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Träfflista för sökning "AMNE:(NATURAL SCIENCES) AMNE:(Computer and Information Sciences) AMNE:(Computer Engineering) srt2:(2020-2024)"

Search: AMNE:(NATURAL SCIENCES) AMNE:(Computer and Information Sciences) AMNE:(Computer Engineering) > (2020-2024)

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1.
  • Blanch, Krister, 1991 (author)
  • Beyond-application datasets and automated fair benchmarking
  • 2023
  • Licentiate thesis (other academic/artistic)abstract
    • Beyond-application perception datasets are generalised datasets that emphasise the fundamental components of good machine perception data. When analysing the history of perception datatsets, notable trends suggest that design of the dataset typically aligns with an application goal. Instead of focusing on a specific application, beyond-application datasets instead look at capturing high-quality, high-volume data from a highly kinematic environment, for the purpose of aiding algorithm development and testing in general. Algorithm benchmarking is a cornerstone of autonomous systems development, and allows developers to demonstrate their results in a comparative manner. However, most benchmarking systems allow developers to use their own hardware or select favourable data. There is also little focus on run time performance and consistency, with benchmarking systems instead showcasing algorithm accuracy. By combining both beyond-application dataset generation and methods for fair benchmarking, there is also the dilemma of how to provide the dataset to developers for this benchmarking, as the result of a high-volume, high-quality dataset generation is a significant increase in dataset size when compared to traditional perception datasets. This thesis presents the first results of attempting the creation of such a dataset. The dataset was built using a maritime platform, selected due to the highly dynamic environment presented on water. The design and initial testing of this platform is detailed, as well as as methods of sensor validation. Continuing, the thesis then presents a method of fair benchmarking, by utilising remote containerisation in a way that allows developers to present their software to the dataset, instead of having to first locally store a copy. To test this dataset and automatic online benchmarking, a number of reference algorithms were required for initial results. Three algorithms were built, using the data from three different sensors captured on the maritime platform. Each algorithm calculates vessel odometry, and the automatic benchmarking system was utilised to show the accuracy and run-time performance of these algorithms. It was found that the containerised approach alleviated data management concerns, prevented inflated accuracy results, and demonstrated precisely how computationally intensive each algorithm was.
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2.
  • Petersson, Jesper, 1974, et al. (author)
  • Off the record: The invisibility work of doctors in a patient-accessible electronic health record information service.
  • 2021
  • In: Sociology of health & illness. - : Wiley. - 1467-9566 .- 0141-9889. ; 43:5, s. 1270-1285
  • Journal article (peer-reviewed)abstract
    • In this article, we draw on Michael Lipsky's work on street-level bureaucrats and discretion to analyse a real case setting comprising an interview study of 30 Swedish doctors regarding their experiences of changes in clinical work following patients being given access to medical records information online. We introduce the notion of invisibility work to capture how doctors exercise discretion to preserve the invisibility of their work, in contrast to the well-established notion of invisible work, which denotes work made invisible by parties other than those performing it. We discuss three main forms of invisibility work in relation to records: omitting information, cryptic writing and parallel note writing. We argue that invisibility work is a way for doctors to resolve professional tensions arising from the political decision to provide patients with online access to record information. Although invisibility work is understood by doctors as a solution to government-initiated visibility, we highlight how it can create difficulties for doctors concerning accountability towards patients, peers and authorities.
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3.
  • Dodig-Crnkovic, Gordana, 1955 (author)
  • Cognitive Architectures Based on Natural Info-Computation
  • 2022
  • In: Studies in Applied Philosophy, Epistemology and Rational Ethics. - Cham : Springer. - 2192-6255 .- 2192-6263. ; , s. 3-13, s. 3-13
  • Book chapter (peer-reviewed)abstract
    • At the time when the first models of cognitive architectures have been proposed, some forty years ago, understanding of cognition, embodiment and evolution was substantially different from today’s. So was the state of the art of information physics, information chemistry, bioinformatics, neuroinformatics, computational neuroscience, complexity theory, self-organization, theory of evolution, as well as the basic concepts of information and computation. Novel developments support a constructive interdisciplinary framework for cognitive architectures based on natural morphological computing, where interactions between constituents at different levels of organization of matter-energy and their corresponding time-dependent dynamics, lead to complexification of agency and increased cognitive capacities of living organisms that unfold through evolution. Proposed info-computational framework for naturalizing cognition considers present updates (generalizations) of the concepts of information, computation, cognition, and evolution in order to attain an alignment with the current state of the art in corresponding research fields. Some important open questions are suggested for future research with implications for further development of cognitive and intelligent technologies.
