automaton algorithm. The primary objective of the study was a highly detailed visualization of the danger zone with several predicted values of toxic substance concentrations in the air. The authors developed a cellular automaton-based model, which forms the basis of the mobile application. It takes into account several variables characterizing chemicals in the explosion and fire zone, climate factors, occupancy, building parameters, and the availability of respiratory protection. The FireSoft Mobile app was developed using the Visual Studio 2022 development environment, C# 10.0, and .NET MAUI, adapted for Android 8.0 and higher. The mobile app was tested to visualize a cloud of toxic pollutants forming a hazardous zone in an urban agglomeration for cases involving an ammonia tank explosion and a large fire involving a large amount of polyvinyl chloride. The results demonstrate the app’s feasibility and effectiveness in predicting, planning, and managing evacuation measures during accidents at an industrial facility. Full article
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30 pages, 2410 KB  
Article
Hybrid Intelligent Detection Approach for Android Malware Using Gradient-Boosting Tree Ensembles and Correlation–Differential Evolution Feature Selection
by Waleed Ali
Information 2026, 17(6), 534; https://doi.org/10.3390/info17060534 - 31 May 2026
Viewed by 201
Abstract
The rapid rise in Android applications has fueled a significant surge in the creation and distribution of malicious apps by cybercriminals. Numerous tools and applications are utilized to detect Android malware apps. However, they cannot effectively detect the latest or zero-day Android malware [...] Read more.
The rapid rise in Android applications has fueled a significant surge in the creation and distribution of malicious apps by cybercriminals. Numerous tools and applications are utilized to detect Android malware apps. However, they cannot effectively detect the latest or zero-day Android malware apps because these tools rely on conventional signature-based approaches. Therefore, more advanced intelligent techniques are investigated to overcome the inherent limitations of the traditional signature-based detection techniques. Nevertheless, the use of intelligent machine learning techniques with a large number of features is resource-intensive and time-consuming in resource-constrained mobile environments. This paper proposes a novel hybrid intelligent approach for Android malware detection that integrates a two-stage Correlation–Differential Evolution-based feature selection (Corr-DE) with gradient-boosting tree ensembles, including LightGBM and XGBoost. In the first stage, a correlation-based filter is employed to reduce feature redundancy by selecting the top 30% of most relevant static and dynamic features. In the second stage, Differential Evolution is utilized to identify an optimal subset of discriminative features, thereby enhancing detection performance. Accordingly, LightGBM and XGBoost are trained effectively using the optimal features and then employed to maximize the detection performance of Android malware apps. The experimental results demonstrate that both LightGBM and XGBoost with Corr-DE feature selection achieved high levels of Android malware detection, with overall accuracy of 95.78% and 95.51%, respectively, while the LightGBM and XGBoost with Corr-DE contributed to reducing the feature space substantially by 83% (reducing the feature space from 420 to 72 features). Full article
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29 pages, 12195 KB  
Article
Unmanned Aerial System Localization Using Smartphones as a Dispersed Sensor Platform
by Fred Taylor, John Ryan and Dennis Akos
Drones 2026, 10(4), 296; https://doi.org/10.3390/drones10040296 - 17 Apr 2026
Viewed by 542
Abstract
The continued advancement of small unmanned aircraft systems (UASs) has resulted in growing concerns regarding the potential threat that UASs present. To deal with harmful or disruptive drones, techniques that can be performed using affordable, widely distributed sensor platforms would provide an immense [...] Read more.
The continued advancement of small unmanned aircraft systems (UASs) has resulted in growing concerns regarding the potential threat that UASs present. To deal with harmful or disruptive drones, techniques that can be performed using affordable, widely distributed sensor platforms would provide an immense benefit. One such sensor platform is Android smartphones, which continue to see improved sensor quality and orientation estimation while being prevalent worldwide. In this work, the results of crowdsourced drone localization experiments using a custom-built Android smartphone app will be presented. Using GPS positions and angular measurements collected from human-operated smartphones, the ability to localize a static and dynamic target will be demonstrated, as the positions of these targets are estimated from the intersection of line-of-sight vectors. The results from these tests show that the position of these targets can be computed to below 10 m using correction techniques to alleviate measurement errors introduced by environmental or human factors. The results from these tests validate the potential of using readily available smartphones as sensor platforms as an alternative to specially designed localization technology. The inclusion of environmental and human errors can significantly influence the resulting solution, but steps can be taken to alleviate their impact. Full article
(This article belongs to the Section Drone Communications)
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23 pages, 1950 KB  
Article
Mobile App Privacy Disclosures on Google Play in the Post-GDPR Context: A Large-Scale Analysis of Data Safety Section and Permissions
by Gerasimos S. Magoulas and Spyros E. Polykalas
Information 2026, 17(4), 343; https://doi.org/10.3390/info17040343 - 2 Apr 2026
Viewed by 1291
Abstract
Mobile apps are essential for communication, transactions and leisure and frequently rely on access to personal data. This study examines Google Play’s Data Safety section and declared permissions five years after the GDPR came into force, focusing on how developers disclose data collection, [...] Read more.
