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insufficient. Recently our research group has developed deep neural networks to enhance underwater communications. Our preliminary study shows that deep learning models are able to improve accuracies
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on leveraging advanced computer vision (CV) and deep learning (DL) techniques to develop a state-of-the-art computer-aided detection and diagnosis (CAD) system for early-stage Alzheimer's disease (AD) detection
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. The specific research areas we will explore are + Adaptive scientific deep learning methods for mathematical physics problems governed by partial differential equations (domain decomposition, adaptive quadrature
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dispatching system of open-pit mines has undergone significant impacts by artificial intelligence and advanced unmanned mining technology. Deep learning methods, GPS positioning and navigation technology, IoT
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Explore deep learning, reinforcement learning, and Bayesian models for proactive mental health monitoring. Design models that accurately detect early signs of mental health issues. Enhance computational
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deblooming) [1-3]. The latest approach involves using deep learning (DL) which is a subset of artificial intelligence (AI) to increase the spatial resolution for calcium deblooming. Examples include Canon
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seismic data continuously over two years. The primary goal of this recording was active seismic monitoring of 15,000 tonnes of CO2 injected into a deep aquifer using waves emitted by nine permanently
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environments deep in its crust, however the duration, depths and geographic distribution of these environments are still poorly known, as are their potential habitability. Identifying locations where water and
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that generation of consistent deep fake faces for privacy preservation has not been done. Prior research in the literature has focused more on scrambling face images – this preserves privacy but removes ability
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publications and research experiences in structural dynamics and structural health monitoring, especially on computer vision, image processing, machine learning, deep learning, signal processing and data