26 results on '"Luperto, Matteo"'
Search Results
2. Frontier-Based Exploration for Multi-Robot Rendezvous in Communication-Restricted Unknown Environments
- Author
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Tellaroli, Mauro, Luperto, Matteo, Antonazzi, Michele, Basilico, Nicola, Tellaroli, Mauro, Luperto, Matteo, Antonazzi, Michele, and Basilico, Nicola
- Abstract
Multi-robot rendezvous and exploration are fundamental challenges in the domain of mobile robotic systems. This paper addresses multi-robot rendezvous within an initially unknown environment where communication is only possible after the rendezvous. Traditionally, exploration has been focused on rapidly mapping the environment, often leading to suboptimal rendezvous performance in later stages. We adapt a standard frontier-based exploration technique to integrate exploration and rendezvous into a unified strategy, with a mechanism that allows robots to re-visit previously explored regions thus enhancing rendezvous opportunities. We validate our approach in 3D realistic simulations using ROS, showcasing its effectiveness in achieving faster rendezvous times compared to exploration strategies.
- Published
- 2024
3. Development and Adaptation of Robotic Vision in the Real-World: the Challenge of Door Detection
- Author
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Antonazzi, Michele, Luperto, Matteo, Borghese, N. Alberto, Basilico, Nicola, Antonazzi, Michele, Luperto, Matteo, Borghese, N. Alberto, and Basilico, Nicola
- Abstract
Mobile service robots are increasingly prevalent in human-centric, real-world domains, operating autonomously in unconstrained indoor environments. In such a context, robotic vision plays a central role in enabling service robots to perceive high-level environmental features from visual observations. Despite the data-driven approaches based on deep learning push the boundaries of vision systems, applying these techniques to real-world robotic scenarios presents unique methodological challenges. Traditional models fail to represent the challenging perception constraints typical of service robots and must be adapted for the specific environment where robots finally operate. We propose a method leveraging photorealistic simulations that balances data quality and acquisition costs for synthesizing visual datasets from the robot perspective used to train deep architectures. Then, we show the benefits in qualifying a general detector for the target domain in which the robot is deployed, showing also the trade-off between the effort for obtaining new examples from such a setting and the performance gain. In our extensive experimental campaign, we focus on the door detection task (namely recognizing the presence and the traversability of doorways) that, in dynamic settings, is useful to infer the topology of the map. Our findings are validated in a real-world robot deployment, comparing prominent deep-learning models and demonstrating the effectiveness of our approach in practical settings.
- Published
- 2024
4. Seeking at-home long-term autonomy of assistive mobile robots through the integration with an IoT-based monitoring system
- Author
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Luperto, Matteo, Monroy, Javier, Moreno, Francisco-Angel, Lunardini, Francesca, Renoux, Jennifer, Krpic, Andrej, Galindo, Cipriano, Ferrante, Simona, Basilico, Nicola, Gonzalez-Jimenez, Javier, Borghese, N. Alberto, Luperto, Matteo, Monroy, Javier, Moreno, Francisco-Angel, Lunardini, Francesca, Renoux, Jennifer, Krpic, Andrej, Galindo, Cipriano, Ferrante, Simona, Basilico, Nicola, Gonzalez-Jimenez, Javier, and Borghese, N. Alberto
- Abstract
In this paper, we propose a system that stems from the integration of an autonomous mobile robot with an IoT-based monitoring system to provide monitoring, assistance, and stimulation to older adults living alone in their own houses. The creation of an Internet of Robotics Things (IoRT) based on the interplay between pervasive smart objects and autonomous robotic systems is claimed to enable the creation of innovative services conceived for assisting the final user, especially in elderly care. The synergy between IoT and a Socially Assistive Robot (SAR) was conceived to offer robustness, reconfiguration, heterogeneity, and scalability, by bringing a strong added value to both the current SAR and IoT technologies. First, we propose a method to achieve the synergy and integration between the IoT system and the robot; then, we show how our method increases the performance and effectiveness of both to provide long-term support to the older adults. To do so, we present a case-study, where we focus on the detection of signs of the frailty syndrome, a set of vulnerabilities typically conveyed by a cognitive and physical decline in older people that concur in amplifying the risks of major diseases hindering the capabilities of independent living. Experimental evaluation is performed in both controlled settings and in a long-term real-world pilot study with 9 older adults in their own apartments, where the system was deployed autonomously for, on average, 12 weeks., Funding agency:PON project SI-ROBOTICS - Italian government