Mobile apps are essential for communication, transactions and leisure and frequently rely on access to personal data. This study examines Google Play’s Data Safety section and declared permissions five years after the GDPR came into force, focusing on how developers disclose data collection, sharing, security practices and deletion controls. We use metadata from 49,578 Android apps and analyze self-reported disclosures in relation to permission categories, app categories, installs and user ratings. The results show that free apps request broader permission access than paid ones and that declared permission use has gradually increased over time. In addition, 25.44% of the sampled apps had not completed any part of the Data Safety section and non-completion was associated with app age, installation band and pricing model. Among apps with completed relevant Data Safety section disclosures, 11% of developers explicitly declared that data are not encrypted in transit and 34% explicitly declared that no user-initiated data deletion mechanism is available. Category-level differences in declared data collection and sharing were modest, while the relationship between permission breadth and user ratings was small. Overall, the findings indicate that structured disclosure mechanisms can improve visibility of privacy-related information, but do not necessarily ensure its completeness or consistency. Full article
(This article belongs to the Section Information Security and Privacy)
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6 pages, 1483 KB  
Proceeding Paper
Development of an Android-Based Mobile Application for Menstrual Health and Sports Performance Tracking in Female Athletes
by Lee Fan Tan, Xuan Ning Chai, Choon Hian Goh, Kamala Krishnan and Muhammad Noh Zulfikri Mohd Jamali
Eng. Proc. 2026, 129(1), 4; https://doi.org/10.3390/engproc2026129004 - 25 Feb 2026
Viewed by 494
Abstract
Female sports science has historically relied on evidence derived largely from male cohorts, despite known menstrual-cycle-related hormonal effects on thermoregulation, metabolism, and performance in women. We developed an Android application to support female athletes in documenting menstrual health alongside self-rated sports performance, addressing [...] Read more.
Female sports science has historically relied on evidence derived largely from male cohorts, despite known menstrual-cycle-related hormonal effects on thermoregulation, metabolism, and performance in women. We developed an Android application to support female athletes in documenting menstrual health alongside self-rated sports performance, addressing an underexplored area in current mobile health tools. The app was built in the Massachusetts Institute of Technology’s App Inventor following a rapid application development process (requirements determination, user design, construction, and implementation). Implemented features include period-date recording and prediction, health and performance logging, record review, basic personalization, and phase-specific, non-personalized training and nutrition tips. Unit test results verified core functions, including date recording, period prediction, navigation, and record retrieval, and a small-sample usability assessment (n = 5) using the system usability scale indicated above-average usability. In conclusion, the application offers a practical tool for period-date and symptom tracking with integrated performance self-logging. Full article
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8 pages, 1974 KB  
Proceeding Paper
Monitoring Radio Frequency Interference Affecting GNSS Using Android Smartphones
by Javier Tegedor, Ciro Gioia, Marco Barbero, Stefano Luzardi and Gianluca Folloni
Eng. Proc. 2026, 126(1), 4; https://doi.org/10.3390/engproc2026126004 - 5 Feb 2026
Viewed by 1203
Abstract
Global Navigation Satellite Systems (GNSSs) are exploited in a wide range of applications, and their reliability and accuracy are more critical than ever. Weak GNSS signals are extremely susceptible to intentional or unintentional interference. The Joint Research Centre has explored the potential of [...] Read more.
