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Adewole, K. S., Persson, J. A., Jacobsson, A., Akin, E., Shokrollahi, A., Malekian, R., . . . Valtonen Örnhag, M. (2025). A Systematic Literature Review of Privacy Related to Sensing in Smart Buildings. IEEE Access, 13, 164358-164394
Open this publication in new window or tab >>A Systematic Literature Review of Privacy Related to Sensing in Smart Buildings
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2025 (English)In: IEEE Access, E-ISSN 2169-3536, Vol. 13, p. 164358-164394Article, review/survey (Refereed) Published
Abstract [en]

The concept of smart building is based on the deployment of Internet of Things (IoT) technologies to develop various building applications and services. Aided by the proliferation of smart devices, research in building automation has grown significantly. Nevertheless, these smart devices are integrated with sensors that can collect and share sensitive data and private information related to the building occupants, exposing them to a variety of privacy threats. Although research efforts to promote the development of privacy-aware solutions for smart buildings have been on the rise, a comprehensive review that summarizes these studies is lacking in the literature. This paper provides an extensive review of the studies related to sensing in smart buildings. It highlights privacy issues connected to sensing in smart buildings, provides mitigation strategies that can be deployed to minimize occupants’ privacy invasions, and discusses future research directions towards realising privacy-aware smart buildings. To fulfill the aim of this study, five research questions are formulated, which enable systematic navigation through existing studies related to the topic. These research questions are directed to providing answers to privacy related to data leakage, privacy connected to sensor types, privacy related to different applications, privacy concerns with sensor deployment locations and building types, privacy issues with data processing methods, and to highlight mitigation strategies for reducing privacy invasion. It further discusses the technical approaches, general principles, and design choices for privacy-aware applications which are relevant for guiding relevant stakeholders.

Place, publisher, year, edition, pages
Institute of Electrical and Electronics Engineers (IEEE), 2025
Keywords
deep learning, intrusive sensing, machine learning, non-intrusive sensing, privacy, privacy mitigation, semi-intrusive, sensing, sensor fusion, sensors, Smart building
National Category
Computer Sciences
Identifiers
urn:nbn:se:mau:diva-79873 (URN)10.1109/ACCESS.2025.3611344 (DOI)001579050200033 ()2-s2.0-105016526471 (Scopus ID)
Available from: 2025-10-02 Created: 2025-10-02 Last updated: 2025-10-27Bibliographically approved
Shokrollahi, A., Karlsson, F., Malekian, R., Persson, J. A. & Sarkheyli-Hägele, A. (2025). Non-invasive occupancy estimation and space utilization in smart buildings: Leveraging machine learning with PIR sensors and booking data. Internet of Things: Engineering Cyber Physical Human Systems, 34, Article ID 101777.
Open this publication in new window or tab >>Non-invasive occupancy estimation and space utilization in smart buildings: Leveraging machine learning with PIR sensors and booking data
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2025 (English)In: Internet of Things: Engineering Cyber Physical Human Systems, E-ISSN 2542-6605, Vol. 34, article id 101777Article in journal (Refereed) Published
Abstract [en]

Occupancy estimation in smart buildings is essential for optimizing resource usage and enhancing operational efficiency. Existing estimation methods predominantly rely on cameras or advanced sensor fusion techniques, which, while accurate, are often expensive, invasive, and raise privacy concerns. Additionally, these approaches frequently require extra hardware, increasing installation complexity and operational costs. A significant gap in the literature lies in the limited use of existing smart building infrastructure, such as detection systems and booking data, for people counting. This study addresses these limitations by exclusively utilizing two binary PIR sensors (in-door and in-room) and booking data. Since PIR sensors and booking systems are already integrated into most smart building infrastructures, leveraging these existing resources helps reduce costs and simplifies implementation. The primary goal is to estimate the number of people between each in-door sensor trigger using machine learning models by incorporating people counting levels and time thresholds. Among the evaluated machine learning algorithms, the Extra Trees Classifier delivered strong performance, achieving 68.5% accuracy when the estimated occupancy differed from the actual count by at most one person, and 81.56% with a tolerance of two. These results are based on periods when the room was occupied. When both occupied and unoccupied periods were included, the accuracy was 96.10% for ±1 tolerance. Moreover, incorporating booking data enhanced people counting accuracy by 4%. The study also explores the method's ability to identify underutilization and overutilization by comparing estimated occupancy with booking records and seating capacity, thereby supporting enhanced space management in smart buildings.

