Image Transformation
Image transformation research focuses on developing methods to modify images in meaningful ways, improving robustness to variations and enabling tasks like image enhancement, style transfer, and object recognition under diverse conditions. Current research emphasizes learning disentangled transformations, optimizing data augmentation strategies (e.g., FreeAugment), and developing models that are robust to even subtle image alterations, including those affecting keypoint descriptors and frequency distributions. These advancements have significant implications for various applications, including medical image analysis, autonomous driving, and improving the robustness and generalizability of deep learning models.
Papers
Results and findings of the 2021 Image Similarity Challenge
Zoë Papakipos, Giorgos Tolias, Tomas Jenicek, Ed Pizzi, Shuhei Yokoo, Wenhao Wang, Yifan Sun, Weipu Zhang, Yi Yang, Sanjay Addicam, Sergio Manuel Papadakis, Cristian Canton Ferrer, Ondrej Chum, Matthijs Douze
If a Human Can See It, So Should Your System: Reliability Requirements for Machine Vision Components
Boyue Caroline Hu, Lina Marsso, Krzysztof Czarnecki, Rick Salay, Huakun Shen, Marsha Chechik
Detecting and Localizing Copy-Move and Image-Splicing Forgery
Aditya Pandey, Anshuman Mitra