Global Navigation Satellite Systems (GNSSs) are exploited in a wide range of applications, and their reliability and accuracy are more critical than ever. Weak GNSS signals are extremely susceptible to intentional or unintentional interference. The Joint Research Centre has explored the potential of leveraging the ubiquitous presence of Android smartphones for interference monitoring. Automatic Gain Control (AGC) measurements provided by the Android GNSS API are used for this purpose. A proof-of-concept, including an App to collect data and a back-end server for processing, has been developed and tested. The proposed approach demonstrates the potential to detect both intentional and unintentional interference. However, the approach has limitations, such as small AGC variations that cannot always be linked to GNSS interference and significant differences among smartphone models, which need to be considered for effective crowdsourcing. Full article
(This article belongs to the Proceedings of European Navigation Conference 2025)
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26 pages, 2272 KB  
Article
A Reinforcement Learning Approach for Automated Crawling and Testing of Android Apps
by Chien-Hung Liu, Shu-Ling Chen and Kun-Cheng Chan
Appl. Sci. 2026, 16(2), 1093; https://doi.org/10.3390/app16021093 - 21 Jan 2026
Viewed by 806
Abstract
With the growing global popularity of Android apps, ensuring their quality and reliability has become increasingly important, as low-quality apps can lead to poor user experiences and potential business losses. A common approach to testing Android apps involves automatically generating event sequences that [...] Read more.
With the growing global popularity of Android apps, ensuring their quality and reliability has become increasingly important, as low-quality apps can lead to poor user experiences and potential business losses. A common approach to testing Android apps involves automatically generating event sequences that interact with the app’s graphical user interface (GUI) to detect crashes. To support this, we developed ACE (Android Crawler), a tool that systematically generates events to test Android apps by automatically exploring their GUIs. However, ACE’s original heuristic-driven exploration can be inefficient in complex application states. To address this, we extend ACE with a deep reinforcement learning-based crawling strategy, called Reinforcement Learning Strategy (RLS), which tightly integrates with ACE’s GUI exploration process by learning to intelligently select GUI components and interaction actions. RLS leverages the Proximal Policy Optimization (PPO) algorithm for stable and efficient learning and incorporates an action mask to filter invalid actions, thereby reducing training time. We evaluate RLS on 15 real-world Android apps and compare its performance against the original ACE and three state-of-the-art Android testing tools. Results show that RLS improves code coverage by an average of 2.1% over ACE’s Nearest unvisited event First Search (NFS) strategy and outperforms all three baseline tools in terms of code coverage. Paired t-test analyses further confirm that these improvements are statistically significant, demonstrating its effectiveness in enhancing automated Android GUI testing. Full article
(This article belongs to the Topic Electronic Communications, IOT and Big Data, 2nd Volume)
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23 pages, 2982 KB  
Article
The Creation of Alternatives for the Built-in Apps in the Android System to Increase Productivity
by Roland Szabo
Appl. Sci. 2025, 15(24), 13279; https://doi.org/10.3390/app152413279 - 18 Dec 2025
Viewed by 634
Abstract
This paper aims to present the development, challenges, and obstacles faced when creating two reduced complexity utility applications for Android mobile devices. The purpose of this paper is to present the challenges behind the development of these applications and the issues faced during [...] Read more.
This paper aims to present the development, challenges, and obstacles faced when creating two reduced complexity utility applications for Android mobile devices. The purpose of this paper is to present the challenges behind the development of these applications and the issues faced during their creation. The first app is a simplified gallery app that tries to be as simple as possible. It only has the functionality of a photo gallery; it loads images and videos—nothing less, nothing more. The second app is the simplified file manager app, which will perform only the basic functions of a file manager (Details, New Folder, Cut, Copy, Paste, Rename, Share, and Delete). These apps were also made because of the countless functionalities that are not even used. Full article
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24 pages, 7161 KB  
Article
Markerless AR Navigation for Smart Campuses: Lightweight Machine Learning for Infrastructure-Free Wayfinding
by Elohim Ramírez-Galván, Cesar Benavides-Alvarez, Carlos Avilés-Cruz, Arturo Zúñiga-López and José Félix Serrano-Talamantes
Electronics 2025, 14(24), 4834; https://doi.org/10.3390/electronics14244834 - 8 Dec 2025
Cited by 1 | Viewed by 1519
Abstract
This paper presents a markerless augmented reality (AR) navigation system for guiding users across a university campus, independent of internet or wireless connectivity, integrating machine learning (ML) and deep learning techniques. The system employs computer vision to detect campus signage “Meeting Point” and [...] Read more.