Place, publisher, year, edition, pages
Elsevier, 2025
Keywords
Booking information, Machine learning, Occupancy estimation, People counting, PIR sensors, Smart buildings, Space utilization
National Category
Computer and Information Sciences
Identifiers
urn:nbn:se:mau:diva-80013 (URN)10.1016/j.iot.2025.101777 (DOI)001587516700001 ()2-s2.0-105017464561 (Scopus ID)
Available from: 2025-10-14 Created: 2025-10-14 Last updated: 2025-10-15Bibliographically approved
Shokrollahi, A., Karlsson, F., Malekian, R., Persson, J. A. & Sarkheyli-Hägele, A. (2025). Non-Invasive People Counting in Smart Buildings: Employing Machine Learning with Binary PIR Sensors. In: Ana Paula Rocha; Luc Steels; H. Jaap van den Herik (Ed.), Proceedings of the 14th International Conference on Agents and Artificial Intelligence: Volume 3: ICAART. Paper presented at 17th International Conference on Agents and Artificial Intelligence, Porto, Portugal, February 23-25, 2025 (pp. 394-405). INSTICC
Open this publication in new window or tab >>Non-Invasive People Counting in Smart Buildings: Employing Machine Learning with Binary PIR Sensors
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2025 (English)In: Proceedings of the 14th International Conference on Agents and Artificial Intelligence: Volume 3: ICAART / [ed] Ana Paula Rocha; Luc Steels; H. Jaap van den Herik, INSTICC , 2025, p. 394-405Conference paper, Published paper (Refereed)
Abstract [en]

People counting in smart buildings is crucial for the efficient management of building systems such as energy, space allocation, efficiency, and occupant comfort. This study investigates the use of two non-invasive binary Passive Infrared (PIR) sensors for estimating the number of people in seven office rooms with different people counting intervals. Previous studies often relied on sensor fusion or more complex signal-based PIR sensors, which increased hardware costs, raised privacy concerns, and added installation complexity. Our approach addresses these limitations by utilizing fewer sensors, reducing hardware costs, and simplifying installation, making it scalable and flexible for different room configurations, while also ensuring high consideration of privacy. Additionally, binary PIR sensors are typically part of smart building systems, eliminating the need for additional sensors. We employed several machine learning methods to analyze motion detected by binary PIR sensors, imp roving the accuracy of people counting estimates. We analyzed important features by extracting event count, duration, and density from sensor data, along with features from the room’s shape, to estimate the number of people. We used different machine learning models for estimating the number of people. Models like Gradient Boosting, XGBoost, MLP, and LGBM demonstrated superior performance for their strong ability to handle complex, non-linear relationships in sensor data, high-dimensional datasets, and imbalanced data, which are common challenges in people counting tasks using PIR sensors. These models were evaluated using performance metrics such as accuracy and F1-score. Additionally, the results show that features such as passage events and the number of detected events, combined with machine learning algorithms, can achieve good accuracy and reliability in people counting.

Place, publisher, year, edition, pages
INSTICC, 2025
Series
ICAART, ISSN 2184-3589, E-ISSN 2184-433X
Keywords
Smart Buildings, Occupancy Information, People Counting, Binary PIR Sensors, Machine Learning, Non-Invasive Sensors
National Category
Signal Processing
Identifiers
urn:nbn:se:mau:diva-75263 (URN)10.5220/0013141800003890 (DOI)2-s2.0-105001977209 (Scopus ID)978-989-758-737-5 (ISBN)
Conference
17th International Conference on Agents and Artificial Intelligence, Porto, Portugal, February 23-25, 2025
Available from: 2025-04-08 Created: 2025-04-08 Last updated: 2025-10-15Bibliographically approved
Kołpa, P., Adewole, K. S., Persson, J. A. & Karlsson, F. (2025). Unsupervised Transformer-Based Anomaly Detection for IoT Networks. In: Proceedings - 2025 12th International Conference on Future Internet of Things and Cloud, FiCloud 2025: . Paper presented at 12th International Conference on Future Internet of Things and Cloud, FiCloud 2025, 11-13 Aug 2025, Istanbul, Türkiye (pp. 177-184). Institute of Electrical and Electronics Engineers Inc.
Open this publication in new window or tab >>Unsupervised Transformer-Based Anomaly Detection for IoT Networks
2025 (English)In: Proceedings - 2025 12th International Conference on Future Internet of Things and Cloud, FiCloud 2025, Institute of Electrical and Electronics Engineers Inc. , 2025, p. 177-184Conference paper, Published paper (Refereed)
Abstract [en]