- Published
- 2023
- Full Text
- View/download PDF
5. Integrating Social Assistive Robots, IoT, Virtual Communities and Smart Objects to Assist at-Home Independently Living Elders : the MoveCare Project
- Author
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Luperto, Matteo, Monroy, Javier, Renoux, Jennifer, Lunardini, Francesca, Basilico, Nicola, Bulgheroni, Maria, Cangelosi, Angelo, Cesari, Matteo, Cid, Manuel, Ianes, Aladar, Gonzalez-Jimenez, Javier, Kounoudes, Anastasis, Mari, David, Prisacariu, Victor, Savanovic, Arso, Ferrante, Simona, Borghese, N. Alberto, Luperto, Matteo, Monroy, Javier, Renoux, Jennifer, Lunardini, Francesca, Basilico, Nicola, Bulgheroni, Maria, Cangelosi, Angelo, Cesari, Matteo, Cid, Manuel, Ianes, Aladar, Gonzalez-Jimenez, Javier, Kounoudes, Anastasis, Mari, David, Prisacariu, Victor, Savanovic, Arso, Ferrante, Simona, and Borghese, N. Alberto
- Abstract
The integration of Ambient Assisted Living (AAL) frameworks with Socially Assistive Robots (SARs) has proven useful for monitoring and assisting older adults in their own home. However, the difficulties associated with long-term deployments in real-world complex environments are still highly under-explored. In this work, we first present the MoveCare system, an unobtrusive platform that, through the integration of a SAR into an AAL framework, aimed to monitor, assist and provide social, cognitive, and physical stimulation in the own houses of elders living alone and at risk of falling into frailty. We then focus on the evaluation and analysis of a long-term pilot campaign of more than 300 weeks of usages. We evaluated the system's acceptability and feasibility through various questionnaires and empirically assessed the impact of the presence of an assistive robot by deploying the system with and without it. Our results provide strong empirical evidence that Socially Assistive Robots integrated with monitoring and stimulation platforms can be successfully used for long-term support to older adults. We describe how the robot's presence significantly incentivised the use of the system, but slightly lowered the system's overall acceptability. Finally, we emphasise that real-world long-term deployment of SARs introduces a significant technical, organisational, and logistical overhead that should not be neglected nor underestimated in the pursuit of long-term robust systems. We hope that the findings and lessons learned from our work can bring value towards future long-term real-world and widespread use of SARs., Funding agency:European Commission Joint Research Centre ICT-26-2016b-GA 732158Correction:DOI: 10.1007/s12369-022-00885-yWOS: 000857896600001
- Published
- 2023
- Full Text
- View/download PDF
6. Robust Structure Identification and Room Segmentation of Cluttered Indoor Environments From Occupancy Grid Maps
- Author
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Luperto, Matteo, Kucner, Tomasz Piotr, Tassi, Andrea, Magnusson, Martin, Amigoni, Francesco, Luperto, Matteo, Kucner, Tomasz Piotr, Tassi, Andrea, Magnusson, Martin, and Amigoni, Francesco
- Abstract
Identifying the environment's structure, through detecting core components such as rooms and walls, can facilitate several tasks fundamental for the successful operation of indoor autonomous mobile robots, including semantic environment understanding. These robots often rely on 2D occupancy maps for core tasks such as localisation and motion and task planning. However, reliable identification of structure and room segmentation from 2D occupancy maps is still an open problem due to clutter (e.g., furniture and movable objects), occlusions, and partial coverage. We propose a method for the RObust StructurE identification and ROom SEgmentation (ROSE2) of 2D occupancy maps thatmay be cluttered and incomplete. ROSE2 identifies the main directions of walls and is resilient to clutter and partial observations, allowing to extract a clean, abstract geometrical floor-plan-like description of the environment, which is used to segment, i.e., to identify rooms in, the original occupancy grid map. ROSE2 is tested in several real-world publicly available cluttered maps obtained in different conditions. The results show that it can robustly identify the environment structure in 2D occupancy maps suffering fromclutter and partial observations, while significantly improving room segmentation accuracy. Thanks to the combination of clutter removal and robust room segmentation, ROSE2 consistently achieves higher performance than the state-of-the-art methods, against which it is compared.
