ICCVW-2023-Papers Application Representation Learning with very Limited Images: The Potential of Self-, Synthetic- and Formula-Supervision Title Repo Paper Video Image Guided Inpainting with Parameter Efficient Learning ➖ ➖ Augmenting Features via Contrastive Learning-based Generative Model for Long-Tailed Classification ➖ ➖ G2L: A High-Dimensional Geometric Approach for Automatic Generation of Highly Accurate Pseudo-Labels ➖ Self-Supervised Hypergraphs for Learning Multiple World Interpretations ➖ ➖ Deep Generative Networks for Heterogeneous Augmentation of Cranial Defects ➖ ➖ 360° from a Single Camera: A Few-Shot Approach for LiDAR Segmentation ➖ ➖ Adaptive Self-Training for Object Detection ➖ FedLID: Self-Supervised Federated Learning for Leveraging Limited Image Data ➖ ➖ A Horse with no Labels: Self-Supervised Horse Pose Estimation from Unlabelled Images and Synthetic Prior ➖ ➖ Boosting Semi-Supervised Learning by Bridging High and Low-Confidence Predictions ➖ ➖ SelectNAdapt: Support Set Selection for Few-Shot Domain Adaptation ➖ MIAD: A Maintenance Inspection Dataset for Unsupervised Anomaly Detection ➖ Enhancing Classification Accuracy on Limited Data via Unconditional GAN ➖ ➖ Self-Training and Multi-Task Learning for Limited Data: Evaluation Study on Object Detection JEDI: Joint Expert Distillation in a Semi-Supervised Multi-Dataset Student-Teacher Scenario for Video Action Recognition ➖ ➖ Semantic RGB-D Image Synthesis ➖ ➖ Learning Universal Semantic Correspondences with No Supervision and Automatic Data Curation ➖ ➖ Guiding Video Prediction with Explicit Procedural Knowledge ➖ ➖ Frequency-Aware Self-Supervised Long-Tailed Learning ➖ ➖ Tensor Factorization for Leveraging Cross-Modal Knowledge in Data-Constrained Infrared Object Detection ➖ ➖