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4.
  • Dodig-Crnkovic, Gordana, 1955 (author)
  • Natural Morphological Computation as Foundation of Learning to Learn in Humans, Other Living Organisms, and Intelligent Machines
  • 2020
  • In: Philosophies. - Basel, Switzerland : MDPI AG. - 2409-9287. ; 5:3
  • Journal article (peer-reviewed)abstract
    • The emerging contemporary natural philosophy provides a common ground for the integrative view of the natural, the artificial, and the human-social knowledge and practices. Learning process is central for acquiring, maintaining, and managing knowledge, both theoretical and practical. This paper explores the relationships between the present advances in understanding of learning in the sciences of the artificial (deep learning, robotics), natural sciences (neuroscience, cognitive science, biology), and philosophy (philosophy of computing, philosophy of mind, natural philosophy). The question is, what at this stage of the development the inspiration from nature, specifically its computational models such as info-computation through morphological computing, can contribute to machine learning and artificial intelligence, and how much on the other hand models and experiments in machine learning and robotics can motivate, justify, and inform research in computational cognitive science, neurosciences, and computing nature. We propose that one contribution can be understanding of the mechanisms of 'learning to learn', as a step towards deep learning with symbolic layer of computation/information processing in a framework linking connectionism with symbolism. As all natural systems possessing intelligence are cognitive systems, we describe the evolutionary arguments for the necessity of learning to learn for a system to reach human-level intelligence through evolution and development. The paper thus presents a contribution to the epistemology of the contemporary philosophy of nature.
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6.
  • Lv, Zhihan, Dr. 1984-, et al. (author)
  • Editorial : 5G for Augmented Reality
  • 2022
  • In: Mobile Networks and Applications. - : Springer. - 1383-469X .- 1572-8153.
  • Journal article (peer-reviewed)
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7.
  • David, I., et al. (author)
  • Blended modeling in commercial and open-source model-driven software engineering tools: A systematic study
  • 2023
  • In: Software and Systems Modeling. - : Springer Science and Business Media LLC. - 1619-1366 .- 1619-1374. ; 22, s. 415-447
  • Journal article (peer-reviewed)abstract
    • Blended modeling aims to improve the user experience of modeling activities by prioritizing the seamless interaction with models through multiple notations over the consistency of the models. Inconsistency tolerance, thus, becomes an important aspect in such settings. To understand the potential of current commercial and open-source modeling tools to support blended modeling, we have designed and carried out a systematic study. We identify challenges and opportunities in the tooling aspect of blended modeling. Specifically, we investigate the user-facing and implementation-related characteristics of existing modeling tools that already support multiple types of notations and map their support for other blended aspects, such as inconsistency tolerance, and elevated user experience. For the sake of completeness, we have conducted a multivocal study, encompassing an academic review, and grey literature review. We have reviewed nearly 5000 academic papers and nearly 1500 entries of grey literature. We have identified 133 candidate tools, and eventually selected 26 of them to represent the current spectrum of modeling tools.
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8.
  • Liu, Yuqi, et al. (author)
  • Liquid Digital Twins Based on Magnetic Fluid Toys
  • 2022
  • In: 2022 IEEE Conference on Virtual Reality and 3D User Interfaces Abstracts and Workshops (VRW). - : IEEE. - 9781665484022 ; , s. 988-989
  • Conference paper (peer-reviewed)abstract
    • As a new type of functional material, magnetic fluid has both the fluidity of liquid and the magnetic properties of solid magnetic material. By controlling the magnets, one can simulate the effect of manipulating liquids like a sea emperor. This will provide new ideas for the multiverse of the metaverse. Not only that, magnetic fluids also have very important applications in astrophysics, controlled thermonuclear reactions and even the medical industry. Therefore, this paper hopes to provide a control idea for the future application of magnetic fluid by performing Digital Twins simulation of magnetic fluid.