The integration of Internet of Things (IoT) networks and anomaly detection systems can enhance and improve spaces such as smart offices. By including anomaly detection, the reliability can increase and systems can become more useful. In this paper, we present an unsupervised transformer-based model capable of detecting anomalies in multivariate IoT sensor data, optimized for edge deployment. Through the use of real-world data provided by Sony's smart office system called Nimway, the model applies a reconstruction-based approach with multi-head attention to capture temporal and contextual dependencies. The model has been evaluated on test dataset, full dataset, and a synthetic anomaly dataset. The proposed transformer detected 65 anomalous data points distributed in 7 anomaly groups on test dataset, and 169 anomalies in 23 anomaly groups in the full dataset. By incorporating a dynamic quantization, model size has been reduced by 75% (to 1.14MB), which makes it more suitable for edge deployment and enables faster inference in realtime smart office environments. The quantized model achieved the test loss of 0.0495 (Mean Absolute Error). Moreover, models with and without quantization achieved the same performance by correctly flagging 10 out of 15 anomalies, indicating that the size reduction did not affect the model's accuracy. Preliminary results of attention-based feature importance visualization offer early insights into the features that explain the anomalies. Although the work is still in progress, this study addresses important aspects of IoT anomaly detection such as resource constraint, unsupervised learning and contextual anomalies.

Place, publisher, year, edition, pages
Institute of Electrical and Electronics Engineers Inc., 2025
Keywords
Anomaly Detection, Edge Computing, Internet of Things (IoT), Smart Offices, Transformer Model, Unsupervised Learning
National Category
Computer Sciences
Identifiers
urn:nbn:se:mau:diva-80845 (URN)10.1109/FiCloud66139.2025.00032 (DOI)2-s2.0-105022013805 (Scopus ID)9798331554378 (ISBN)
Conference
12th International Conference on Future Internet of Things and Cloud, FiCloud 2025, 11-13 Aug 2025, Istanbul, Türkiye
Available from: 2025-11-25 Created: 2025-11-25 Last updated: 2025-11-28Bibliographically approved
Tegen, A., Davidsson, P. & Persson, J. A. (2024). Activity Recognition through Interactive Machine Learning in a Dynamic Sensor Setting. Personal and Ubiquitous Computing, 28(1), 273-286
Open this publication in new window or tab >>Activity Recognition through Interactive Machine Learning in a Dynamic Sensor Setting
2024 (English)In: Personal and Ubiquitous Computing, ISSN 1617-4909, E-ISSN 1617-4917, Vol. 28, no 1, p. 273-286Article in journal (Refereed) Published
Abstract [en]

The advances in Internet of things lead to an increased number of devices generating and streaming data. These devices can be useful data sources for activity recognition by using machine learning. However, the set of available sensors may vary over time, e.g. due to mobility of the sensors and technical failures. Since the machine learning model uses the data streams from the sensors as input, it must be able to handle a varying number of input variables, i.e. that the feature space might change over time. Moreover, the labelled data necessary for the training is often costly to acquire. In active learning, the model is given a budget for requesting labels from an oracle, and aims to maximize accuracy by careful selection of what data instances to label. It is generally assumed that the role of the oracle only is to respond to queries and that it will always do so. In many real-world scenarios however, the oracle is a human user and the assumptions are simplifications that might not give a proper depiction of the setting. In this work we investigate different interactive machine learning strategies, out of which active learning is one, which explore the effects of an oracle that can be more proactive and factors that might influence a user to provide or withhold labels. We implement five interactive machine learning strategies as well as hybrid versions of them and evaluate them on two datasets. The results show that a more proactive user can improve the performance, especially when the user is influenced by the accuracy of earlier predictions. The experiments also highlight challenges related to evaluating performance when the set of classes is changing over time.

