Deep Learning Based
Deep learning is revolutionizing numerous fields by enabling the development of powerful models for complex tasks. Current research focuses on improving model accuracy, efficiency, and interpretability across diverse applications, employing architectures like convolutional neural networks (CNNs), transformers, and recurrent neural networks (RNNs), often combined with techniques such as attention mechanisms and transfer learning. These advancements are significantly impacting various sectors, from medical diagnosis (e.g., detecting diseases from medical images) and environmental monitoring (e.g., forecasting weather patterns) to robotics (e.g., enabling more robust object manipulation) and financial modeling (e.g., improving time series forecasting). The emphasis is on creating robust, generalizable models that can handle noisy or incomplete data and provide reliable results in real-world settings.
Papers
Constrained Deep One-Class Feature Learning For Classifying Imbalanced Medical Images
Long Gao, Chang Liu, Dooman Arefan, Ashok Panigrahy, Shandong Wu
Switching Independent Vector Analysis and Its Extension to Blind and Spatially Guided Convolutional Beamforming Algorithms
Tomohiro Nakatani, Rintaro Ikeshita, Keisuke Kinoshita, Hiroshi Sawada, Naoyuki Kamo, Shoko Araki