Image Distribution
Image distribution research focuses on understanding and manipulating the statistical properties of image data, aiming to improve generative models and enhance various computer vision tasks. Current research emphasizes leveraging diffusion models, generative adversarial networks (GANs), and normalizing flows to learn and manipulate these distributions, often focusing on techniques to mitigate the curse of dimensionality and address issues like data scarcity and distribution shifts across domains. This work has significant implications for improving image generation, medical image analysis, and robust computer vision systems by enabling more accurate modeling of real-world image data and facilitating better handling of noisy or incomplete information.
Papers
Blind Inverse Problem Solving Made Easy by Text-to-Image Latent Diffusion
Michail Dontas, Yutong He, Naoki Murata, Yuki Mitsufuji, J. Zico Kolter, Ruslan Salakhutdinov
Good, Cheap, and Fast: Overfitted Image Compression with Wasserstein Distortion
Jona Ballé, Luca Versari, Emilien Dupont, Hyunjik Kim, Matthias Bauer
Continuous reasoning for adaptive container image distribution in the cloud-edge continuum
Damiano Azzolini, Stefano Forti, Antonio Ielo
JointDreamer: Ensuring Geometry Consistency and Text Congruence in Text-to-3D Generation via Joint Score Distillation
Chenhan Jiang, Yihan Zeng, Tianyang Hu, Songcun Xu, Wei Zhang, Hang Xu, Dit-Yan Yeung