This paper presents a markerless augmented reality (AR) navigation system for guiding users across a university campus, independent of internet or wireless connectivity, integrating machine learning (ML) and deep learning techniques. The system employs computer vision to detect campus signage “Meeting Point” and “Directory”, and classifies them through a binary classifier (BC) and convolutional neural networks (CNNs). The BC distinguishes between the two types of signs using RGB values with algorithms such as Perceptron, Bayesian classification, and k-Nearest Neighbors (KNN), while the CNN identifies the specific sign ID to link it to a campus location. Navigation routes are generated with the Floyd–Warshall algorithm, which computes the shortest path between nodes on a digital campus map. Directional arrows are then overlaid in AR on the user’s device via ARCore, updated every 200 milliseconds using sensor data and direction vectors. The prototype, developed in Android Studio, achieved over 99.5% accuracy with CNNs and 100% accuracy with the BC, even when signs were worn or partially occluded. A usability study with 27 participants showed that 85.2% successfully reached their destinations, with more than half rating the system as easy or very easy to use. Users also expressed strong interest in extending the application to other environments, such as shopping malls or airports. Overall, the solution is lightweight, scalable, and sustainable, requiring no additional infrastructure beyond existing campus signage. Full article
(This article belongs to the Section Computer Science & Engineering)
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20 pages, 1193 KB  
Article
RepackDroid: An Efficient Detection Model for Repackaged Android Applications
by Tito Leadon and Karim Elish
Information 2025, 16(12), 1075; https://doi.org/10.3390/info16121075 - 4 Dec 2025
Viewed by 1039
Abstract
Repackaged Android applications pose a significant threat to mobile ecosystems, acting as common vectors for malware distribution and intellectual property infringement. Addressing the challenges of existing repackaging detection methods—such as scalability, reliance on app pairs, and high computational costs—this paper presents a novel [...] Read more.
Repackaged Android applications pose a significant threat to mobile ecosystems, acting as common vectors for malware distribution and intellectual property infringement. Addressing the challenges of existing repackaging detection methods—such as scalability, reliance on app pairs, and high computational costs—this paper presents a novel hybrid approach that combines supervised learning and symptom discovery. We develop a lightweight feature extraction and analysis framework that leverages only 20 discriminative features, including inter-component communication (ICC) patterns, sensitive API usage, permission profiles, and a structural anomaly metric derived from string offset order. Our experiments, conducted on 8441 Android applications sourced from the RePack dataset, demonstrate the effectiveness of our approach, achieving a maximum F1 score of 85.9% and recall of 98.8% using Support Vector Machines—outperforming prior state-of-the-art models that utilized over 500 features. We also evaluate the standalone predictive power of AndroidSOO’s string offset order feature and highlight its value as a low-cost repackaging indicator. This work offers an accurate, efficient, and scalable alternative for automated detection of repackaged mobile applications in large-scale Android marketplaces. Full article
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44 pages, 1420 KB  
Review
Digital Dementia: Smart Technologies, mHealth Applications and IoT Devices, for Dementia-Friendly Environments
by Suvish, Mehrdad Ghamari and Senthilarasu Sundaram
J. Sens. Actuator Netw. 2025, 14(6), 112; https://doi.org/10.3390/jsan14060112 - 24 Nov 2025
Cited by 4 | Viewed by 3976
Abstract
The global increase in dementia cases, which is predicted to exceed 152 million by 2050, poses substantial challenges to healthcare systems and caregiving structures. Concurrently, the expansion of mobile health (mHealth) technologies offers scalable, cost-effective opportunities for dementia care. This study systematically reviews [...] Read more.