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9.
  • Farooqui, Ashfaq, et al. (author)
  • On Active Learning for Supervisor Synthesis
  • 2024
  • In: IEEE Transactions on Automation Science and Engineering. - : Institute of Electrical and Electronics Engineers Inc.. - 1545-5955 .- 1558-3783. ; 21, s. 78-
  • Journal article (peer-reviewed)abstract
    • Supervisory control theory provides an approach to synthesize supervisors for cyber-physical systems using a model of the uncontrolled plant and its specifications. These supervisors can help guarantee the correctness of the closed-loop controlled system. However, access to plant models is a bottleneck for many industries, as manually developing these models is an error-prone and time-consuming process. An approach to obtaining a supervisor in the absence of plant models would help industrial adoption of supervisory control techniques. This paper presents, an algorithm to learn a controllable supervisor in the absence of plant models. It does so by actively interacting with a simulation of the plant by means of queries. If the obtained supervisor is blocking, existing synthesis techniques are employed to prune the blocking supervisor and obtain the controllable and non-blocking supervisor. Additionally, this paper presents an approach to interface the with a PLC to learn supervisors in a virtual commissioning setting. This approach is demonstrated by learning a supervisor of the well-known example simulated in Xcelgo Experior and controlled using a PLC. interacts with the PLC and learns a controllable supervisor for the simulated system. Note to Practitioners—Ensuring the correctness of automated systems is crucial. Supervisory control theory proposes techniques to help build control solutions that have certain correctness guarantees. These techniques rely on a model of the system. However, such models are typically unavailable and hard to create. Active learning is a promising technique to learn models by interacting with the system to be learned. This paper aims to integrate active learning and supervisory control such that the manual step of creating models is no longer needed, thus, allowing the use of supervisory control techniques in the absence of models. The proposed approach is implemented in a tool and demonstrated using a case study. 
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10.
  • Ali, Muhaddisa Barat, 1986 (author)
  • Deep Learning Methods for Classification of Gliomas and Their Molecular Subtypes, From Central Learning to Federated Learning
  • 2023
  • Doctoral thesis (other academic/artistic)abstract
    • The most common type of brain cancer in adults are gliomas. Under the updated 2016 World Health Organization (WHO) tumor classification in central nervous system (CNS), identification of molecular subtypes of gliomas is important. For low grade gliomas (LGGs), prediction of molecular subtypes by observing magnetic resonance imaging (MRI) scans might be difficult without taking biopsy. With the development of machine learning (ML) methods such as deep learning (DL), molecular based classification methods have shown promising results from MRI scans that may assist clinicians for prognosis and deciding on a treatment strategy. However, DL requires large amount of training datasets with tumor class labels and tumor boundary annotations. Manual annotation of tumor boundary is a time consuming and expensive process. The thesis is based on the work developed in five papers on gliomas and their molecular subtypes. We propose novel methods that provide improved performance.  The proposed methods consist of a multi-stream convolutional autoencoder (CAE)-based classifier, a deep convolutional generative adversarial network (DCGAN) to enlarge the training dataset, a CycleGAN to handle domain shift, a novel federated learning (FL) scheme to allow local client-based training with dataset protection, and employing bounding boxes to MRIs when tumor boundary annotations are not available. Experimental results showed that DCGAN generated MRIs have enlarged the original training dataset size and have improved the classification performance on test sets. CycleGAN showed good domain adaptation on multiple source datasets and improved the classification performance. The proposed FL scheme showed a slightly degraded performance as compare to that of central learning (CL) approach while protecting dataset privacy. Using tumor bounding boxes showed to be an alternative approach to tumor boundary annotation for tumor classification and segmentation, with a trade-off between a slight decrease in performance and saving time in manual marking by clinicians. The proposed methods may benefit the future research in bringing DL tools into clinical practice for assisting tumor diagnosis and help the decision making process.
