Image Representation
Image representation research focuses on developing effective methods to encode visual information for computer vision tasks. Current efforts concentrate on improving the quality and efficiency of these representations, exploring diverse approaches such as implicit neural representations (INRs), hyperbolic graph neural networks, and contrastive learning frameworks, often integrated with multimodal data like text or sensor information. These advancements are crucial for enhancing the performance of various applications, including image segmentation, object recognition, and medical image analysis, by enabling more robust and efficient processing of visual data. The development of more effective image representations directly impacts the accuracy, speed, and resource efficiency of numerous computer vision systems.
Papers
Evaluation of Extra Pixel Interpolation with Mask Processing for Medical Image Segmentation with Deep Learning
Olivier Rukundo
X-TRA: Improving Chest X-ray Tasks with Cross-Modal Retrieval Augmentation
Tom van Sonsbeek, Marcel Worring
Deep Active Learning in the Presence of Label Noise: A Survey
Moseli Mots'oehli, Kyungim Baek