Image Classification
Image classification, the task of assigning predefined labels to images, aims to develop robust and accurate algorithms for diverse applications. Current research emphasizes improving generalization to unseen data and handling challenges like data scarcity, class imbalance, and adversarial attacks, often employing deep learning models such as convolutional neural networks (CNNs), vision transformers (ViTs), and large language models (LLMs) integrated with techniques like self-supervised learning, data augmentation, and uncertainty quantification. These advancements are crucial for various fields, including medical diagnosis, autonomous driving, and environmental monitoring, where reliable and efficient image analysis is paramount.
Papers
POGD: Gradient Descent with New Stochastic Rules
Feihu Han, Sida Xing, Sui Yang Khoo
Providing Error Detection for Deep Learning Image Classifiers Using Self-Explainability
Mohammad Mahdi Karimi, Azin Heidarshenas, William W. Edmonson
Distributionally Robust Multiclass Classification and Applications in Deep Image Classifiers
Ruidi Chen, Boran Hao, Ioannis Ch. Paschalidis
CEC-CNN: A Consecutive Expansion-Contraction Convolutional Network for Very Small Resolution Medical Image Classification
Ioannis Vezakis, Antonios Vezakis, Sofia Gourtsoyianni, Vassilis Koutoulidis, George K. Matsopoulos, Dimitrios Koutsouris
Genetic Programming-Based Evolutionary Deep Learning for Data-Efficient Image Classification
Ying Bi, Bing Xue, Mengjie Zhang