- Published
- 2022
- Full Text
- View/download PDF
7. User feedback and remote supervision for assisted living with mobile robots : A field study in long-term autonomy
- Author
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Luperto, Matteo, Romeo, Marta, Monroy, Javier, Renoux, Jennifer, Vuono, Alessandro, Moreno, Francisco-Angel, Gonzalez-Jimenez, Javier, Basilico, Nicola, Borghese, N. Alberto, Luperto, Matteo, Romeo, Marta, Monroy, Javier, Renoux, Jennifer, Vuono, Alessandro, Moreno, Francisco-Angel, Gonzalez-Jimenez, Javier, Basilico, Nicola, and Borghese, N. Alberto
- Abstract
In an ageing society, the at-home use of Socially Assistive Robots (SARs) could provide remote monitoring of their users' well-being, together with physical and psychological support. However, private home environments are particularly challenging for SARs, due to their unstructured and dynamic nature which often contributes to robots' failures. For this reason, even though several prototypes of SARs for elderly care have been developed, their commercialisation and wide-spread at-home use are yet to be effective. In this paper, we analyse how including the end users' feedback impacts the SARs reliability and acceptance. To do so, we introduce a Monitoring and Logging System (MLS) for remote supervision, which increases the explainability of SAR-based systems deployed in older adults' apartments, while also allowing the exchange of feedback between caregivers, technicians, and older adults. We then present an extensive field study showing how long-term deployment of autonomous SARs can be accomplished by relying on such a feedback loop to address any potential issue. To this end, we provide the results obtained in a 130-week long study where autonomous SARs were deployed in the apartments of 10 older adults, with the aim of possibly serving and assisting future practitioners, with the knowledge collected from this extensive experimental campaign, to fill the gap that currently exists for the widespread adoption of SARs., Funding agencies:Italian PON project SI-RoboticsProject Essence SC1-PHE-CORONAVIRUS-2020-2B-GA 101016112
- Published
- 2022
- Full Text
- View/download PDF
8. Enhancing Door-Status Detection for Autonomous Mobile Robots during Environment-Specific Operational Use
- Author
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Antonazzi, Michele, Luperto, Matteo, Basilico, Nicola, Borghese, N. Alberto, Antonazzi, Michele, Luperto, Matteo, Basilico, Nicola, and Borghese, N. Alberto
- Abstract
Door-status detection, namely recognizing the presence of a door and its status (open or closed), can induce a remarkable impact on a mobile robot's navigation performance, especially for dynamic settings where doors can enable or disable passages, changing the topology of the map. In this work, we address the problem of building a door-status detector module for a mobile robot operating in the same environment for a long time, thus observing the same set of doors from different points of view. First, we show how to improve the mainstream approach based on object detection by considering the constrained perception setup typical of a mobile robot. Hence, we devise a method to build a dataset of images taken from a robot's perspective and we exploit it to obtain a door-status detector based on deep learning. We then leverage the typical working conditions of a robot to qualify the model for boosting its performance in the working environment via fine-tuning with additional data. Our experimental analysis shows the effectiveness of this method with results obtained both in simulation and in the real-world, that also highlight a trade-off between costs and benefits of the fine-tuning approach.