Place, publisher, year, edition, pages
Springer, 2024
Keywords
machine learning, interactive machine learning, active learning, machine teaching, online learning, sensor data
National Category
Other Computer and Information Science Computer Sciences
Identifiers
urn:nbn:se:mau:diva-17434 (URN)10.1007/s00779-020-01414-2 (DOI)000538990600002 ()2-s2.0-85086152913 (Scopus ID)
Note

Correction available: https://doi.org/10.1007/s00779-020-01465-5

Available from: 2020-06-07 Created: 2020-06-07 Last updated: 2024-09-17Bibliographically approved
Jevinger, Å., Zhao, C., Persson, J. A. & Davidsson, P. (2024). Artificial intelligence for improving public transport: a mapping study. Public Transport, 16(1), 99-158
Open this publication in new window or tab >>Artificial intelligence for improving public transport: a mapping study
2024 (English)In: Public Transport, ISSN 1866-749X, E-ISSN 1613-7159, Vol. 16, no 1, p. 99-158Article in journal (Refereed) Published
Abstract [en]

The objective of this study is to provide a better understanding of the potential of using Artificial Intelligence (AI) to improve Public Transport (PT), by reviewing research literature. The selection process resulted in 87 scientific publications constituting a sample of how AI has been applied to improve PT. The review shows that the primary aims of using AI are to improve the service quality or to better understand traveller behaviour. Train and bus are the dominant modes of transport investigated. Furthermore, AI is mainly used for three tasks; the most frequent one is prediction, followed by an estimation of the current state, and resource allocation, including planning and scheduling. Only two studies concern automation; all the others provide different kinds of decision support for travellers, PT operators, PT planners, or municipalities. Most of the reviewed AI solutions require significant amounts of data related to the travellers and the PT system. Machine learning is the most frequently used AI technology, with some studies applying reasoning or heuristic search techniques. We conclude that there still remains a great potential of using AI to improve PT waiting to be explored, but that there are also some challenges that need to be considered. They are often related to data, e.g., that large datasets of high quality are needed, that substantial resources and time are needed to pre-process the data, or that the data compromise personal privacy. Further research is needed about how to handle these issues efficiently.

Place, publisher, year, edition, pages
Springer, 2024
Keywords
Artifcial intelligence · Machine learning · Public transit · Mass transit · Public transport · Literature review
National Category
Computer Sciences Transport Systems and Logistics
Research subject
Transportation studies
Identifiers
urn:nbn:se:mau:diva-64419 (URN)10.1007/s12469-023-00334-7 (DOI)001104065400001 ()2-s2.0-85177171423 (Scopus ID)
Projects
AI and public transport: potential and hindrances
Funder
Vinnova, VINNOVA
Note

Ytterligare finansiär: K2 - The Swedish Knowledge Centre for Public Transport

Available from: 2023-12-14 Created: 2023-12-14 Last updated: 2024-04-11Bibliographically approved
Shokrollahi, A., Persson, J. A., Malekian, R., Sarkheyli-Hägele, A. & Karlsson, F. (2024). Passive Infrared Sensor-Based Occupancy Monitoring in Smart Buildings: A Review of Methodologies and Machine Learning Approaches. Sensors, 24(5), Article ID 1533.
Open this publication in new window or tab >>Passive Infrared Sensor-Based Occupancy Monitoring in Smart Buildings: A Review of Methodologies and Machine Learning Approaches
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2024 (English)In: Sensors, E-ISSN 1424-8220, Vol. 24, no 5, article id 1533Article in journal (Refereed) Published
Abstract [en]

