Affine Transformation
Affine transformations, mathematical mappings that involve scaling, rotation, shearing, and translation, are central to many areas of computer vision, machine learning, and signal processing. Current research focuses on leveraging affine transformations to improve the robustness and efficiency of various models, including generative adversarial networks (GANs), large language models (LLMs), and convolutional neural networks (CNNs), often through techniques like contrastive learning and post-training quantization. These advancements enhance model performance in tasks such as image inpainting, object pose refinement, and robust feature extraction, impacting fields ranging from robotics and remote sensing to natural language processing and medical imaging.
Papers
RobCaps: Evaluating the Robustness of Capsule Networks against Affine Transformations and Adversarial Attacks
Alberto Marchisio, Antonio De Marco, Alessio Colucci, Maurizio Martina, Muhammad Shafique
Delving into Discrete Normalizing Flows on SO(3) Manifold for Probabilistic Rotation Modeling
Yulin Liu, Haoran Liu, Yingda Yin, Yang Wang, Baoquan Chen, He Wang