- Published
- 2022
- Full Text
- View/download PDF
9. Robust Structure Identification and Room Segmentation of Cluttered Indoor Environments from Occupancy Grid Maps
- Author
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Luperto, Matteo, Kucner, Tomasz Piotr, Tassi, Andrea, Magnusson, Martin, Amigoni, Francesco, Luperto, Matteo, Kucner, Tomasz Piotr, Tassi, Andrea, Magnusson, Martin, and Amigoni, Francesco
- Abstract
Identifying the environment's structure, i.e., to detect core components as rooms and walls, can facilitate several tasks fundamental for the successful operation of indoor autonomous mobile robots, including semantic environment understanding. These robots often rely on 2D occupancy maps for core tasks such as localisation and motion and task planning. However, reliable identification of structure and room segmentation from 2D occupancy maps is still an open problem due to clutter (e.g., furniture and movable object), occlusions, and partial coverage. We propose a method for the RObust StructurE identification and ROom SEgmentation (ROSE^2 ) of 2D occupancy maps, which may be cluttered and incomplete. ROSE^2 identifies the main directions of walls and is resilient to clutter and partial observations, allowing to extract a clean, abstract geometrical floor-plan-like description of the environment, which is used to segment, i.e., to identify rooms in, the original occupancy grid map. ROSE^2 is tested in several real-world publicly-available cluttered maps obtained in different conditions. The results show how it can robustly identify the environment structure in 2D occupancy maps suffering from clutter and partial observations, while significantly improving room segmentation accuracy. Thanks to the combination of clutter removal and robust room segmentation ROSE^2 consistently achieves higher performance than the state-of-the-art methods, against which it is compared., Comment: Preprint submitted to IEEE RAL + IROS 2022
- Published
- 2022
10. Robust Frequency-Based Structure Extraction
- Author
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Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, Lilienthal, Achim, Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, and Lilienthal, Achim
- Abstract
State of the art mapping algorithms can produce high-quality maps. However, they are still vulnerable to clutter and outliers which can affect map quality and in consequence hinder the performance of a robot, and further map processing for semantic understanding of the environment. This paper presents ROSE, a method for building-level structure detection in robotic maps. ROSE exploits the fact that indoor environments usually contain walls and straight-line elements along a limited set of orientations. Therefore metric maps often have a set of dominant directions. ROSE extracts these directions and uses this information to segment the map into structure and clutter through filtering the map in the frequency domain (an approach substantially underutilised in the mapping applications). Removing the clutter in this way makes wall detection (e.g. using the Hough transform) more robust. Our experiments demonstrate that (1) the application of ROSE for decluttering can substantially improve structural feature retrieval (e.g., walls) in cluttered environments, (2) ROSE can successfully distinguish between clutter and structure in the map even with substantial amount of noise and (3) ROSE can numerically assess the amount of structure in the map., ILIAD
- Published
- 2021
- Full Text
- View/download PDF
11. Robust Frequency-Based Structure Extraction
- Author
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Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, Lilienthal, Achim, Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, and Lilienthal, Achim
- Abstract
State of the art mapping algorithms can produce high-quality maps. However, they are still vulnerable to clutter and outliers which can affect map quality and in consequence hinder the performance of a robot, and further map processing for semantic understanding of the environment. This paper presents ROSE, a method for building-level structure detection in robotic maps. ROSE exploits the fact that indoor environments usually contain walls and straight-line elements along a limited set of orientations. Therefore metric maps often have a set of dominant directions. ROSE extracts these directions and uses this information to segment the map into structure and clutter through filtering the map in the frequency domain (an approach substantially underutilised in the mapping applications). Removing the clutter in this way makes wall detection (e.g. using the Hough transform) more robust. Our experiments demonstrate that (1) the application of ROSE for decluttering can substantially improve structural feature retrieval (e.g., walls) in cluttered environments, (2) ROSE can successfully distinguish between clutter and structure in the map even with substantial amount of noise and (3) ROSE can numerically assess the amount of structure in the map., ILIAD
- Published
- 2021
- Full Text
- View/download PDF
12. Robust Frequency-Based Structure Extraction
- Author
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Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, Lilienthal, Achim, Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, and Lilienthal, Achim
- Abstract
State of the art mapping algorithms can produce high-quality maps. However, they are still vulnerable to clutter and outliers which can affect map quality and in consequence hinder the performance of a robot, and further map processing for semantic understanding of the environment. This paper presents ROSE, a method for building-level structure detection in robotic maps. ROSE exploits the fact that indoor environments usually contain walls and straight-line elements along a limited set of orientations. Therefore metric maps often have a set of dominant directions. ROSE extracts these directions and uses this information to segment the map into structure and clutter through filtering the map in the frequency domain (an approach substantially underutilised in the mapping applications). Removing the clutter in this way makes wall detection (e.g. using the Hough transform) more robust. Our experiments demonstrate that (1) the application of ROSE for decluttering can substantially improve structural feature retrieval (e.g., walls) in cluttered environments, (2) ROSE can successfully distinguish between clutter and structure in the map even with substantial amount of noise and (3) ROSE can numerically assess the amount of structure in the map., ILIAD