The global increase in dementia cases, which is predicted to exceed 152 million by 2050, poses substantial challenges to healthcare systems and caregiving structures. Concurrently, the expansion of mobile health (mHealth) technologies offers scalable, cost-effective opportunities for dementia care. This study systematically reviews 100 publicly available dementia-related mobile applications on the Apple App Store (iOS) and the Google Play Store (Android), categorised using the Mobile App Rating Scale (MARS), as well as the targeted end-users, Internet of Things (IoT) integration, data protection, and cost burden. Applications were evaluated for their utility in cognitive training, memory support, carer education, clinical decision-making, and emotional well-being. Findings indicate a predominance of carer resources and support tools, while clinically integrated platforms, cognitive assessments, and adaptive memory aids remain underrepresented. Most apps lack empirical validation, inclusive design, and integration with electronic health records, raising ethical concerns around data privacy, transparency, and informed consent. In parallel, the study identifies promising pathways for energy-optimised IoT systems, Artificial Intelligence (AI), and Ambient Assisted Living (AAL) technologies in fostering dementia-friendly, sustainable environments. Key gaps include limited use of low-power wearables, energy-efficient sensors, and smart infrastructure tailored to therapeutic needs. Application domains such as cognitive training (19 apps) and carer resources (28 apps) show early potential, while emerging innovations in neuroadaptive architecture and emotional computing remain underexplored. The findings emphasize the need for co-designed, evidence-based digital solutions that align with the evolving needs of people with dementia, carers, and clinicians. Future innovations must integrate sustainability principles, promote interoperability, and support global aging populations through ecologically responsible, person-centred dementia care ecosystems. Full article
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14 pages, 346 KB  
Systematic Review
Mobile Applications for Assessment and Monitoring of Breast Cancer-Related Lymphedema: A Systematic Review
by Naiany Tenório, Maria Gabriela Amaral Lima, Herbert Albérico de Sá Leitão and Diego Dantas
BioMedInformatics 2025, 5(4), 62; https://doi.org/10.3390/biomedinformatics5040062 - 10 Nov 2025
Cited by 1 | Viewed by 1738
Abstract
Introduction: The digital era has provided the development of innovative health devices that enable the precise characterization of health and disease, facilitating diagnoses and interventions. This study aimed to systematically review and verify the quality of mobile applications (apps) available for the monitoring [...] Read more.
Introduction: The digital era has provided the development of innovative health devices that enable the precise characterization of health and disease, facilitating diagnoses and interventions. This study aimed to systematically review and verify the quality of mobile applications (apps) available for the monitoring and assessment of breast cancer-related lymphedema (BCRL). Methods: A systematic search was conducted in the Apple App Store and Google Play Store for apps related to BCRL monitoring and assessment. Two independent reviewers extracted descriptive data and evaluated app quality using the validated User Mobile App Rating Scale (uMARS). Results: Out of 630 apps screened, four met the inclusion criteria and were analyzed. Two Korean apps targeted patients, providing educational content, self-assessment tools, and bilingual interfaces. Two British apps, LymVol and LymphaTech Lite, focused on volumetric measurement and clinical use, although LymVol lacked compatibility with recent Android versions. Quality assessment using the uMARS indicated that the included applications performed consistently across the evaluated domains, despite low download numbers and the absence of user ratings. Conclusions: Although mobile apps have the potential to enhance lymphedema monitoring and assessment, more accessible and scientifically validated tools are needed to ensure effective use by healthcare professionals and patients. Developers are encouraged to create accessible, linguistically inclusive smartphone apps that incorporate standardized assessment protocols and regular updates to ensure usability and accuracy. Rigorous validation studies covering reproducibility, diagnostic accuracy, and real-world clinical outcomes should be conducted by researchers to guarantee safety and reliability. Full article
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32 pages, 1239 KB  
Article
Secure Cross-Layer Mobile Sensing Framework for Real-Time Disaster Reporting and Visualisation Using a Mobile Application
by Rashid Mustafa, Jun Han, Nurul I. Sarkar and Krassie Petrova
Sensors 2025, 25(21), 6766; https://doi.org/10.3390/s25216766 - 5 Nov 2025
Cited by 1 | Viewed by 2324
Abstract
As the number of natural and man-made catastrophes has increased in recent years, there has been an increasing need for quicker and more efficient disaster response. Information from traditional sources, such as radio, television, and websites, is sometimes incomplete or delayed. While mobile [...] Read more.