Buildings are rapidly becoming more digitized, largely due to developments in the internet of things (IoT). This provides both opportunities and challenges. One of the central challenges in the process of digitizing buildings is the ability to monitor these buildings' status effectively. This monitoring is essential for services that rely on information about the presence and activities of individuals within different areas of these buildings. Occupancy information (including people counting, occupancy detection, location tracking, and activity detection) plays a vital role in the management of smart buildings. In this article, we primarily focus on the use of passive infrared (PIR) sensors for gathering occupancy information. PIR sensors are among the most widely used sensors for this purpose due to their consideration of privacy concerns, cost-effectiveness, and low processing complexity compared to other sensors. Despite numerous literature reviews in the field of occupancy information, there is currently no literature review dedicated to occupancy information derived specifically from PIR sensors. Therefore, this review analyzes articles that specifically explore the application of PIR sensors for obtaining occupancy information. It provides a comprehensive literature review of PIR sensor technology from 2015 to 2023, focusing on applications in people counting, activity detection, and localization (tracking and location). It consolidates findings from articles that have explored and enhanced the capabilities of PIR sensors in these interconnected domains. This review thoroughly examines the application of various techniques, machine learning algorithms, and configurations for PIR sensors in indoor building environments, emphasizing not only the data processing aspects but also their advantages, limitations, and efficacy in producing accurate occupancy information. These developments are crucial for improving building management systems in terms of energy efficiency, security, and user comfort, among other operational aspects. The article seeks to offer a thorough analysis of the present state and potential future advancements of PIR sensor technology in efficiently monitoring and understanding occupancy information by classifying and analyzing improvements in these domains.

Place, publisher, year, edition, pages
MDPI, 2024
Keywords
passive infrared sensors (PIR), smart buildings, IoT (internet of things), occupancy information, people counting, activity detection, machine learning
National Category
Electrical Engineering, Electronic Engineering, Information Engineering
Identifiers
urn:nbn:se:mau:diva-66548 (URN)10.3390/s24051533 (DOI)001183072000001 ()38475069 (PubMedID)2-s2.0-85187481668 (Scopus ID)
Available from: 2024-03-28 Created: 2024-03-28 Last updated: 2025-10-15Bibliographically approved
Akin, E., Adewole, K. S., Caltenco, H., Malekian, R. & Persson, J. A. (2024). Privacy-aware Hydra (PA-Hydra) for 3D Scene Graph Construction. In: 2024 IEEE 10th World Forum on Internet of Things, WF-IoT 2024: . Paper presented at 10th IEEE World Forum on Internet of Things, WF-IoT 2024, 10 Nov-13 Nov 2024, Ottawa, Canada (pp. 822-827). Institute of Electrical and Electronics Engineers (IEEE)
Open this publication in new window or tab >>Privacy-aware Hydra (PA-Hydra) for 3D Scene Graph Construction
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2024 (English)In: 2024 IEEE 10th World Forum on Internet of Things, WF-IoT 2024, Institute of Electrical and Electronics Engineers (IEEE), 2024, p. 822-827Conference paper, Published paper (Refereed)
Abstract [en]

A 3D Scene Graph (3DSG) is a hierarchical 3D representation of a physical environment. Hydra is a promising real-time spatial perception framework for 3DSG developed by MIT Spark Lab. It uses sensor and camera data from an agent to construct a graph of the environment with five layers and continuously updates it. Albeit its utility and efficiency in generating and updating real-time 3DSG using visual-inertial sensors, Hydra and many other 3DSG frameworks ignore violating to identify private sensitive objects by segmenting, identifying, and reconstructing everything in data. Therefore, in this paper, we enhance Hydra to preserve sensitive data and increase the privacy-awareness of the framework. Accordingly, we propose a Privacy-aware Hydra (Pa-Hydra) framework, which integrates a state-of-the-art Object Detection (OD) algorithm that utilizes a proposed Filter Algorithm to cover sensitive objects with black boxes and prevent them from being constructed by Hydra. We implemented the framework with two popular OD algorithms with two different pre-trained models: You Only Look Once version 9 (YOLOv9) and Real-time Detection Transformer (RTDETR). We evaluated the algorithms using the COCO2017 validation dataset and observed the efficiency of the proposed framework on the uHuman2 (uH2) dataset.

