Attention Based Deep
Attention-based deep learning integrates attention mechanisms into neural networks to improve feature extraction and model performance across diverse applications. Current research focuses on enhancing existing architectures like Transformers, CNNs, and RNNs with attention modules (e.g., spatial, channel, fuzzy attention) to improve accuracy and interpretability in tasks ranging from medical image analysis and time-series forecasting to natural language processing and signal processing. This approach yields significant improvements in various fields, including improved diagnostic accuracy in healthcare, more efficient resource management in energy systems, and enhanced performance in robotics and financial modeling.
Papers
Multi-encoder attention-based architectures for sound recognition with partial visual assistance
Wim Boes, Hugo Van hamme
RetiFluidNet: A Self-Adaptive and Multi-Attention Deep Convolutional Network for Retinal OCT Fluid Segmentation
Reza Rasti, Armin Biglari, Mohammad Rezapourian, Ziyun Yang, Sina Farsiu