- Published
- 2021
- Full Text
- View/download PDF
13. Robust Frequency-Based Structure Extraction
- Author
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Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, Lilienthal, Achim, Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, and Lilienthal, Achim
- Abstract
State of the art mapping algorithms can produce high-quality maps. However, they are still vulnerable to clutter and outliers which can affect map quality and in consequence hinder the performance of a robot, and further map processing for semantic understanding of the environment. This paper presents ROSE, a method for building-level structure detection in robotic maps. ROSE exploits the fact that indoor environments usually contain walls and straight-line elements along a limited set of orientations. Therefore metric maps often have a set of dominant directions. ROSE extracts these directions and uses this information to segment the map into structure and clutter through filtering the map in the frequency domain (an approach substantially underutilised in the mapping applications). Removing the clutter in this way makes wall detection (e.g. using the Hough transform) more robust. Our experiments demonstrate that (1) the application of ROSE for decluttering can substantially improve structural feature retrieval (e.g., walls) in cluttered environments, (2) ROSE can successfully distinguish between clutter and structure in the map even with substantial amount of noise and (3) ROSE can numerically assess the amount of structure in the map., ILIAD
- Published
- 2021
- Full Text
- View/download PDF
14. Robust Frequency-Based Structure Extraction
- Author
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Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, Lilienthal, Achim, Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, and Lilienthal, Achim
- Abstract
State of the art mapping algorithms can produce high-quality maps. However, they are still vulnerable to clutter and outliers which can affect map quality and in consequence hinder the performance of a robot, and further map processing for semantic understanding of the environment. This paper presents ROSE, a method for building-level structure detection in robotic maps. ROSE exploits the fact that indoor environments usually contain walls and straight-line elements along a limited set of orientations. Therefore metric maps often have a set of dominant directions. ROSE extracts these directions and uses this information to segment the map into structure and clutter through filtering the map in the frequency domain (an approach substantially underutilised in the mapping applications). Removing the clutter in this way makes wall detection (e.g. using the Hough transform) more robust. Our experiments demonstrate that (1) the application of ROSE for decluttering can substantially improve structural feature retrieval (e.g., walls) in cluttered environments, (2) ROSE can successfully distinguish between clutter and structure in the map even with substantial amount of noise and (3) ROSE can numerically assess the amount of structure in the map., ILIAD
- Published
- 2021
- Full Text
- View/download PDF
15. Predicting Performance of SLAM Algorithms
- Author
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Luperto, Matteo, Castelli, Valerio, Amigoni, Francesco, Luperto, Matteo, Castelli, Valerio, and Amigoni, Francesco
- Abstract
Among the abilities that autonomous mobile robots should exhibit, map building and localization are definitely recognized as fundamental. Consequently, countless algorithms for solving the Simultaneous Localization And Mapping (SLAM) problem have been proposed. Currently, their evaluation is performed ex-post, according to outcomes obtained when running the algorithms on data collected by robots in real or simulated environments. In this paper, we present a novel method that allows the ex-ante prediction of the performance of a SLAM algorithm in an unseen environment, before it is actually run. Our method collects the performance of a SLAM algorithm in a number of simulated environments, builds a model that represents the relationship between the observed performance and some geometrical features of the environments, and exploits such model to predict the performance of the algorithm in an unseen environment starting from its features., Comment: Working preprint draft. To be polished and submitted for peer review
- Published
- 2021
16. A Virtual Caregiver for Assisted Daily Living of Pre-Frail Users
- Author
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Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, Borghese, N. Alberto, Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, and Borghese, N. Alberto
- Abstract
As Europe sees its population aging dramatically, Assisted Daily Living for the elderly becomes a more and more important and relevant research topic. The Movecare Project focuses on this topic by integrating a robotic platform, an IoT system, and an activity center to provide assistance, suggestions of activities and transparent monitoring to users at home. In this paper, we describe the Virtual Caregiver, a software component of the Movecare platform, that is responsible for analyzing the data from the various modules and generating suggestions tailored to the user’s state and needs. A preliminary study has been carried on over 2 months with 15 users. This study suggests that the presence of the Virtual Caregiver encourages people to use the Movecare platform more consistently, which in turn could result in better monitoring and prevention of cognitive and physical decline.