Place, publisher, year, edition, pages
Institute of Electrical and Electronics Engineers (IEEE), 2024
Series
IEEE World Forum on Internet of Things, ISSN 2769-4003, E-ISSN 2768-1734
Keywords
3D Scene Graphs, 3DSG, Computer Vision, GDPR, Hydra, Object Detection, Privacy-preservation
National Category
Computer Sciences
Identifiers
urn:nbn:se:mau:diva-74090 (URN)10.1109/WF-IoT62078.2024.10811446 (DOI)2-s2.0-85216547163 (Scopus ID)9798350373011 (ISBN)9798350373028 (ISBN)
Conference
10th IEEE World Forum on Internet of Things, WF-IoT 2024, 10 Nov-13 Nov 2024, Ottawa, Canada
Available from: 2025-02-19 Created: 2025-02-19 Last updated: 2025-10-06Bibliographically approved
Akin, E., Caltenco, H., Adewole, K. S., Malekian, R. & Persson, J. A. (2024). Segment Anything Model (SAM) Meets Object Detected Box Prompts. In: 2024 IEEE International Conference on Industrial Technology (ICIT): . Paper presented at 2024 IEEE International Conference on Industrial Technology (ICIT), Bristol, United Kingdom, 25-27 March 2024. Institute of Electrical and Electronics Engineers (IEEE)
Open this publication in new window or tab >>Segment Anything Model (SAM) Meets Object Detected Box Prompts
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2024 (English)In: 2024 IEEE International Conference on Industrial Technology (ICIT), Institute of Electrical and Electronics Engineers (IEEE), 2024Conference paper, Published paper (Refereed)
Abstract [en]

Segmenting images is an intricate and exceptionally demanding field within computer vision. Instance Segmentation is one of the subfields of image segmentation that segments objects on a given image or video. It categorizes the class labels according to individual instances, ensuring that distinct instance markers are assigned to each occurrence of the same object class, even if multiple instances exist. With the development of computer systems, segmentation studies have increased very rapidly. One of the state-of-the-art algorithms recently published by Meta AI, which segments everything on a given image, is called the Segment Anything Model (SAM). Its impressive zero-shot performance encourages us to use it for diverse tasks. Therefore, we would like to leverage the SAM for an effective instance segmentation model. Accordingly, in this paper, we propose a hybrid instance segmentation method in which Object Detection algorithms extract bounding boxes of detected objects and load SAM to produce segmentation, called Box Prompted SAM (BP-SAM). Experimental evaluation of the COCO2017 Validation dataset provided us with promising performance.

Place, publisher, year, edition, pages
Institute of Electrical and Electronics Engineers (IEEE), 2024
Series
IEEE International Conference on Industrial Technology, ISSN 2641-0184, E-ISSN 2643-2978
Keywords
SAM, Segment Anything Model, Object Detection, Instance Segmentation, Computer Vision
National Category
Computer graphics and computer vision
Identifiers
urn:nbn:se:mau:diva-70258 (URN)10.1109/icit58233.2024.10541006 (DOI)2-s2.0-85195782363 (Scopus ID)979-8-3503-4026-6 (ISBN)979-8-3503-4027-3 (ISBN)
Conference
2024 IEEE International Conference on Industrial Technology (ICIT), Bristol, United Kingdom, 25-27 March 2024
Funder
Knowledge Foundation, 20220087-H-01
Available from: 2024-08-15 Created: 2024-08-15 Last updated: 2025-02-07Bibliographically approved
Engström, J. & Persson, J. A. (2023). Accurate indoor positioning by combining sensor fusion and obstruction compensation. In: 2023 13th International Conference on Indoor Positioning and Indoor Navigation (IPIN): . Paper presented at IEEE 13th International Conference on Indoor Positioning and Indoor Navigation (IPIN), 25-28 September 2023, Nuremberg. Institute of Electrical and Electronics Engineers (IEEE)
Open this publication in new window or tab >>Accurate indoor positioning by combining sensor fusion and obstruction compensation
2023 (English)In: 2023 13th International Conference on Indoor Positioning and Indoor Navigation (IPIN), Institute of Electrical and Electronics Engineers (IEEE), 2023Conference paper, Published paper (Refereed)
Abstract [en]

