Deep Transfer Learning
Deep transfer learning leverages pre-trained deep learning models to improve performance on tasks with limited data, addressing a major bottleneck in many fields. Current research focuses on applying this technique across diverse domains, including medical image analysis (using architectures like ResNet, VGG, DenseNet, and Vision Transformers), signal processing (employing CNNs and LSTMs), and natural language processing (utilizing BERT and other transformer models). This approach significantly enhances the efficiency and effectiveness of deep learning, impacting various applications from disease diagnosis and structural health monitoring to autonomous driving and personalized medicine.
Papers
June 17, 2022
June 12, 2022
May 20, 2022
May 19, 2022
April 6, 2022
March 26, 2022
March 14, 2022
February 17, 2022
January 19, 2022
December 15, 2021
December 2, 2021
November 29, 2021