- Published
- 2020
- Full Text
- View/download PDF
17. Supervised Digital Neuropsychological Tests for Cognitive Decline in Older Adults: Usability and Clinical Validity Study
- Author
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Lunardini, F, Luperto, M, Romeo, M, Basilico, N, Daniele, K, Azzolino, D, Damanti, S, Abbate, C, Mari, D, Cesari, M, Borghese, N, Ferrante, S, Lunardini, Francesca, Luperto, Matteo, Romeo, Marta, Basilico, Nicola, Daniele, Katia, Azzolino, Domenico, Damanti, Sarah, Abbate, Carlo, Mari, Daniela, Cesari, Matteo, Borghese, N Alberto, Ferrante, Simona, Lunardini, F, Luperto, M, Romeo, M, Basilico, N, Daniele, K, Azzolino, D, Damanti, S, Abbate, C, Mari, D, Cesari, M, Borghese, N, Ferrante, S, Lunardini, Francesca, Luperto, Matteo, Romeo, Marta, Basilico, Nicola, Daniele, Katia, Azzolino, Domenico, Damanti, Sarah, Abbate, Carlo, Mari, Daniela, Cesari, Matteo, Borghese, N Alberto, and Ferrante, Simona
- Abstract
Background: Dementia is a major and growing health problem, and early diagnosis is key to its management. Objective: With the ultimate goal of providing a monitoring tool that could be used to support the screening for cognitive decline, this study aims to develop a supervised, digitized version of 2 neuropsychological tests: Trail Making Test and Bells Test. The system consists of a web app that implements a tablet-based version of the tests and consists of an innovative vocal assistant that acts as the virtual supervisor for the execution of the test. A replay functionality is added to allow inspection of the user’s performance after test completion. Methods: To deploy the system in a nonsupervised environment, extensive functional testing of the platform was conducted, together with a validation of the tablet-based tests. Such validation had the two-fold aim of evaluating system usability and acceptance and investigating the concurrent validity of computerized assessment compared with the corresponding paper-and-pencil counterparts. Results: The results obtained from 83 older adults showed high system acceptance, despite the patients’ low familiarity with technology. The system software was successfully validated. A concurrent validation of the system reported good ability of the digitized tests to retain the same predictive power of the corresponding paper-based tests. Conclusions: Altogether, the positive results pave the way for the deployment of the system to a nonsupervised environment, thus representing a potential efficacious and ecological solution to support clinicians in the identification of early signs of cognitive decline.
- Published
- 2020
18. Supervised Digital Neuropsychological Tests for Cognitive Decline in Older Adults: Usability and Clinical Validity Study
- Author
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Lunardini, F, Luperto, M, Romeo, M, Basilico, N, Daniele, K, Azzolino, D, Damanti, S, Abbate, C, Mari, D, Cesari, M, Borghese, N, Ferrante, S, Lunardini, Francesca, Luperto, Matteo, Romeo, Marta, Basilico, Nicola, Daniele, Katia, Azzolino, Domenico, Damanti, Sarah, Abbate, Carlo, Mari, Daniela, Cesari, Matteo, Borghese, N Alberto, Ferrante, Simona, Lunardini, F, Luperto, M, Romeo, M, Basilico, N, Daniele, K, Azzolino, D, Damanti, S, Abbate, C, Mari, D, Cesari, M, Borghese, N, Ferrante, S, Lunardini, Francesca, Luperto, Matteo, Romeo, Marta, Basilico, Nicola, Daniele, Katia, Azzolino, Domenico, Damanti, Sarah, Abbate, Carlo, Mari, Daniela, Cesari, Matteo, Borghese, N Alberto, and Ferrante, Simona
- Abstract
Background: Dementia is a major and growing health problem, and early diagnosis is key to its management. Objective: With the ultimate goal of providing a monitoring tool that could be used to support the screening for cognitive decline, this study aims to develop a supervised, digitized version of 2 neuropsychological tests: Trail Making Test and Bells Test. The system consists of a web app that implements a tablet-based version of the tests and consists of an innovative vocal assistant that acts as the virtual supervisor for the execution of the test. A replay functionality is added to allow inspection of the user’s performance after test completion. Methods: To deploy the system in a nonsupervised environment, extensive functional testing of the platform was conducted, together with a validation of the tablet-based tests. Such validation had the two-fold aim of evaluating system usability and acceptance and investigating the concurrent validity of computerized assessment compared with the corresponding paper-and-pencil counterparts. Results: The results obtained from 83 older adults showed high system acceptance, despite the patients’ low familiarity with technology. The system software was successfully validated. A concurrent validation of the system reported good ability of the digitized tests to retain the same predictive power of the corresponding paper-based tests. Conclusions: Altogether, the positive results pave the way for the deployment of the system to a nonsupervised environment, thus representing a potential efficacious and ecological solution to support clinicians in the identification of early signs of cognitive decline.
