Pixel Level
Pixel-level analysis focuses on understanding and manipulating individual pixels within images and videos, aiming for precise object segmentation and detailed scene understanding. Current research emphasizes developing efficient and robust methods for pixel-level tasks, particularly in weakly or unsupervised settings, often leveraging transformer architectures, diffusion models, and foundation models like SAM and CLIP to reduce reliance on extensive manual annotation. This work has significant implications for diverse applications, including remote sensing, medical image analysis, and computer vision generally, by enabling more accurate and automated image interpretation and manipulation.
Papers
SpiderMesh: Spatial-aware Demand-guided Recursive Meshing for RGB-T Semantic Segmentation
Siqi Fan, Zhe Wang, Yan Wang, Jingjing Liu
Pixel-Level Explanation of Multiple Instance Learning Models in Biomedical Single Cell Images
Ario Sadafi, Oleksandra Adonkina, Ashkan Khakzar, Peter Lienemann, Rudolf Matthias Hehr, Daniel Rueckert, Nassir Navab, Carsten Marr
IDEAL: Improved DEnse locAL Contrastive Learning for Semi-Supervised Medical Image Segmentation
Hritam Basak, Soumitri Chattopadhyay, Rohit Kundu, Sayan Nag, Rammohan Mallipeddi
Boosting Semi-Supervised Semantic Segmentation with Probabilistic Representations
Haoyu Xie, Changqi Wang, Mingkai Zheng, Minjing Dong, Shan You, Chong Fu, Chang Xu