Our dependency on Global Navigation Satellite System (GNSS) for getting directions, tracking items, locating friends, or getting maps of the world has increased tremendously over the last decade. However, as soon as we enter a building, the signal strength of the satellites is too low, and we need to resort to other technologies to achieve the same goals. An Indoor Positioning System (IPS) may utilize a wide range of methods for positioning a device, such as fingerprinting, multilateration, or sensor fusion, while using one or several radio technologies to measure Received Signal Strength (RSS) or Time of Arrival(ToA). Sensor fusion is an efficient approach where an Inertial Measurement Unit (IMU) is combined with, e.g., RSS measurements converted to distances. But this approach has significant drawbacks in areas where, e.g., walls or large objects obstruct the signal path, which introduces bias in the distance estimates. This paper addresses the bias caused by signal path obstruction by compensating the measured RSS with localized RSS attenuation adjustments and thereby increasing the accuracy of the sensor fusion model significantly. We also show that a system can learn the compensation parameters over time, reducing the installationefforts and achieving higher accuracy than a fingerprinting-based system.

Place, publisher, year, edition, pages
Institute of Electrical and Electronics Engineers (IEEE), 2023
Series
International Conference on Indoor Positioning and Indoor Navigation, ISSN 2162-7347, E-ISSN 2471-917X
Keywords
IPS, RTLS, Indoor Positioning, Fingerprinting, Multilateration, Sensor Fusion
National Category
Computer Sciences
Identifiers
urn:nbn:se:mau:diva-62911 (URN)10.1109/IPIN57070.2023.10332536 (DOI)2-s2.0-85180781818 (Scopus ID)979-8-3503-2011-4 (ISBN)979-8-3503-2012-1 (ISBN)
Conference
IEEE 13th International Conference on Indoor Positioning and Indoor Navigation (IPIN), 25-28 September 2023, Nuremberg
Available from: 2023-10-03 Created: 2023-10-03 Last updated: 2024-06-17Bibliographically approved
Projects
Internet of Things and People Research Profile; Malmö University; Publications
Banda, L., Mjumo, M. & Mekuria, F. (2022). Business Models for 5G and Future Mobile Network Operators. In: 2022 IEEE Future Networks World Forum (FNWF): . Paper presented at IEEE Future Networks World Forum FNWF 2022, Montreal, QC, Canada, 10-14 October 2022. IEEE, Article ID M17754.
Smart Public Environments II; Malmö UniversityIntelligent Mobility of the Future in Greater Copenhagen; Publications
Dytckov, S., Persson, J. A., Lorig, F. & Davidsson, P. (2022). Potential Benefits of Demand Responsive Transport in Rural Areas: A Simulation Study in Lolland, Denmark. Sustainability, 14(6), Article ID 3252.
Dynamic Intelligent Sensor Intensive Systems; Malmö University; Publications
Persson, J. A., Bugeja, J., Davidsson, P., Holmberg, J., Kebande, V. R., Mihailescu, R.-C., . . . Tegen, A. (2023). The Concept of Interactive Dynamic Intelligent Virtual Sensors (IDIVS): Bridging the Gap between Sensors, Services, and Users through Machine Learning. Applied Sciences, 13(11), Article ID 6516.
Towards integrated and adaptive public transport; Publications
Jevinger, Å. & Svensson, H. (2024). Stated opinions and potential travel with DRT – a survey covering three different age groups. Transportation planning and technology (Print), 47(7), 968-995Dytckov, S., Davidsson, P. & Persson, J. A. (2023). Integrate, not compete! On Potential Integration of Demand Responsive Transport Into Public Transport Network. In: : . Paper presented at 26th IEEE International Conference on Intelligent Transportation Systems ITSC 2023. Bilbao, Bizkaia, Spain: Institute of Electrical and Electronics Engineers (IEEE)
Context-aware travel support in public transport disturbancesAI Enhanced MobilityEvacuation Assistance System; Malmö University
Organisations
Identifiers
ORCID iD: ORCID iD iconorcid.org/0000-0002-9471-8405

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