- Published
- 2020
19. A Virtual Caregiver for Assisted Daily Living of Pre-Frail Users
- Author
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Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, Borghese, N. Alberto, Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, and Borghese, N. Alberto
- Abstract
As Europe sees its population aging dramatically, Assisted Daily Living for the elderly becomes a more and more important and relevant research topic. The Movecare Project focuses on this topic by integrating a robotic platform, an IoT system, and an activity center to provide assistance, suggestions of activities and transparent monitoring to users at home. In this paper, we describe the Virtual Caregiver, a software component of the Movecare platform, that is responsible for analyzing the data from the various modules and generating suggestions tailored to the user’s state and needs. A preliminary study has been carried on over 2 months with 15 users. This study suggests that the presence of the Virtual Caregiver encourages people to use the Movecare platform more consistently, which in turn could result in better monitoring and prevention of cognitive and physical decline.
- Published
- 2020
- Full Text
- View/download PDF
20. Robust Frequency-Based Structure Extraction
- Author
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Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, Lilienthal, Achim J., Kucner, Tomasz Piotr, Luperto, Matteo, Lowry, Stephanie, Magnusson, Martin, and Lilienthal, Achim J.
- Abstract
State of the art mapping algorithms can produce high-quality maps. However, they are still vulnerable to clutter and outliers which can affect map quality and in consequence hinder the performance of a robot, and further map processing for semantic understanding of the environment. This paper presents ROSE, a method for building-level structure detection in robotic maps. ROSE exploits the fact that indoor environments usually contain walls and straight-line elements along a limited set of orientations. Therefore metric maps often have a set of dominant directions. ROSE extracts these directions and uses this information to segment the map into structure and clutter through filtering the map in the frequency domain (an approach substantially underutilised in the mapping applications). Removing the clutter in this way makes wall detection (e.g. using the Hough transform) more robust. Our experiments demonstrate that (1) the application of ROSE for decluttering can substantially improve structural feature retrieval (e.g., walls) in cluttered environments, (2) ROSE can successfully distinguish between clutter and structure in the map even with substantial amount of noise and (3) ROSE can numerically assess the amount of structure in the map., Comment: for test implementation check: https://github.com/tkucner/rose
- Published
- 2020
21. Exploration of Indoor Environments Predicting the Layout of Partially Observed Rooms
- Author
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Luperto, Matteo, Fochetta, Luca, Amigoni, Francesco, Luperto, Matteo, Fochetta, Luca, and Amigoni, Francesco
- Abstract
We consider exploration tasks in which an autonomous mobile robot incrementally builds maps of initially unknown indoor environments. In such tasks, the robot makes a sequence of decisions on where to move next that, usually, are based on knowledge about the observed parts of the environment. In this paper, we present an approach that exploits a prediction of the geometric structure of the unknown parts of an environment to improve exploration performance. In particular, we leverage an existing method that reconstructs the layout of an environment starting from a partial grid map and that predicts the shape of partially observed rooms on the basis of geometric features representing the regularities of the indoor environment. Then, we originally employ the predicted layout to estimate the amount of new area the robot would observe from candidate locations in order to inform the selection of the next best location and to early stop the exploration when no further relevant area is expected to be discovered. Experimental activities show that our approach is able to effectively predict the layout of partially observed rooms and to use such knowledge to speed up the exploration.
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- 2020
- Full Text
- View/download PDF
22. A Virtual Caregiver for Assisted Daily Living of Pre-Frail Users
- Author
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Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, Borghese, N. Alberto, Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, and Borghese, N. Alberto
- Abstract
As Europe sees its population aging dramatically, Assisted Daily Living for the elderly becomes a more and more important and relevant research topic. The Movecare Project focuses on this topic by integrating a robotic platform, an IoT system, and an activity center to provide assistance, suggestions of activities and transparent monitoring to users at home. In this paper, we describe the Virtual Caregiver, a software component of the Movecare platform, that is responsible for analyzing the data from the various modules and generating suggestions tailored to the user’s state and needs. A preliminary study has been carried on over 2 months with 15 users. This study suggests that the presence of the Virtual Caregiver encourages people to use the Movecare platform more consistently, which in turn could result in better monitoring and prevention of cognitive and physical decline.