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  • Result 1-10 of 5021
Type of publication
conference paper (2217)
journal article (2130)
doctoral thesis (160)
book chapter (135)
licentiate thesis (128)
research review (102)
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reports (63)
other publication (29)
editorial proceedings (27)
editorial collection (15)
book (11)
artistic work (9)
patent (1)
review (1)
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Type of content
peer-reviewed (4340)
other academic/artistic (660)
pop. science, debate, etc. (17)
Author/Editor
Bosch, Jan, 1967 (90)
Staron, Miroslaw, 19 ... (55)
Olsson, Helena Holms ... (55)
Mendez, Daniel (50)
Lv, Zhihan, Dr. 1984 ... (43)
Knauss, Eric, 1977 (39)
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Wymeersch, Henk, 197 ... (37)
Natalino Da Silva, C ... (36)
Monti, Paolo, 1973- (35)
Horkoff, Jennifer, 1 ... (35)
Berger, Thorsten, 19 ... (35)
Gorschek, Tony, 1972 ... (35)
Feldt, Robert, 1972 (33)
Runeson, Per (31)
Gay, Gregory, 1987 (30)
Borg, Markus (30)
Wosinska, Lena, 1951 ... (29)
Qu, Xiaobo, 1983 (29)
Fabian, Martin, 1960 (28)
Furdek Prekratic, Ma ... (28)
Unterkalmsteiner, Mi ... (27)
Penzenstadler, Birgi ... (27)
Pelliccione, Patrizi ... (27)
Felderer, Michael, 1 ... (26)
Monperrus, Martin (26)
Steghöfer, Jan-Phili ... (24)
Strüber, Daniel, 198 ... (24)
Weyns, Danny (23)
Berger, Christian, 1 ... (23)
Fjeld, Morten, 1965 (23)
Petersen, Kai (23)
Papatriantafilou, Ma ... (23)
Börstler, Jürgen, 19 ... (23)
Vyatkin, Valeriy (22)
Wnuk, Krzysztof, 198 ... (22)
Fucci, Davide, 1985- (22)
Šmite, Darja (22)
Alégroth, Emil, 1984 ... (22)
Gonzalez-Huerta, Jav ... (22)
Leite, Iolanda (22)
Enoiu, Eduard Paul, ... (21)
Nikolakopoulos, Geor ... (21)
Sandkuhl, Kurt, 1963 ... (21)
Gulisano, Vincenzo M ... (21)
Landsiedel, Olaf, 19 ... (20)
Åkesson, Knut, 1972 (20)
Baudry, Benoit (20)
Karayiannidis, Yiann ... (20)
Graell i Amat, Alexa ... (20)
Frattini, Julian, 19 ... (20)
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University
Chalmers University of Technology (1971)
Royal Institute of Technology (720)
University of Gothenburg (458)
Blekinge Institute of Technology (362)
Uppsala University (334)
Lund University (283)
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Mälardalen University (231)
Luleå University of Technology (228)
Umeå University (214)
RISE (207)
Linköping University (181)
University of Skövde (174)
Stockholm University (129)
Linnaeus University (117)
Karlstad University (107)
Malmö University (93)
Jönköping University (85)
Mid Sweden University (70)
Halmstad University (69)
Örebro University (49)
Högskolan Dalarna (32)
University West (27)
Karolinska Institutet (25)
VTI - The Swedish National Road and Transport Research Institute (21)
Swedish University of Agricultural Sciences (19)
University of Gävle (16)
Kristianstad University College (12)
University of Borås (12)
Stockholm School of Economics (6)
IVL Swedish Environmental Research Institute (6)
Södertörn University (3)
Swedish National Defence College (3)
Royal College of Music (2)
The Swedish School of Sport and Health Sciences (1)
Stockholm University of the Arts (1)
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Language
English (4968)
Swedish (48)
German (2)
Russian (1)
Undefined language (1)
Mongolian (1)
Research subject (UKÄ/SCB)
Natural sciences (5008)
Engineering and Technology (3433)
Social Sciences (344)
Humanities (157)
Medical and Health Sciences (126)
Agricultural Sciences (23)

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