As the number of natural and man-made catastrophes has increased in recent years, there has been an increasing need for quicker and more efficient disaster response. Information from traditional sources, such as radio, television, and websites, is sometimes incomplete or delayed. While mobile applications provide a means of enhancing real-time crisis communication, a secure mobile app-based solution has not been fully explored yet. In this paper, we propose a secure and scalable cross-layer disaster management system architecture. To validate the system performance, we developed a user-centred, scalable mobile application known as the disaster emergency events application (DEAPP) for real-time disaster reporting and visualization including disaster notifications and observing the affected areas on an interactive map. The solution connects a web-based backend, cloud database, and native Android mobile app via a cross-layer architecture. Role-based access control, HTTPS connection, and verified event publication all contribute to security. Moreover, Redis caching is employed to expedite data access in emergency situations. The need to verify publicly filed reports to prevent false alarms, safeguard real-time data transfer without slowing down the system, and create an intuitive user interface for individuals in high-stress circumstances are some of the issues that the project attempts to solve. The results obtained show that a mobile system that is secure, scalable, and easy to use can enhance catastrophe awareness and facilitate quicker emergency responses. For developers, researchers, and emergency organisations looking to leverage mobile technology for disaster preparedness, the findings provide helpful insights. Full article
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28 pages, 6288 KB  
Article
Advancing Sustainability Through an IoT-Driven Smart Waste Management System with Software Engineering Integration
by Reem Alnanih, Lamiaa Elrefaei and Ayman Al-Ahwal
Sustainability 2025, 17(21), 9803; https://doi.org/10.3390/su17219803 - 3 Nov 2025
Cited by 8 | Viewed by 5318
Abstract
Sustainability in software engineering encompasses environmental, human, social, and economic dimensions, each essential for ensuring software’s positive and lasting impact. This paper presents an innovative Internet of Things (IoT)-based Smart Waste Management (SWM) system. The proposed system addresses key limitations in existing solutions, [...] Read more.
Sustainability in software engineering encompasses environmental, human, social, and economic dimensions, each essential for ensuring software’s positive and lasting impact. This paper presents an innovative Internet of Things (IoT)-based Smart Waste Management (SWM) system. The proposed system addresses key limitations in existing solutions, including lack of real-time responsiveness, inefficient routing, inadequate emergency detection, and limited user-centric design. While prior studies have investigated IoT applications in SWM, challenges remain in achieving dynamic, integrated, and scalable systems for sustainable urban development. The proposed solution introduces a holistic architecture that enables real-time monitoring of waste bin levels and fire incidents through Waste Bin Level Monitoring Units (BLMUs) equipped with ultrasonic and flame sensors. Data is transmitted via Wi-Fi to a centralized City Command and Control Center (4C), allowing for automated alerts and dynamic route optimization. A dual-platform software suite supports both administrative and operational workflows: a desktop web application and a role-based Android mobile app developed in Flutter, and integrated with Google Cloud Firestore, enabling centralized data management and efficient resource allocation. We validated the system through a working prototype, demonstrating notable contributions including enhanced emergency responsiveness, optimized waste collection routes, and improved stakeholder engagement. This research contributes to the advancement of sustainable urban infrastructure by offering a scalable, data-driven SWM framework grounded in software engineering principles and aligned with smart city objectives. This paper presents an innovative IoT-based Smart Waste Management (SWM) system that addresses key limitations in existing solutions, including insufficient real-time responsiveness, inefficient routing, inadequate emergency detection, and limited user-centric design. Full article
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14 pages, 871 KB  
Article
SMAD: Semi-Supervised Android Malware Detection via Consistency on Fine-Grained Spatial Representations
by Suchul Lee and Seokmin Han
Electronics 2025, 14(21), 4246; https://doi.org/10.3390/electronics14214246 - 30 Oct 2025
Viewed by 1000
Abstract
Malware analytics suffer from scarce, delayed, and privacy-constrained labels, limiting fully supervised detection and hampering responsiveness to zero-day threats. We propose SMAD, a Semi-supervised Android Malicious App Detector that integrates a segmentation-oriented backbone—to extract pixel-level, multi-scale features from APK imagery—with a dual-branch consistency [...] Read more.
Malware analytics suffer from scarce, delayed, and privacy-constrained labels, limiting fully supervised detection and hampering responsiveness to zero-day threats. We propose SMAD, a Semi-supervised Android Malicious App Detector that integrates a segmentation-oriented backbone—to extract pixel-level, multi-scale features from APK imagery—with a dual-branch consistency objective that enforces predictive agreement between two parallel branches on the same image. We evaluate SMAD on CICMalDroid2020 under label budgets of 0.5, 0.25, and 0.125 and show that it achieves higher accuracy, macro-precision, macro-recall, and macro-F1 with smoother learning curves than supervised training, a recursive pseudo-labeling baseline, a FixMatch baseline, and a confidence-thresholded consistency ablation. A backbone ablation (replacing the dense encoder with WideResNet) indicates that pixel-level, multi-scale features under agreement contribute substantially to these gains. We observe a coverage–precision trade-off: hard confidence gating filters noise but lowers early-training performance, whereas enforcing consistency on dense, pixel-level representations yields sustained label-efficiency gains for image-based malware detection. Consequently, SMAD offers a practical path to high-utility detection under tight labeling budgets—a setting common in real-world security applications. Full article
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