- Published
- 2020
- Full Text
- View/download PDF
23. A Virtual Caregiver for Assisted Daily Living of Pre-Frail Users
- Author
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Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, Borghese, N. Alberto, Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, and Borghese, N. Alberto
- Abstract
As Europe sees its population aging dramatically, Assisted Daily Living for the elderly becomes a more and more important and relevant research topic. The Movecare Project focuses on this topic by integrating a robotic platform, an IoT system, and an activity center to provide assistance, suggestions of activities and transparent monitoring to users at home. In this paper, we describe the Virtual Caregiver, a software component of the Movecare platform, that is responsible for analyzing the data from the various modules and generating suggestions tailored to the user’s state and needs. A preliminary study has been carried on over 2 months with 15 users. This study suggests that the presence of the Virtual Caregiver encourages people to use the Movecare platform more consistently, which in turn could result in better monitoring and prevention of cognitive and physical decline.
- Published
- 2020
- Full Text
- View/download PDF
24. A Virtual Caregiver for Assisted Daily Living of Pre-Frail Users
- Author
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Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, Borghese, N. Alberto, Renoux, Jennifer, Luperto, Matteo, Basilico, Nicola, Romeo, Marta, Milis, Marios, Lunardini, Francesca, Ferrante, Simona, Loutfi, Amy, and Borghese, N. Alberto
- Abstract
As Europe sees its population aging dramatically, Assisted Daily Living for the elderly becomes a more and more important and relevant research topic. The Movecare Project focuses on this topic by integrating a robotic platform, an IoT system, and an activity center to provide assistance, suggestions of activities and transparent monitoring to users at home. In this paper, we describe the Virtual Caregiver, a software component of the Movecare platform, that is responsible for analyzing the data from the various modules and generating suggestions tailored to the user’s state and needs. A preliminary study has been carried on over 2 months with 15 users. This study suggests that the presence of the Virtual Caregiver encourages people to use the Movecare platform more consistently, which in turn could result in better monitoring and prevention of cognitive and physical decline.
- Published
- 2020
- Full Text
- View/download PDF
25. The MOVECARE project : Home-based monitoring of frailty
- Author
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Lunardini, Francesca, Luperto, Matteo, Romeo, Marta, Renoux, Jennifer, Basilico, Nicola, Krpič, Andrej, Borghese, Nunzio Alberto, Ferrante, Simona, Lunardini, Francesca, Luperto, Matteo, Romeo, Marta, Renoux, Jennifer, Basilico, Nicola, Krpič, Andrej, Borghese, Nunzio Alberto, and Ferrante, Simona
- Abstract
Concerning frailty, the use of home-based technology able to continuously and transparently monitor the independent elder may represent a useful tool to support the traditional geriatric assessment in the identification of elderly people at risk of frailty, with the final aim of guiding the development of early preventive interventions. To this aim, the European MoveCare project develops an ICT platform to support the independent living of the elder at home. Here, we describe how home-based monitoring of frailty is addressed within MoveCare, specifically for the five Fried criteria. The platform leverages a net of heterogeneous sensors a service robot, and the use of gamification to achieve ecological monitoring of frailty through quantitative measurements transparently recorded during common daily-life activities. The indicators collected over time are fed to the reasoning entity of the platform to provide informal caregivers with relevant information on the elder's status., Funding Agency:European H2020 project Movecare grant ICT-26-2016b GA 732158
- Published
- 2019
- Full Text
- View/download PDF
26. Seeking Prevention of Cognitive Decline in Elders via Activity Suggestion by A Virtual Caregiver
- Author
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Vuono, Alessandro, Luperto, Matteo, Banfi, Jacopo, Basilico, Nicola, Borghese, Nunzio A., Sioutis, Michael, Renoux, Jennifer, Loutfi, Amy, Vuono, Alessandro, Luperto, Matteo, Banfi, Jacopo, Basilico, Nicola, Borghese, Nunzio A., Sioutis, Michael, Renoux, Jennifer, and Loutfi, Amy
- Abstract
Addressing the lack of social, cognitive, and physical stimuli among elders is a key factor to contrast Mild Cognitive Impairment (MCI) that can arise during the third age. Against such background, agent-based technology has been applied to different application domains related to the assistance of elders. In this demo, we introduce an application of this kind: an activity center featuring social, cognitive, and physical activities targeted for elders. This activity center interacts with an autonomous agent, called Virtual Caregiver, residing in the cloud and generating interventions based on users’ data. We show how the user experience can be enriched with an adaptive configuration encouraging socialization and cognitive training.
- Published
- 2018
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