Recognition Rate
Recognition rate, the accuracy of correctly identifying objects or patterns, is a central theme across diverse fields, from biometric security to image analysis. Current research focuses on improving recognition rates through advanced deep learning architectures like Convolutional Neural Networks (CNNs), Vision Transformers (ViTs), and recurrent models, often incorporating techniques like transfer learning, multi-modal fusion, and generative models to enhance performance, particularly in challenging scenarios such as low-resolution images or noisy data. These advancements have significant implications for various applications, including automated surveillance, medical diagnosis, and human-computer interaction, by enabling more reliable and efficient systems.
Papers
DiRecNetV2: A Transformer-Enhanced Network for Aerial Disaster Recognition
Demetris Shianios, Panayiotis Kolios, Christos Kyrkou
Transformer-Based Approaches for Sensor-Based Human Activity Recognition: Opportunities and Challenges
Clayton Souza Leite, Henry Mauranen, Aziza Zhanabatyrova, Yu Xiao
Deep-learning recognition and tracking of individual nanotubes in low-contrast microscopy videos
Vladimir Pimonov, Said Tahir, Vincent Jourdain