Discriminative Feature
Discriminative feature learning aims to identify and extract the most informative features from data, enabling accurate classification and improved model performance across various tasks. Current research focuses on enhancing feature extraction in challenging scenarios, such as fine-grained recognition and open-set recognition, often employing attention mechanisms, multi-modal fusion, and generative models within deep learning architectures. These advancements are crucial for improving the accuracy and robustness of machine learning models in diverse applications, including image recognition, video analysis, and biomedical image analysis. The development of more effective discriminative feature learning techniques is driving progress in numerous fields by enabling more accurate and reliable automated systems.
Papers
DP-Net: Learning Discriminative Parts for image recognition
Ronan Sicre, Hanwei Zhang, Julien Dejasmin, Chiheb Daaloul, Stéphane Ayache, Thierry Artières
DENOISER: Rethinking the Robustness for Open-Vocabulary Action Recognition
Haozhe Cheng, Cheng Ju, Haicheng Wang, Jinxiang Liu, Mengting Chen, Qiang Hu, Xiaoyun Zhang, Yanfeng Wang