286 research outputs found
Deep learning-based signal processing approaches for improved tracking of human health and behaviour with wearable sensors
This thesis explores two lines of research in the context of sequential data and machine learning in the remote environment, i.e., outside the lab setting - using data acquired from wearable devices. Firstly, we explore Generative Adversarial Networks
(GANs) as a reliable tool for time series generation, imputation and forecasting. Secondly, we investigate the applicability of novel deep learning frameworks to sequential data processing and their advantages over traditional methods. More specifically, we use our models to unlock additional insights and biomarkers in human-centric datasets.
Our first research avenue concerns the generation of sequential physiological data. Access to physiological data, particularly medical data, has become heavily regulated in recent years, which has presented bottlenecks in developing computational models to assist in diagnosing and treating patients. Therefore, we explore GAN models to generate medical time series data that adhere to privacy-preserving regulations. We present our novel methods of generating and imputing synthetic, multichannel sequential medical data while complying with privacy regulations. Addressing these concerns allows for sharing and disseminating medical data and, in turn, developing clinical research in the relevant fields.
Secondly, we explore novel deep learning technologies applied to human-centric sequential data to unlock further insights while addressing the idea of environmentally sustainable AI. We develop novel deep learning processing methods to estimate human activity and heart rate through convolutional networks. We also introduce our âtime series-to-time series GANâ, which maps photoplethysmograph data to blood pressure measurements. Importantly, we denoise artefact-laden biosignal data to a competitive standard using a custom objective function and novel application of GANs. These deep learning methods help to produce nuanced biomarkers and state-of-the-art insights from human physiological data.
The work laid out in this thesis provides a foundation for state-of-the-art deep learning methods for sequential data processing while keeping a keen eye on sustain- able AI
Proceedings of the 1st Doctoral Consortium at the European Conference on Artificial Intelligence (DC-ECAI 2020)
1st Doctoral Consortium at the European Conference on
Artificial Intelligence (DC-ECAI 2020), 29-30 August, 2020
Santiago de Compostela, SpainThe DC-ECAI 2020 provides a unique opportunity for PhD students, who are close to finishing their doctorate research, to interact with experienced researchers in the field. Senior members of the community are assigned as mentors for each group of students based on the studentâs research or similarity of research interests. The DC-ECAI 2020, which is held virtually this year, allows students from all over the world to present their research and discuss their ongoing research and career plans with their mentor, to do networking with other participants, and to receive training and mentoring about career planning and career option
System Qualities Ontology, Tradespace and Affordability (SQOTA) Project â Phase 4
This task was proposed and established as a result of a pair of 2012 workshops sponsored by the DoD Engineered Resilient Systems technology priority area and by the SERC. The workshops focused on how best to strengthen DoDâs capabilities in dealing with its systemsâ non-functional requirements, often also called system qualities, properties, levels of service, and âilities. The term âilities was often used during the workshops, and became the title of the resulting SERC research task: âilities Tradespace and Affordability Project (iTAP).â As the project progressed, the term âilitiesâ often became a source of confusion, as in âDo your results include considerations of safety, security, resilience, etc., which donât have âilityâ in their names?â Also, as our ontology, methods, processes, and tools became of interest across the DoD and across international and standards communities, we found that the term âSystem Qualitiesâ was most often used. As a result, we are changing the name of the project to âSystem Qualities Ontology, Tradespace, and Affordability (SQOTA).â Some of this yearâs university reports still refer to the project as âiTAP.âThis material is based upon work supported, in whole or in part, by the U.S. Department of Defense through the Office of the Assistant of Defense for Research and Engineering (ASD(R&E)) under Contract HQ0034-13-D-0004.This material is based upon work supported, in whole or in part, by the U.S. Department of Defense through the Office of the Assistant of Defense for Research and Engineering (ASD(R&E)) under Contract HQ0034-13-D-0004
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