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monocular depth prediction [7, 8, 9]. A comprehensive benchmarking of these methods will offer valuable insight. Moreover, model-based approaches for 3D reconstruction should also be explored to enable a
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of the challenges to be solved in this thesis will be to propose methods that analyze the different tensors simultaneously. These methods are expected to result in improved extraction of atrial activity. • Dealing
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(FSTM) at the University of Luxembourg contributes multidisciplinary expertise in the fields of Mathematics, Physics, Engineering, Computer Science, Life Sciences and Medicine. Through its dual mission
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of preclinical murine model of melanoma responsive or not to ICI. Specific objectives and methods The specific objectives of the M2 are: 1°) To identify which DC population undergo dynamic changes during ICI
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access to the unobserved values, and therefore, cannot compute this error. The goal of this postdoc will be to develop a direct method, based on self- supervised learning. The closest related works are two
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on heuristics, approximation algorithms, and optimization techniques to generate practical solutions that only reach local minima. Some common approaches include: (1) Iterative refinement methods that improve
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nursing programs - Bachelors in the fields of surgery, anaesthesia/resuscitation, paediatrics, and mental health. A fifth program 'Bachelor of Nursing in General Care' will start in September 2024, while
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a complex and highly technical environment, OR safety requires the simultaneous management of numerous flows (material resources, human resources, technical environment, etc.) to ensure smooth
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redefinition of behavioral features or pose challenges in their detection. The projects To address these challenges, we propose developing a Bayesian Program Synthesis (BPS) methodology for generating synthetic
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. Côte d’Azur & INRIA), will be focused on the development and the understanding of deep latent variables models for unsupervised learning with massive heterogenous data. Although deep learning methods and